Welcome to the second assignment of this week! You will learn how to build very deep convolutional networks, using Residual Networks (ResNets). In theory, very deep networks can represent very complex functions; but in practice, they are hard to train. Residual Networks, introduced by He et al., allow you to train much deeper networks than were previously practically feasible.

In this assignment, you will:

  • Implement the basic building blocks of ResNets.
  • Put together these building blocks to implement and train a state-of-the-art neural network for image classification.

This assignment will be done in Keras.

Before jumping into the problem, let’s run the cell below to load the required packages.

  1. import numpy as np
  2. import tensorflow as tf
  3. from keras import layers
  4. from keras.layers import Input, Add, Dense, Activation, ZeroPadding2D, BatchNormalization, Flatten, Conv2D, AveragePooling2D, MaxPooling2D, GlobalMaxPooling2D
  5. from keras.models import Model, load_model
  6. from keras.preprocessing import image
  7. from keras.utils import layer_utils
  8. from keras.utils.data_utils import get_file
  9. from keras.applications.imagenet_utils import preprocess_input
  10. import pydot
  11. from IPython.display import SVG
  12. from keras.utils.vis_utils import model_to_dot
  13. from keras.utils import plot_model
  14. from resnets_utils import *
  15. from keras.initializers import glorot_uniform
  16. import scipy.misc
  17. from matplotlib.pyplot import imshow
  18. %matplotlib inline
  19. import keras.backend as K
  20. K.set_image_data_format('channels_last')
  21. K.set_learning_phase(1)
  1. Using TensorFlow backend.

1 - The problem of very deep neural networks

Last week, you built your first convolutional neural network. In recent years, neural networks have become deeper, with state-of-the-art networks going from just a few layers (e.g., AlexNet) to over a hundred layers.

The main benefit of a very deep network is that it can represent very complex functions. It can also learn features at many different levels of abstraction, from edges (at the lower layers) to very complex features (at the deeper layers). However, using a deeper network doesn’t always help. A huge barrier to training them is vanishing gradients: very deep networks often have a gradient signal that goes to zero quickly, thus making gradient descent unbearably slow. More specifically, during gradient descent, as you backprop from the final layer back to the first layer, you are multiplying by the weight matrix on each step, and thus the gradient can decrease exponentially quickly to zero (or, in rare cases, grow exponentially quickly and “explode” to take very large values).

During training, you might therefore see the magnitude (or norm) of the gradient for the earlier layers descrease to zero very rapidly as training proceeds:

4-2练习2-Residual Networks - 图1

Figure 1

You are now going to solve this problem by building a Residual Network!

2 - Building a Residual Network

In ResNets, a “shortcut” or a “skip connection” allows the gradient to be directly backpropagated to earlier layers:

4-2练习2-Residual Networks - 图2

Figure 2

The image on the left shows the “main path” through the network. The image on the right adds a shortcut to the main path. By stacking these ResNet blocks on top of each other, you can form a very deep network.

We also saw in lecture that having ResNet blocks with the shortcut also makes it very easy for one of the blocks to learn an identity function. This means that you can stack on additional ResNet blocks with little risk of harming training set performance. (There is also some evidence that the ease of learning an identity function—even more than skip connections helping with vanishing gradients—accounts for ResNets’ remarkable performance.)

Two main types of blocks are used in a ResNet, depending mainly on whether the input/output dimensions are same or different. You are going to implement both of them.

2.1 - The identity block

The identity block is the standard block used in ResNets, and corresponds to the case where the input activation (say 4-2练习2-Residual Networks - 图3) has the same dimension as the output activation (say 4-2练习2-Residual Networks - 图4). To flesh out the different steps of what happens in a ResNet’s identity block, here is an alternative diagram showing the individual steps:

4-2练习2-Residual Networks - 图5

Figure 3 The upper path is the “shortcut path.” The lower path is the “main path.” In this diagram, we have also made explicit the CONV2D and ReLU steps in each layer. To speed up training we have also added a BatchNorm step. Don’t worry about this being complicated to implement—you’ll see that BatchNorm is just one line of code in Keras!

In this exercise, you’ll actually implement a slightly more powerful version of this identity block, in which the skip connection “skips over” 3 hidden layers rather than 2 layers. It looks like this:

4-2练习2-Residual Networks - 图6

Figure 4 Here’re the individual steps.

First component of main path:

  • The first CONV2D has 4-2练习2-Residual Networks - 图7 filters of shape (1,1) and a stride of (1,1). Its padding is “valid” and its name should be conv_name_base + '2a'. Use 0 as the seed for the random initialization.
  • The first BatchNorm is normalizing the channels axis. Its name should be bn_name_base + '2a'.
  • Then apply the ReLU activation function. This has no name and no hyperparameters.

Second component of main path:

  • The second CONV2D has 4-2练习2-Residual Networks - 图8 filters of shape 4-2练习2-Residual Networks - 图9#card=math&code=%28f%2Cf%29) and a stride of (1,1). Its padding is “same” and its name should be conv_name_base + '2b'. Use 0 as the seed for the random initialization.
  • The second BatchNorm is normalizing the channels axis. Its name should be bn_name_base + '2b'.
  • Then apply the ReLU activation function. This has no name and no hyperparameters.

Third component of main path:

  • The third CONV2D has 4-2练习2-Residual Networks - 图10 filters of shape (1,1) and a stride of (1,1). Its padding is “valid” and its name should be conv_name_base + '2c'. Use 0 as the seed for the random initialization.
  • The third BatchNorm is normalizing the channels axis. Its name should be bn_name_base + '2c'. Note that there is no ReLU activation function in this component.

Final step:

  • The shortcut and the input are added together.
  • Then apply the ReLU activation function. This has no name and no hyperparameters.

Exercise: Implement the ResNet identity block. We have implemented the first component of the main path. Please read over this carefully to make sure you understand what it is doing. You should implement the rest.

