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{ | ||
"cells": [ | ||
{ | ||
"cell_type": "code", | ||
"execution_count": 1, | ||
"metadata": {}, | ||
"outputs": [ | ||
{ | ||
"name": "stderr", | ||
"output_type": "stream", | ||
"text": [ | ||
"Using TensorFlow backend.\n" | ||
] | ||
}, | ||
{ | ||
"data": { | ||
"text/plain": [ | ||
"'2.0.8'" | ||
] | ||
}, | ||
"execution_count": 1, | ||
"metadata": {}, | ||
"output_type": "execute_result" | ||
} | ||
], | ||
"source": [ | ||
"import keras\n", | ||
"keras.__version__" | ||
] | ||
}, | ||
{ | ||
"cell_type": "markdown", | ||
"metadata": { | ||
"collapsed": true | ||
}, | ||
"source": [ | ||
"# 5.1 - Introduction to convnets\n", | ||
"\n", | ||
"This notebook contains the code sample found in Chapter 5, Section 1 of [Deep Learning with Python](https://www.manning.com/books/deep-learning-with-python?a_aid=keras&a_bid=76564dff). Note that the original text features far more content, in particular further explanations and figures: in this notebook, you will only find source code and related comments.\n", | ||
"\n", | ||
"----\n", | ||
"\n", | ||
"First, let's take a practical look at a very simple convnet example. We will use our convnet to classify MNIST digits, a task that you've already been \n", | ||
"through in Chapter 2, using a densely-connected network (our test accuracy then was 97.8%). Even though our convnet will be very basic, its \n", | ||
"accuracy will still blow out of the water that of the densely-connected model from Chapter 2.\n", | ||
"\n", | ||
"The 6 lines of code below show you what a basic convnet looks like. It's a stack of `Conv2D` and `MaxPooling2D` layers. We'll see in a \n", | ||
"minute what they do concretely.\n", | ||
"Importantly, a convnet takes as input tensors of shape `(image_height, image_width, image_channels)` (not including the batch dimension). \n", | ||
"In our case, we will configure our convnet to process inputs of size `(28, 28, 1)`, which is the format of MNIST images. We do this via \n", | ||
"passing the argument `input_shape=(28, 28, 1)` to our first layer." | ||
] | ||
}, | ||
{ | ||
"cell_type": "code", | ||
"execution_count": 2, | ||
"metadata": {}, | ||
"outputs": [], | ||
"source": [ | ||
"from keras import layers\n", | ||
"from keras import models\n", | ||
"\n", | ||
"model = models.Sequential()\n", | ||
"model.add(layers.Conv2D(32, (3, 3), activation='relu', input_shape=(28, 28, 1)))\n", | ||
"model.add(layers.MaxPooling2D((2, 2)))\n", | ||
"model.add(layers.Conv2D(64, (3, 3), activation='relu'))\n", | ||
"model.add(layers.MaxPooling2D((2, 2)))\n", | ||
"model.add(layers.Conv2D(64, (3, 3), activation='relu'))" | ||
] | ||
}, | ||
{ | ||
"cell_type": "markdown", | ||
"metadata": {}, | ||
"source": [ | ||
"Let's display the architecture of our convnet so far:" | ||
] | ||
}, | ||
{ | ||
"cell_type": "code", | ||
"execution_count": 3, | ||
"metadata": {}, | ||
"outputs": [ | ||
{ | ||
"name": "stdout", | ||
"output_type": "stream", | ||
"text": [ | ||
"_________________________________________________________________\n", | ||
"Layer (type) Output Shape Param # \n", | ||
"=================================================================\n", | ||
"conv2d_1 (Conv2D) (None, 26, 26, 32) 320 \n", | ||
"_________________________________________________________________\n", | ||
"max_pooling2d_1 (MaxPooling2 (None, 13, 13, 32) 0 \n", | ||
"_________________________________________________________________\n", | ||
"conv2d_2 (Conv2D) (None, 11, 11, 64) 18496 \n", | ||
"_________________________________________________________________\n", | ||
"max_pooling2d_2 (MaxPooling2 (None, 5, 5, 64) 0 \n", | ||
"_________________________________________________________________\n", | ||
"conv2d_3 (Conv2D) (None, 3, 3, 64) 36928 \n", | ||
"=================================================================\n", | ||
"Total params: 55,744\n", | ||