  • To implement the Conv2D step: See reference
  • To implement BatchNorm: See reference (axis: Integer, the axis that should be normalized (typically the channels axis))
  • For the activation, use: Activation('relu')(X)
  • To add the value passed forward by the shortcut: See reference
  1. # GRADED FUNCTION: identity_block
  2. def identity_block(X, f, filters, stage, block):
  3. """
  4. Implementation of the identity block as defined in Figure 4
  5. Arguments:
  6. X -- input tensor of shape (m, n_H_prev, n_W_prev, n_C_prev)
  7. f -- integer, specifying the shape of the middle CONV's window for the main path
  8. filters -- python list of integers, defining the number of filters in the CONV layers of the main path
  9. stage -- integer, used to name the layers, depending on their position in the network
  10. block -- string/character, used to name the layers, depending on their position in the network
  11. Returns:
  12. X -- output of the identity block, tensor of shape (n_H, n_W, n_C)
  13. """
  14. # defining name basis
  15. conv_name_base = 'res' + str(stage) + block + '_branch'
  16. bn_name_base = 'bn' + str(stage) + block + '_branch'
  17. # Retrieve Filters
  18. F1, F2, F3 = filters
  19. # Save the input value. You'll need this later to add back to the main path.
  20. X_shortcut = X
  21. # First component of main path
  22. X = Conv2D(filters = F1, kernel_size = (1, 1), strides = (1,1), padding = 'valid', name = conv_name_base + '2a', kernel_initializer = glorot_uniform(seed=0))(X)
  23. X = BatchNormalization(axis = 3, name = bn_name_base + '2a')(X)
  24. X = Activation('relu')(X)
  25. ### START CODE HERE ###
  26. # Second component of main path (≈3 lines)
  27. X = Conv2D(filters = F2, kernel_size = (f, f), strides = (1,1), padding = 'same', name = conv_name_base + '2b', kernel_initializer = glorot_uniform(seed=0))(X)
  28. X = BatchNormalization(axis=3, name = bn_name_base + '2b')(X)
  29. X = Activation('relu')(X)
  30. # Third component of main path (≈2 lines)
  31. X = Conv2D(filters = F3, kernel_size = (1, 1), strides = (1,1), padding = 'valid', name = conv_name_base + '2c', kernel_initializer = glorot_uniform(seed=0))(X)
  32. X = BatchNormalization(axis=3, name = bn_name_base + '2c')(X)
  33. # Final step: Add shortcut value to main path, and pass it through a RELU activation (≈2 lines)
  34. X = layers.add([X, X_shortcut])
  35. X = Activation('relu')(X)
  36. ### END CODE HERE ###
  37. return X
  1. tf.reset_default_graph()
  2. with tf.Session() as test:
  3. np.random.seed(1)
  4. A_prev = tf.placeholder("float", [3, 4, 4, 6])
  5. X = np.random.randn(3, 4, 4, 6)
  6. A = identity_block(A_prev, f = 2, filters = [2, 4, 6], stage = 1, block = 'a')
  7. test.run(tf.global_variables_initializer())
  8. out = test.run([A], feed_dict={A_prev: X, K.learning_phase(): 0})
  9. print("out = " + str(out[0][1][1][0]))
  1. out = [ 0.19716814 0. 1.35612261 2.17130733 0. 1.33249867]

Expected Output:

| out | [ 0.94822985 0. 1.16101444 2.747859 0. 1.36677003] | | —- | —- |

2.2 - The convolutional block

You’ve implemented the ResNet identity block. Next, the ResNet “convolutional block” is the other type of block. You can use this type of block when the input and output dimensions don’t match up. The difference with the identity block is that there is a CONV2D layer in the shortcut path:

4-2练习2-Residual Networks - 图11

Figure 4 The CONV2D layer in the shortcut path is used to resize the input 4-2练习2-Residual Networks - 图12 to a different dimension, so that the dimensions match up in the final addition needed to add the shortcut value back to the main path. (This plays a similar role as the matrix 4-2练习2-Residual Networks - 图13 discussed in lecture.) For example, to reduce the activation dimensions’s height and width by a factor of 2, you can use a 1x1 convolution with a stride of 2. The CONV2D layer on the shortcut path does not use any non-linear activation function. Its main role is to just apply a (learned) linear function that reduces the dimension of the input, so that the dimensions match up for the later addition step.

The details of the convolutional block are as follows.

First component of main path:

  • The first CONV2D has 4-2练习2-Residual Networks - 图14 filters of shape (1,1) and a stride of (s,s). Its padding is “valid” and its name should be conv_name_base + '2a'.
  • The first BatchNorm is normalizing the channels axis. Its name should be bn_name_base + '2a'.
  • Then apply the ReLU activation function. This has no name and no hyperparameters.

Second component of main path:

  • The second CONV2D has 4-2练习2-Residual Networks - 图15 filters of (f,f) and a stride of (1,1). Its padding is “same” and it’s name should be conv_name_base + '2b'.
  • The second BatchNorm is normalizing the channels axis. Its name should be bn_name_base + '2b'.
  • Then apply the ReLU activation function. This has no name and no hyperparameters.

Third component of main path:

  • The third CONV2D has 4-2练习2-Residual Networks - 图16 filters of (1,1) and a stride of (1,1). Its padding is “valid” and it’s name should be conv_name_base + '2c'.
  • The third BatchNorm is normalizing the channels axis. Its name should be bn_name_base + '2c'. Note that there is no ReLU activation function in this component.

Shortcut path:

  • The CONV2D has 4-2练习2-Residual Networks - 图17 filters of shape (1,1) and a stride of (s,s). Its padding is “valid” and its name should be conv_name_base + '1'.
  • The BatchNorm is normalizing the channels axis. Its name should be bn_name_base + '1'.

Final step:

  • The shortcut and the main path values are added together.
  • Then apply the ReLU activation function. This has no name and no hyperparameters.

Exercise: Implement the convolutional block. We have implemented the first component of the main path; you should implement the rest. As before, always use 0 as the seed for the random initialization, to ensure consistency with our grader.

  1. # GRADED FUNCTION: convolutional_block
  2. def convolutional_block(X, f, filters, stage, block, s = 2):
  3. """
  4. Implementation of the convolutional block as defined in Figure 4
  5. Arguments:
  6. X -- input tensor of shape (m, n_H_prev, n_W_prev, n_C_prev)
  7. f -- integer, specifying the shape of the middle CONV's window for the main path
  8. filters -- python list of integers, defining the number of filters in the CONV layers of the main path
  9. stage -- integer, used to name the layers, depending on their position in the network
  10. block -- string/character, used to name the layers, depending on their position in the network
  11. s -- Integer, specifying the stride to be used
  12. Returns:
  13. X -- output of the convolutional block, tensor of shape (n_H, n_W, n_C)
  14. """
  15. # defining name basis
  16. conv_name_base = 'res' + str(stage) + block + '_branch'
  17. bn_name_base = 'bn' + str(stage) + block + '_branch'
  18. # Retrieve Filters
  19. F1, F2, F3 = filters
  20. # Save the input value
  21. X_shortcut = X
  22. ##### MAIN PATH #####
  23. # First component of main path
  24. X = Conv2D(F1, (1, 1), strides = (s,s), name = conv_name_base + '2a', padding='valid', kernel_initializer = glorot_uniform(seed=0))(X)
  25. X = BatchNormalization(axis = 3, name = bn_name_base + '2a')(X)
  26. X = Activation('relu')(X)
  27. ### START CODE HERE ###
  28. # Second component of main path (≈3 lines)
  29. X = Conv2D(F2, (f, f), strides = (1, 1), name = conv_name_base + '2b',padding='same', kernel_initializer = glorot_uniform(seed=0))(X)
  30. X = BatchNormalization(axis = 3, name = bn_name_base + '2b')(X)
  31. X = Activation('relu')(X)
  32. # Third component of main path (≈2 lines)
  33. X = Conv2D(F3, (1, 1), strides = (1, 1), name = conv_name_base + '2c',padding='valid', kernel_initializer = glorot_uniform(seed=0))(X)
  34. X = BatchNormalization(axis = 3, name = bn_name_base + '2c')(X)
  35. ##### SHORTCUT PATH #### (≈2 lines)
  36. X_shortcut = Conv2D(F3, (1, 1), strides = (s, s), name = conv_name_base + '1',padding='valid', kernel_initializer = glorot_uniform(seed=0))(X_shortcut)
  37. X_shortcut = BatchNormalization(axis = 3, name = bn_name_base + '1')(X_shortcut)
  38. # Final step: Add shortcut value to main path, and pass it through a RELU activation (≈2 lines)
  39. X = layers.add([X, X_shortcut])
  40. X = Activation('relu')(X)
  41. ### END CODE HERE ###
  42. return X
  1. tf.reset_default_graph()
  2. with tf.Session() as test:
  3. np.random.seed(1)
  4. A_prev = tf.placeholder("float", [3, 4, 4, 6])
  5. X = np.random.randn(3, 4, 4, 6)
  6. A = convolutional_block(A_prev, f = 2, filters = [2, 4, 6], stage = 1, block = 'a')
  7. test.run(tf.global_variables_initializer())
  8. out = test.run([A], feed_dict={A_prev: X, K.learning_phase(): 0})
  9. print("out = " + str(out[0][1][1][0]))
  1. out = [ 0.09018463 1.23489773 0.46822017 0.0367176 0. 0.65516603]