"Trainable params: 55,744\n", | ||
"Non-trainable params: 0\n", | ||
"_________________________________________________________________\n" | ||
] | ||
} | ||
], | ||
"source": [ | ||
"model.summary()" | ||
] | ||
}, | ||
{ | ||
"cell_type": "markdown", | ||
"metadata": { | ||
"collapsed": true | ||
}, | ||
"source": [ | ||
"You can see above that the output of every `Conv2D` and `MaxPooling2D` layer is a 3D tensor of shape `(height, width, channels)`. The width \n", | ||
"and height dimensions tend to shrink as we go deeper in the network. The number of channels is controlled by the first argument passed to \n", | ||
"the `Conv2D` layers (e.g. 32 or 64).\n", | ||
"\n", | ||
"The next step would be to feed our last output tensor (of shape `(3, 3, 64)`) into a densely-connected classifier network like those you are \n", | ||
"already familiar with: a stack of `Dense` layers. These classifiers process vectors, which are 1D, whereas our current output is a 3D tensor. \n", | ||
"So first, we will have to flatten our 3D outputs to 1D, and then add a few `Dense` layers on top:" | ||
] | ||
}, | ||
{ | ||
"cell_type": "code", | ||
"execution_count": 4, | ||
"metadata": { | ||
"collapsed": true | ||
}, | ||
"outputs": [], | ||
"source": [ | ||
"model.add(layers.Flatten())\n", | ||
"model.add(layers.Dense(64, activation='relu'))\n", | ||
"model.add(layers.Dense(10, activation='softmax'))" | ||
] | ||
}, | ||
{ | ||
"cell_type": "markdown", | ||
"metadata": {}, | ||
"source": [ | ||
"We are going to do 10-way classification, so we use a final layer with 10 outputs and a softmax activation. Now here's what our network \n", | ||
"looks like:" | ||
] | ||
}, | ||
{ | ||
"cell_type": "code", | ||
"execution_count": 5, | ||
"metadata": {}, | ||
"outputs": [ | ||
{ | ||
"name": "stdout", | ||
"output_type": "stream", | ||
"text": [ | ||
"_________________________________________________________________\n", | ||
"Layer (type) Output Shape Param # \n", | ||
"=================================================================\n", | ||
"conv2d_1 (Conv2D) (None, 26, 26, 32) 320 \n", | ||
"_________________________________________________________________\n", | ||
"max_pooling2d_1 (MaxPooling2 (None, 13, 13, 32) 0 \n", | ||
"_________________________________________________________________\n", | ||
"conv2d_2 (Conv2D) (None, 11, 11, 64) 18496 \n", | ||
"_________________________________________________________________\n", | ||
"max_pooling2d_2 (MaxPooling2 (None, 5, 5, 64) 0 \n", | ||
"_________________________________________________________________\n", | ||
"conv2d_3 (Conv2D) (None, 3, 3, 64) 36928 \n", | ||
"_________________________________________________________________\n", | ||
"flatten_1 (Flatten) (None, 576) 0 \n", | ||
"_________________________________________________________________\n", | ||
"dense_1 (Dense) (None, 64) 36928 \n", | ||
"_________________________________________________________________\n", | ||
"dense_2 (Dense) (None, 10) 650 \n", | ||
"=================================================================\n", | ||
"Total params: 93,322\n", | ||
"Trainable params: 93,322\n", | ||
"Non-trainable params: 0\n", | ||
"_________________________________________________________________\n" | ||
] | ||
} | ||
], | ||
"source": [ | ||
"model.summary()" | ||
] | ||
}, | ||
{ | ||
"cell_type": "markdown", | ||
"metadata": {}, | ||
"source": [ | ||
"As you can see, our `(3, 3, 64)` outputs were flattened into vectors of shape `(576,)`, before going through two `Dense` layers.\n", | ||
"\n", | ||
"Now, let's train our convnet on the MNIST digits. We will reuse a lot of the code we have already covered in the MNIST example from Chapter \n", | ||
"2." | ||
] | ||
}, | ||
{ | ||
"cell_type": "code", | ||
"execution_count": 6, | ||
"metadata": {}, | ||
"outputs": [], | ||
"source": [ | ||
"from keras.datasets import mnist\n", | ||