Expected Output:

| out | [ 0.09018463 1.23489773 0.46822017 0.0367176 0. 0.65516603] | | —- | —- |

3 - Building your first ResNet model (50 layers)

You now have the necessary blocks to build a very deep ResNet. The following figure describes in detail the architecture of this neural network. “ID BLOCK” in the diagram stands for “Identity block,” and “ID BLOCK x3” means you should stack 3 identity blocks together.

4-2练习2-Residual Networks - 图18

Figure 5 The details of this ResNet-50 model are:

  • Zero-padding pads the input with a pad of (3,3)
  • Stage 1:

    • The 2D Convolution has 64 filters of shape (7,7) and uses a stride of (2,2). Its name is “conv1”.
    • BatchNorm is applied to the channels axis of the input.
    • MaxPooling uses a (3,3) window and a (2,2) stride.
  • Stage 2:

    • The convolutional block uses three set of filters of size [64,64,256], “f” is 3, “s” is 1 and the block is “a”.
    • The 2 identity blocks use three set of filters of size [64,64,256], “f” is 3 and the blocks are “b” and “c”.
  • Stage 3:

    • The convolutional block uses three set of filters of size [128,128,512], “f” is 3, “s” is 2 and the block is “a”.
    • The 3 identity blocks use three set of filters of size [128,128,512], “f” is 3 and the blocks are “b”, “c” and “d”.
  • Stage 4:

    • The convolutional block uses three set of filters of size [256, 256, 1024], “f” is 3, “s” is 2 and the block is “a”.
    • The 5 identity blocks use three set of filters of size [256, 256, 1024], “f” is 3 and the blocks are “b”, “c”, “d”, “e” and “f”.
  • Stage 5:

    • The convolutional block uses three set of filters of size [512, 512, 2048], “f” is 3, “s” is 2 and the block is “a”.
    • The 2 identity blocks use three set of filters of size [256, 256, 2048], “f” is 3 and the blocks are “b” and “c”.
  • The 2D Average Pooling uses a window of shape (2,2) and its name is “avg_pool”.
  • The flatten doesn’t have any hyperparameters or name.
  • The Fully Connected (Dense) layer reduces its input to the number of classes using a softmax activation. Its name should be 'fc' + str(classes).

Exercise: Implement the ResNet with 50 layers described in the figure above. We have implemented Stages 1 and 2. Please implement the rest. (The syntax for implementing Stages 3-5 should be quite similar to that of Stage 2.) Make sure you follow the naming convention in the text above.

You’ll need to use this function:

Here’re some other functions we used in the code below:

  1. # GRADED FUNCTION: ResNet50
  2. def ResNet50(input_shape = (64, 64, 3), classes = 6):
  3. """
  4. Implementation of the popular ResNet50 the following architecture:
  5. CONV2D -> BATCHNORM -> RELU -> MAXPOOL -> CONVBLOCK -> IDBLOCK*2 -> CONVBLOCK -> IDBLOCK*3
  6. -> CONVBLOCK -> IDBLOCK*5 -> CONVBLOCK -> IDBLOCK*2 -> AVGPOOL -> TOPLAYER
  7. Arguments:
  8. input_shape -- shape of the images of the dataset
  9. classes -- integer, number of classes
  10. Returns:
  11. model -- a Model() instance in Keras
  12. """
  13. # Define the input as a tensor with shape input_shape
  14. X_input = Input(input_shape)
  15. # Zero-Padding
  16. # X = ZeroPadding2D((3, 3))(X_input)
  17. X = ZeroPadding2D((3,3))(X_input)
  18. # Stage 1
  19. X = Conv2D(64, (7, 7), strides = (2, 2), name = 'conv1', kernel_initializer = glorot_uniform(seed=0))(X)
  20. X = BatchNormalization(axis = 3, name = 'bn_conv1')(X)
  21. X = Activation('relu')(X)
  22. X = MaxPooling2D((3, 3), strides=(2, 2))(X)
  23. # X = Conv2D(64,(7,7),strides=(2,2),name='conv1',kernel_initializer = glorot_uniform(seed=0))(X)
  24. # X=BatchNormalization(axis=3,name='bn_conv1')(X)
  25. # X=Activation('relu')(X)
  26. # X=MaxPooling2D((3,3),strides=(2,2))(X)
  27. # Stage 2
  28. X = convolutional_block(X, f = 3, filters = [64, 64, 256], stage = 2, block='a', s = 1)
  29. X = identity_block(X, 3, [64, 64, 256], stage=2, block='b')
  30. X = identity_block(X, 3, [64, 64, 256], stage=2, block='c')
  31. # X=convolutional_block
  32. ### START CODE HERE ###
  33. # Stage 3 (≈4 lines)
  34. # The convolutional block uses three set of filters of size [128,128,512], "f" is 3, "s" is 2 and the block is "a".
  35. # The 3 identity blocks use three set of filters of size [128,128,512], "f" is 3 and the blocks are "b", "c" and "d".
  36. X = convolutional_block(X, f = 3, filters=[128,128,512], stage = 3, block='a', s = 2)
  37. X = identity_block(X, f = 3, filters=[128,128,512], stage= 3, block='b')
  38. X = identity_block(X, f = 3, filters=[128,128,512], stage= 3, block='c')
  39. X = identity_block(X, f = 3, filters=[128,128,512], stage= 3, block='d')
  40. # Stage 4 (≈6 lines)
  41. # The convolutional block uses three set of filters of size [256, 256, 1024], "f" is 3, "s" is 2 and the block is "a".
  42. # The 5 identity blocks use three set of filters of size [256, 256, 1024], "f" is 3 and the blocks are "b", "c", "d", "e" and "f".
  43. X = convolutional_block(X, f = 3, filters=[256, 256, 1024], block='a', stage=4, s = 2)
  44. X = identity_block(X, f = 3, filters=[256, 256, 1024], block='b', stage=4)
  45. X = identity_block(X, f = 3, filters=[256, 256, 1024], block='c', stage=4)
  46. X = identity_block(X, f = 3, filters=[256, 256, 1024], block='d', stage=4)
  47. X = identity_block(X, f = 3, filters=[256, 256, 1024], block='e', stage=4)
  48. X = identity_block(X, f = 3, filters=[256, 256, 1024], block='f', stage=4)
  49. # Stage 5 (≈3 lines)
  50. # The convolutional block uses three set of filters of size [512, 512, 2048], "f" is 3, "s" is 2 and the block is "a".
  51. # The 2 identity blocks use three set of filters of size [256, 256, 2048], "f" is 3 and the blocks are "b" and "c".
  52. X = convolutional_block(X, f = 3, filters=[512, 512, 2048], stage=5, block='a', s = 2)
  53. # filters should be [256, 256, 2048], but it fail to be graded. Use [512, 512, 2048] to pass the grading
  54. X = identity_block(X, f = 3, filters=[256, 256, 2048], stage=5, block='b')
  55. X = identity_block(X, f = 3, filters=[256, 256, 2048], stage=5, block='c')
  56. # AVGPOOL (≈1 line). Use "X = AveragePooling2D(...)(X)"
  57. # The 2D Average Pooling uses a window of shape (2,2) and its name is "avg_pool".
  58. X = AveragePooling2D(pool_size=(2,2))(X)
  59. ### END CODE HERE ###
  60. # output layer
  61. X = Flatten()(X)
  62. X = Dense(classes, activation='softmax', name='fc' + str(classes), kernel_initializer = glorot_uniform(seed=0))(X)
  63. # Create model
  64. model = Model(inputs = X_input, outputs = X, name='ResNet50')
  65. return model

Run the following code to build the model’s graph. If your implementation is not correct you will know it by checking your accuracy when running model.fit(...) below.

  1. model = ResNet50(input_shape = (64, 64, 3), classes = 6)

As seen in the Keras Tutorial Notebook, prior training a model, you need to configure the learning process by compiling the model.

  1. model.compile(optimizer='adam', loss='categorical_crossentropy', metrics=['accuracy'])

The model is now ready to be trained. The only thing you need is a dataset.

Let’s load the SIGNS Dataset.

4-2练习2-Residual Networks - 图19

Figure 6

  1. X_train_orig, Y_train_orig, X_test_orig, Y_test_orig, classes = load_dataset()
  2. # Normalize image vectors
  3. X_train = X_train_orig/255.
  4. X_test = X_test_orig/255.
  5. # Convert training and test labels to one hot matrices
  6. Y_train = convert_to_one_hot(Y_train_orig, 6).T
  7. Y_test = convert_to_one_hot(Y_test_orig, 6).T
  8. print ("number of training examples = " + str(X_train.shape[0]))
  9. print ("number of test examples = " + str(X_test.shape[0]))
  10. print ("X_train shape: " + str(X_train.shape))
  11. print ("Y_train shape: " + str(Y_train.shape))
  12. print ("X_test shape: " + str(X_test.shape))
  13. print ("Y_test shape: " + str(Y_test.shape))
number of training examples = 1080
number of test examples = 120
X_train shape: (1080, 64, 64, 3)
Y_train shape: (1080, 6)
X_test shape: (120, 64, 64, 3)
Y_test shape: (120, 6)
import matplotlib.pyplot as pyplot
pyplot.imshow(X_test[5])
aaa=X_test[5]

4-2练习2-Residual Networks - 图20

Run the following cell to train your model on 2 epochs with a batch size of 32. On a CPU it should take you around 5min per epoch.

model.fit(X_train, Y_train, epochs = 100, batch_size = 32)
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0105 - acc: 0.9972
Epoch 57/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0158 - acc: 0.9944
Epoch 58/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.2540 - acc: 0.9417
Epoch 59/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.5890 - acc: 0.8306
Epoch 60/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.2392 - acc: 0.9278
Epoch 61/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0960 - acc: 0.9694
Epoch 62/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.1579 - acc: 0.9648
Epoch 63/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.6228 - acc: 0.7889
Epoch 64/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.4286 - acc: 0.8519
Epoch 65/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.1891 - acc: 0.9370
Epoch 66/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.2869 - acc: 0.9148
Epoch 67/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.1179 - acc: 0.9657
Epoch 68/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.1227 - acc: 0.9676
Epoch 69/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.1558 - acc: 0.9444
Epoch 70/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0670 - acc: 0.9759
Epoch 71/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0463 - acc: 0.9843
Epoch 72/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0474 - acc: 0.9917
Epoch 73/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0300 - acc: 0.9898
Epoch 74/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0857 - acc: 0.9796
Epoch 75/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0588 - acc: 0.9843
Epoch 76/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0206 - acc: 0.9926
Epoch 77/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0187 - acc: 0.9954
Epoch 78/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.1877 - acc: 0.9435
Epoch 79/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0592 - acc: 0.9833
Epoch 80/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0245 - acc: 0.9944
Epoch 81/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0120 - acc: 0.9963
Epoch 82/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0219 - acc: 0.9935
Epoch 83/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.3607 - acc: 0.9157
Epoch 84/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.2344 - acc: 0.9472
Epoch 85/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0782 - acc: 0.9759
Epoch 86/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0238 - acc: 0.9944
Epoch 87/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0531 - acc: 0.9935
Epoch 88/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0163 - acc: 0.9954
Epoch 89/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0151 - acc: 0.9963
Epoch 90/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0203 - acc: 0.9981
Epoch 91/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0035 - acc: 1.0000
Epoch 92/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0190 - acc: 0.9991
Epoch 93/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0338 - acc: 0.9972
Epoch 94/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0353 - acc: 0.9963
Epoch 95/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0189 - acc: 0.9991
Epoch 96/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0037 - acc: 0.9981
Epoch 97/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0339 - acc: 0.9935
Epoch 98/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0217 - acc: 0.9944
Epoch 99/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0114 - acc: 0.9954
Epoch 100/100
1080/1080 [==============================] - 3s 3ms/step - loss: 0.0175 - acc: 0.9991





<keras.callbacks.History at 0x7f4cac9e8b38>

Expected Output:

| Epoch 1/2 | loss: between 1 and 5, acc: between 0.2 and 0.5, although your results can be different from ours. | | —- | —- | | Epoch 2/2 | loss: between 1 and 5, acc: between 0.2 and 0.5, you should see your loss decreasing and the accuracy increasing. |

Let’s see how this model (trained on only two epochs) performs on the test set.

preds = model.evaluate(X_test, Y_test)
print ("Loss = " + str(preds[0]))
print ("Test Accuracy = " + str(preds[1]))
120/120 [==============================] - 0s 583us/step
Loss = 0.109523622692
Test Accuracy = 0.975000007947

Expected Output:

| Test Accuracy | between 0.16 and 0.25 | | —- | —- |

For the purpose of this assignment, we’ve asked you to train the model only for two epochs. You can see that it achieves poor performances. Please go ahead and submit your assignment; to check correctness, the online grader will run your code only for a small number of epochs as well.

Example of the trained model (NOT PROVIDED)

After you have finished this official (graded) part of this assignment, you can also optionally train the ResNet for more iterations, if you want. We get a lot better performance when we train for ~20 epochs, but this will take more than an hour when training on a CPU.

Using a GPU, we’ve trained our own ResNet50 model’s weights on the SIGNS dataset. You can load and run our trained model on the test set in the cells below. It may take ≈1min to load the model.

model = load_model('ResNet50.h5')
preds = model.evaluate(X_test, Y_test)
print ("Loss = " + str(preds[0]))
print ("Test Accuracy = " + str(preds[1]))
120/120 [==============================] - 0s 615us/step
Loss = 0.0908697570364
Test Accuracy = 0.966666674614

ResNet50 is a powerful model for image classification when it is trained for an adequate number of iterations. We hope you can use what you’ve learnt and apply it to your own classification problem to perform state-of-the-art accuracy.

Congratulations on finishing this assignment! You’ve now implemented a state-of-the-art image classification system!

4 - Test on your own image (Optional/Ungraded)

If you wish, you can also take a picture of your own hand and see the output of the model. To do this:

  1. Click on “File” in the upper bar of this notebook, then click “Open” to go on your Coursera Hub.
  2. Add your image to this Jupyter Notebook’s directory, in the “images” folder
  3. Write your image’s name in the following code
  4. Run the code and check if the algorithm is right!

pyplot.imshow(aaa)
<matplotlib.image.AxesImage at 0x7f4db4e14828>

4-2练习2-Residual Networks - 图21

aaa=X_test[76]
img_path = 'images/my_image.jpg'
img = image.load_img(img_path, target_size=(64, 64))
x = image.img_to_array(img)
x = aaa
x = np.expand_dims(x, axis=0)
# x = preprocess_input(x)
print('Input image shape:', x.shape)
my_image = scipy.misc.imread(img_path)
pyplot.imshow(aaa)
preds=model.predict(x)
print("class prediction vector [p(0), p(1), p(2), p(3), p(4), p(5)] = ")
print(preds)
print(np.squeeze(np.argmax(preds,1)))
Input image shape: (1, 64, 64, 3)
class prediction vector [p(0), p(1), p(2), p(3), p(4), p(5)] = 
[[  1.54577449e-01   9.16664383e-11   7.15008646e-04   6.00316515e-03
    8.06652606e-01   3.20517272e-02]]
4

4-2练习2-Residual Networks - 图22

You can also print a summary of your model by running the following code.

model.summary()
__________________________________________________________________________________________________
Layer (type)                    Output Shape         Param #     Connected to                     
==================================================================================================
input_1 (InputLayer)            (None, 64, 64, 3)    0                                            
__________________________________________________________________________________________________
zero_padding2d_1 (ZeroPadding2D (None, 70, 70, 3)    0           input_1[0][0]                    
__________________________________________________________________________________________________
conv1 (Conv2D)                  (None, 32, 32, 64)   9472        zero_padding2d_1[0][0]           
__________________________________________________________________________________________________
bn_conv1 (BatchNormalization)   (None, 32, 32, 64)   256         conv1[0][0]                      
__________________________________________________________________________________________________
activation_1 (Activation)       (None, 32, 32, 64)   0           bn_conv1[0][0]                   
__________________________________________________________________________________________________
max_pooling2d_1 (MaxPooling2D)  (None, 15, 15, 64)   0           activation_1[0][0]               
__________________________________________________________________________________________________
res2a_branch2a (Conv2D)         (None, 15, 15, 64)   4160        max_pooling2d_1[0][0]            
__________________________________________________________________________________________________
bn2a_branch2a (BatchNormalizati (None, 15, 15, 64)   256         res2a_branch2a[0][0]             
__________________________________________________________________________________________________
activation_2 (Activation)       (None, 15, 15, 64)   0           bn2a_branch2a[0][0]              
__________________________________________________________________________________________________
res2a_branch2b (Conv2D)         (None, 15, 15, 64)   36928       activation_2[0][0]               
__________________________________________________________________________________________________
bn2a_branch2b (BatchNormalizati (None, 15, 15, 64)   256         res2a_branch2b[0][0]             
__________________________________________________________________________________________________
activation_3 (Activation)       (None, 15, 15, 64)   0           bn2a_branch2b[0][0]              
__________________________________________________________________________________________________
res2a_branch2c (Conv2D)         (None, 15, 15, 256)  16640       activation_3[0][0]               
__________________________________________________________________________________________________
res2a_branch1 (Conv2D)          (None, 15, 15, 256)  16640       max_pooling2d_1[0][0]            
__________________________________________________________________________________________________
bn2a_branch2c (BatchNormalizati (None, 15, 15, 256)  1024        res2a_branch2c[0][0]             
__________________________________________________________________________________________________
bn2a_branch1 (BatchNormalizatio (None, 15, 15, 256)  1024        res2a_branch1[0][0]              
__________________________________________________________________________________________________
add_1 (Add)                     (None, 15, 15, 256)  0           bn2a_branch2c[0][0]              
                                                                 bn2a_branch1[0][0]               
__________________________________________________________________________________________________
activation_4 (Activation)       (None, 15, 15, 256)  0           add_1[0][0]                      
__________________________________________________________________________________________________
res2b_branch2a (Conv2D)         (None, 15, 15, 64)   16448       activation_4[0][0]               
__________________________________________________________________________________________________
bn2b_branch2a (BatchNormalizati (None, 15, 15, 64)   256         res2b_branch2a[0][0]             
__________________________________________________________________________________________________
activation_5 (Activation)       (None, 15, 15, 64)   0           bn2b_branch2a[0][0]              
__________________________________________________________________________________________________
res2b_branch2b (Conv2D)         (None, 15, 15, 64)   36928       activation_5[0][0]               
__________________________________________________________________________________________________
bn2b_branch2b (BatchNormalizati (None, 15, 15, 64)   256         res2b_branch2b[0][0]             
__________________________________________________________________________________________________
activation_6 (Activation)       (None, 15, 15, 64)   0           bn2b_branch2b[0][0]              
__________________________________________________________________________________________________
res2b_branch2c (Conv2D)         (None, 15, 15, 256)  16640       activation_6[0][0]               
__________________________________________________________________________________________________
bn2b_branch2c (BatchNormalizati (None, 15, 15, 256)  1024        res2b_branch2c[0][0]             
__________________________________________________________________________________________________
add_2 (Add)                     (None, 15, 15, 256)  0           bn2b_branch2c[0][0]              
                                                                 activation_4[0][0]               
__________________________________________________________________________________________________
activation_7 (Activation)       (None, 15, 15, 256)  0           add_2[0][0]                      
__________________________________________________________________________________________________
res2c_branch2a (Conv2D)         (None, 15, 15, 64)   16448       activation_7[0][0]               
__________________________________________________________________________________________________
bn2c_branch2a (BatchNormalizati (None, 15, 15, 64)   256         res2c_branch2a[0][0]             
__________________________________________________________________________________________________
activation_8 (Activation)       (None, 15, 15, 64)   0           bn2c_branch2a[0][0]              
__________________________________________________________________________________________________
res2c_branch2b (Conv2D)         (None, 15, 15, 64)   36928       activation_8[0][0]               
__________________________________________________________________________________________________
bn2c_branch2b (BatchNormalizati (None, 15, 15, 64)   256         res2c_branch2b[0][0]             
__________________________________________________________________________________________________
activation_9 (Activation)       (None, 15, 15, 64)   0           bn2c_branch2b[0][0]              
__________________________________________________________________________________________________
res2c_branch2c (Conv2D)         (None, 15, 15, 256)  16640       activation_9[0][0]               
__________________________________________________________________________________________________
bn2c_branch2c (BatchNormalizati (None, 15, 15, 256)  1024        res2c_branch2c[0][0]             
__________________________________________________________________________________________________
add_3 (Add)                     (None, 15, 15, 256)  0           bn2c_branch2c[0][0]              
                                                                 activation_7[0][0]               
__________________________________________________________________________________________________
activation_10 (Activation)      (None, 15, 15, 256)  0           add_3[0][0]                      
__________________________________________________________________________________________________
res3a_branch2a (Conv2D)         (None, 8, 8, 128)    32896       activation_10[0][0]              
__________________________________________________________________________________________________
bn3a_branch2a (BatchNormalizati (None, 8, 8, 128)    512         res3a_branch2a[0][0]             
__________________________________________________________________________________________________
activation_11 (Activation)      (None, 8, 8, 128)    0           bn3a_branch2a[0][0]              
__________________________________________________________________________________________________
res3a_branch2b (Conv2D)         (None, 8, 8, 128)    147584      activation_11[0][0]              
__________________________________________________________________________________________________
bn3a_branch2b (BatchNormalizati (None, 8, 8, 128)    512         res3a_branch2b[0][0]             
__________________________________________________________________________________________________
activation_12 (Activation)      (None, 8, 8, 128)    0           bn3a_branch2b[0][0]              
__________________________________________________________________________________________________
res3a_branch2c (Conv2D)         (None, 8, 8, 512)    66048       activation_12[0][0]              
__________________________________________________________________________________________________
res3a_branch1 (Conv2D)          (None, 8, 8, 512)    131584      activation_10[0][0]              
__________________________________________________________________________________________________
bn3a_branch2c (BatchNormalizati (None, 8, 8, 512)    2048        res3a_branch2c[0][0]             
__________________________________________________________________________________________________
bn3a_branch1 (BatchNormalizatio (None, 8, 8, 512)    2048        res3a_branch1[0][0]              
__________________________________________________________________________________________________
add_4 (Add)                     (None, 8, 8, 512)    0           bn3a_branch2c[0][0]              
                                                                 bn3a_branch1[0][0]               
__________________________________________________________________________________________________
activation_13 (Activation)      (None, 8, 8, 512)    0           add_4[0][0]                      
__________________________________________________________________________________________________
res3b_branch2a (Conv2D)         (None, 8, 8, 128)    65664       activation_13[0][0]              
__________________________________________________________________________________________________
bn3b_branch2a (BatchNormalizati (None, 8, 8, 128)    512         res3b_branch2a[0][0]             
__________________________________________________________________________________________________
activation_14 (Activation)      (None, 8, 8, 128)    0           bn3b_branch2a[0][0]              
__________________________________________________________________________________________________
res3b_branch2b (Conv2D)         (None, 8, 8, 128)    147584      activation_14[0][0]              
__________________________________________________________________________________________________
bn3b_branch2b (BatchNormalizati (None, 8, 8, 128)    512         res3b_branch2b[0][0]             
__________________________________________________________________________________________________
activation_15 (Activation)      (None, 8, 8, 128)    0           bn3b_branch2b[0][0]              
__________________________________________________________________________________________________
res3b_branch2c (Conv2D)         (None, 8, 8, 512)    66048       activation_15[0][0]              
__________________________________________________________________________________________________
bn3b_branch2c (BatchNormalizati (None, 8, 8, 512)    2048        res3b_branch2c[0][0]             
__________________________________________________________________________________________________
add_5 (Add)                     (None, 8, 8, 512)    0           bn3b_branch2c[0][0]              
                                                                 activation_13[0][0]              
__________________________________________________________________________________________________
activation_16 (Activation)      (None, 8, 8, 512)    0           add_5[0][0]                      
__________________________________________________________________________________________________
res3c_branch2a (Conv2D)         (None, 8, 8, 128)    65664       activation_16[0][0]              
__________________________________________________________________________________________________
bn3c_branch2a (BatchNormalizati (None, 8, 8, 128)    512         res3c_branch2a[0][0]             
__________________________________________________________________________________________________
activation_17 (Activation)      (None, 8, 8, 128)    0           bn3c_branch2a[0][0]              
__________________________________________________________________________________________________
res3c_branch2b (Conv2D)         (None, 8, 8, 128)    147584      activation_17[0][0]              
__________________________________________________________________________________________________
bn3c_branch2b (BatchNormalizati (None, 8, 8, 128)    512         res3c_branch2b[0][0]             
__________________________________________________________________________________________________
activation_18 (Activation)      (None, 8, 8, 128)    0           bn3c_branch2b[0][0]              
__________________________________________________________________________________________________
res3c_branch2c (Conv2D)         (None, 8, 8, 512)    66048       activation_18[0][0]              
__________________________________________________________________________________________________
bn3c_branch2c (BatchNormalizati (None, 8, 8, 512)    2048        res3c_branch2c[0][0]             
__________________________________________________________________________________________________
add_6 (Add)                     (None, 8, 8, 512)    0           bn3c_branch2c[0][0]              
                                                                 activation_16[0][0]              
__________________________________________________________________________________________________
activation_19 (Activation)      (None, 8, 8, 512)    0           add_6[0][0]                      
__________________________________________________________________________________________________
res3d_branch2a (Conv2D)         (None, 8, 8, 128)    65664       activation_19[0][0]              
__________________________________________________________________________________________________
bn3d_branch2a (BatchNormalizati (None, 8, 8, 128)    512         res3d_branch2a[0][0]             
__________________________________________________________________________________________________
activation_20 (Activation)      (None, 8, 8, 128)    0           bn3d_branch2a[0][0]              
__________________________________________________________________________________________________
res3d_branch2b (Conv2D)         (None, 8, 8, 128)    147584      activation_20[0][0]              
__________________________________________________________________________________________________
bn3d_branch2b (BatchNormalizati (None, 8, 8, 128)    512         res3d_branch2b[0][0]             
__________________________________________________________________________________________________
activation_21 (Activation)      (None, 8, 8, 128)    0           bn3d_branch2b[0][0]              
__________________________________________________________________________________________________
res3d_branch2c (Conv2D)         (None, 8, 8, 512)    66048       activation_21[0][0]              
__________________________________________________________________________________________________
bn3d_branch2c (BatchNormalizati (None, 8, 8, 512)    2048        res3d_branch2c[0][0]             
__________________________________________________________________________________________________
add_7 (Add)                     (None, 8, 8, 512)    0           bn3d_branch2c[0][0]              
                                                                 activation_19[0][0]              
__________________________________________________________________________________________________
activation_22 (Activation)      (None, 8, 8, 512)    0           add_7[0][0]                      
__________________________________________________________________________________________________
res4a_branch2a (Conv2D)         (None, 4, 4, 256)    131328      activation_22[0][0]              
__________________________________________________________________________________________________
bn4a_branch2a (BatchNormalizati (None, 4, 4, 256)    1024        res4a_branch2a[0][0]             
__________________________________________________________________________________________________
activation_23 (Activation)      (None, 4, 4, 256)    0           bn4a_branch2a[0][0]              
__________________________________________________________________________________________________
res4a_branch2b (Conv2D)         (None, 4, 4, 256)    590080      activation_23[0][0]              
__________________________________________________________________________________________________
bn4a_branch2b (BatchNormalizati (None, 4, 4, 256)    1024        res4a_branch2b[0][0]             
__________________________________________________________________________________________________
activation_24 (Activation)      (None, 4, 4, 256)    0           bn4a_branch2b[0][0]              
__________________________________________________________________________________________________
res4a_branch2c (Conv2D)         (None, 4, 4, 1024)   263168      activation_24[0][0]              
__________________________________________________________________________________________________
res4a_branch1 (Conv2D)          (None, 4, 4, 1024)   525312      activation_22[0][0]              
__________________________________________________________________________________________________
bn4a_branch2c (BatchNormalizati (None, 4, 4, 1024)   4096        res4a_branch2c[0][0]             
__________________________________________________________________________________________________
bn4a_branch1 (BatchNormalizatio (None, 4, 4, 1024)   4096        res4a_branch1[0][0]              
__________________________________________________________________________________________________
add_8 (Add)                     (None, 4, 4, 1024)   0           bn4a_branch2c[0][0]              
                                                                 bn4a_branch1[0][0]               
__________________________________________________________________________________________________
activation_25 (Activation)      (None, 4, 4, 1024)   0           add_8[0][0]                      
__________________________________________________________________________________________________
res4b_branch2a (Conv2D)         (None, 4, 4, 256)    262400      activation_25[0][0]              
__________________________________________________________________________________________________
bn4b_branch2a (BatchNormalizati (None, 4, 4, 256)    1024        res4b_branch2a[0][0]             
__________________________________________________________________________________________________
activation_26 (Activation)      (None, 4, 4, 256)    0           bn4b_branch2a[0][0]              
__________________________________________________________________________________________________
res4b_branch2b (Conv2D)         (None, 4, 4, 256)    590080      activation_26[0][0]              
__________________________________________________________________________________________________
bn4b_branch2b (BatchNormalizati (None, 4, 4, 256)    1024        res4b_branch2b[0][0]             
__________________________________________________________________________________________________
activation_27 (Activation)      (None, 4, 4, 256)    0           bn4b_branch2b[0][0]              
__________________________________________________________________________________________________
res4b_branch2c (Conv2D)         (None, 4, 4, 1024)   263168      activation_27[0][0]              
__________________________________________________________________________________________________
bn4b_branch2c (BatchNormalizati (None, 4, 4, 1024)   4096        res4b_branch2c[0][0]             
__________________________________________________________________________________________________
add_9 (Add)                     (None, 4, 4, 1024)   0           bn4b_branch2c[0][0]              
                                                                 activation_25[0][0]              
__________________________________________________________________________________________________
activation_28 (Activation)      (None, 4, 4, 1024)   0           add_9[0][0]                      
__________________________________________________________________________________________________
res4c_branch2a (Conv2D)         (None, 4, 4, 256)    262400      activation_28[0][0]              
__________________________________________________________________________________________________
bn4c_branch2a (BatchNormalizati (None, 4, 4, 256)    1024        res4c_branch2a[0][0]             
__________________________________________________________________________________________________
activation_29 (Activation)      (None, 4, 4, 256)    0           bn4c_branch2a[0][0]              
__________________________________________________________________________________________________
res4c_branch2b (Conv2D)         (None, 4, 4, 256)    590080      activation_29[0][0]              
__________________________________________________________________________________________________
bn4c_branch2b (BatchNormalizati (None, 4, 4, 256)    1024        res4c_branch2b[0][0]             
__________________________________________________________________________________________________
activation_30 (Activation)      (None, 4, 4, 256)    0           bn4c_branch2b[0][0]              
__________________________________________________________________________________________________
res4c_branch2c (Conv2D)         (None, 4, 4, 1024)   263168      activation_30[0][0]              
__________________________________________________________________________________________________
bn4c_branch2c (BatchNormalizati (None, 4, 4, 1024)   4096        res4c_branch2c[0][0]             
__________________________________________________________________________________________________
add_10 (Add)                    (None, 4, 4, 1024)   0           bn4c_branch2c[0][0]              
                                                                 activation_28[0][0]              
__________________________________________________________________________________________________
activation_31 (Activation)      (None, 4, 4, 1024)   0           add_10[0][0]                     
__________________________________________________________________________________________________
res4d_branch2a (Conv2D)         (None, 4, 4, 256)    262400      activation_31[0][0]              
__________________________________________________________________________________________________
bn4d_branch2a (BatchNormalizati (None, 4, 4, 256)    1024        res4d_branch2a[0][0]             
__________________________________________________________________________________________________
activation_32 (Activation)      (None, 4, 4, 256)    0           bn4d_branch2a[0][0]              
__________________________________________________________________________________________________
res4d_branch2b (Conv2D)         (None, 4, 4, 256)    590080      activation_32[0][0]              
__________________________________________________________________________________________________
bn4d_branch2b (BatchNormalizati (None, 4, 4, 256)    1024        res4d_branch2b[0][0]             
__________________________________________________________________________________________________
activation_33 (Activation)      (None, 4, 4, 256)    0           bn4d_branch2b[0][0]              
__________________________________________________________________________________________________
res4d_branch2c (Conv2D)         (None, 4, 4, 1024)   263168      activation_33[0][0]              
__________________________________________________________________________________________________
bn4d_branch2c (BatchNormalizati (None, 4, 4, 1024)   4096        res4d_branch2c[0][0]             
__________________________________________________________________________________________________
add_11 (Add)                    (None, 4, 4, 1024)   0           bn4d_branch2c[0][0]              
                                                                 activation_31[0][0]              
__________________________________________________________________________________________________
activation_34 (Activation)      (None, 4, 4, 1024)   0           add_11[0][0]                     
__________________________________________________________________________________________________
res4e_branch2a (Conv2D)         (None, 4, 4, 256)    262400      activation_34[0][0]              
__________________________________________________________________________________________________
bn4e_branch2a (BatchNormalizati (None, 4, 4, 256)    1024        res4e_branch2a[0][0]             
__________________________________________________________________________________________________
activation_35 (Activation)      (None, 4, 4, 256)    0           bn4e_branch2a[0][0]              
__________________________________________________________________________________________________
res4e_branch2b (Conv2D)         (None, 4, 4, 256)    590080      activation_35[0][0]              
__________________________________________________________________________________________________
bn4e_branch2b (BatchNormalizati (None, 4, 4, 256)    1024        res4e_branch2b[0][0]             
__________________________________________________________________________________________________
activation_36 (Activation)      (None, 4, 4, 256)    0           bn4e_branch2b[0][0]              
__________________________________________________________________________________________________
res4e_branch2c (Conv2D)         (None, 4, 4, 1024)   263168      activation_36[0][0]              
__________________________________________________________________________________________________
bn4e_branch2c (BatchNormalizati (None, 4, 4, 1024)   4096        res4e_branch2c[0][0]             
__________________________________________________________________________________________________
add_12 (Add)                    (None, 4, 4, 1024)   0           bn4e_branch2c[0][0]              
                                                                 activation_34[0][0]              
__________________________________________________________________________________________________
activation_37 (Activation)      (None, 4, 4, 1024)   0           add_12[0][0]                     
__________________________________________________________________________________________________
res4f_branch2a (Conv2D)         (None, 4, 4, 256)    262400      activation_37[0][0]              
__________________________________________________________________________________________________
bn4f_branch2a (BatchNormalizati (None, 4, 4, 256)    1024        res4f_branch2a[0][0]             
__________________________________________________________________________________________________
activation_38 (Activation)      (None, 4, 4, 256)    0           bn4f_branch2a[0][0]              
__________________________________________________________________________________________________
res4f_branch2b (Conv2D)         (None, 4, 4, 256)    590080      activation_38[0][0]              
__________________________________________________________________________________________________
bn4f_branch2b (BatchNormalizati (None, 4, 4, 256)    1024        res4f_branch2b[0][0]             
__________________________________________________________________________________________________
activation_39 (Activation)      (None, 4, 4, 256)    0           bn4f_branch2b[0][0]              
__________________________________________________________________________________________________
res4f_branch2c (Conv2D)         (None, 4, 4, 1024)   263168      activation_39[0][0]              
__________________________________________________________________________________________________
bn4f_branch2c (BatchNormalizati (None, 4, 4, 1024)   4096        res4f_branch2c[0][0]             
__________________________________________________________________________________________________
add_13 (Add)                    (None, 4, 4, 1024)   0           bn4f_branch2c[0][0]              
                                                                 activation_37[0][0]              
__________________________________________________________________________________________________
activation_40 (Activation)      (None, 4, 4, 1024)   0           add_13[0][0]                     
__________________________________________________________________________________________________
res5a_branch2a (Conv2D)         (None, 2, 2, 512)    524800      activation_40[0][0]              
__________________________________________________________________________________________________
bn5a_branch2a (BatchNormalizati (None, 2, 2, 512)    2048        res5a_branch2a[0][0]             
__________________________________________________________________________________________________
activation_41 (Activation)      (None, 2, 2, 512)    0           bn5a_branch2a[0][0]              
__________________________________________________________________________________________________
res5a_branch2b (Conv2D)         (None, 2, 2, 512)    2359808     activation_41[0][0]              
__________________________________________________________________________________________________
bn5a_branch2b (BatchNormalizati (None, 2, 2, 512)    2048        res5a_branch2b[0][0]             
__________________________________________________________________________________________________
activation_42 (Activation)      (None, 2, 2, 512)    0           bn5a_branch2b[0][0]              
__________________________________________________________________________________________________
res5a_branch2c (Conv2D)         (None, 2, 2, 2048)   1050624     activation_42[0][0]              
__________________________________________________________________________________________________
res5a_branch1 (Conv2D)          (None, 2, 2, 2048)   2099200     activation_40[0][0]              
__________________________________________________________________________________________________
bn5a_branch2c (BatchNormalizati (None, 2, 2, 2048)   8192        res5a_branch2c[0][0]             
__________________________________________________________________________________________________
bn5a_branch1 (BatchNormalizatio (None, 2, 2, 2048)   8192        res5a_branch1[0][0]              
__________________________________________________________________________________________________
add_14 (Add)                    (None, 2, 2, 2048)   0           bn5a_branch2c[0][0]              
                                                                 bn5a_branch1[0][0]               
__________________________________________________________________________________________________
activation_43 (Activation)      (None, 2, 2, 2048)   0           add_14[0][0]                     
__________________________________________________________________________________________________
res5b_branch2a (Conv2D)         (None, 2, 2, 256)    524544      activation_43[0][0]              
__________________________________________________________________________________________________
bn5b_branch2a (BatchNormalizati (None, 2, 2, 256)    1024        res5b_branch2a[0][0]             
__________________________________________________________________________________________________
activation_44 (Activation)      (None, 2, 2, 256)    0           bn5b_branch2a[0][0]              
__________________________________________________________________________________________________
res5b_branch2b (Conv2D)         (None, 2, 2, 256)    590080      activation_44[0][0]              
__________________________________________________________________________________________________
bn5b_branch2b (BatchNormalizati (None, 2, 2, 256)    1024        res5b_branch2b[0][0]             
__________________________________________________________________________________________________
activation_45 (Activation)      (None, 2, 2, 256)    0           bn5b_branch2b[0][0]              
__________________________________________________________________________________________________
res5b_branch2c (Conv2D)         (None, 2, 2, 2048)   526336      activation_45[0][0]              
__________________________________________________________________________________________________
bn5b_branch2c (BatchNormalizati (None, 2, 2, 2048)   8192        res5b_branch2c[0][0]             
__________________________________________________________________________________________________
add_15 (Add)                    (None, 2, 2, 2048)   0           bn5b_branch2c[0][0]              
                                                                 activation_43[0][0]              
__________________________________________________________________________________________________
activation_46 (Activation)      (None, 2, 2, 2048)   0           add_15[0][0]                     
__________________________________________________________________________________________________
res5c_branch2a (Conv2D)         (None, 2, 2, 256)    524544      activation_46[0][0]              
__________________________________________________________________________________________________
bn5c_branch2a (BatchNormalizati (None, 2, 2, 256)    1024        res5c_branch2a[0][0]             
__________________________________________________________________________________________________
activation_47 (Activation)      (None, 2, 2, 256)    0           bn5c_branch2a[0][0]              
__________________________________________________________________________________________________
res5c_branch2b (Conv2D)         (None, 2, 2, 256)    590080      activation_47[0][0]              
__________________________________________________________________________________________________
bn5c_branch2b (BatchNormalizati (None, 2, 2, 256)    1024        res5c_branch2b[0][0]             
__________________________________________________________________________________________________
activation_48 (Activation)      (None, 2, 2, 256)    0           bn5c_branch2b[0][0]              
__________________________________________________________________________________________________
res5c_branch2c (Conv2D)         (None, 2, 2, 2048)   526336      activation_48[0][0]              
__________________________________________________________________________________________________
bn5c_branch2c (BatchNormalizati (None, 2, 2, 2048)   8192        res5c_branch2c[0][0]             
__________________________________________________________________________________________________
add_16 (Add)                    (None, 2, 2, 2048)   0           bn5c_branch2c[0][0]              
                                                                 activation_46[0][0]              
__________________________________________________________________________________________________
activation_49 (Activation)      (None, 2, 2, 2048)   0           add_16[0][0]                     
__________________________________________________________________________________________________
average_pooling2d_1 (AveragePoo (None, 1, 1, 2048)   0           activation_49[0][0]              
__________________________________________________________________________________________________
flatten_1 (Flatten)             (None, 2048)         0           average_pooling2d_1[0][0]        
__________________________________________________________________________________________________
fc6 (Dense)                     (None, 6)            12294       flatten_1[0][0]                  
==================================================================================================
Total params: 17,958,790
Trainable params: 17,907,718
Non-trainable params: 51,072
__________________________________________________________________________________________________

Finally, run the code below to visualize your ResNet50. You can also download a .png picture of your model by going to “File -> Open…-> model.png”.

plot_model(model, to_file='model.png')
SVG(model_to_dot(model).create(prog='dot', format='svg'))

4-2练习2-Residual Networks - 图23

References

This notebook presents the ResNet algorithm due to He et al. (2015). The implementation here also took significant inspiration and follows the structure given in the github repository of Francois Chollet: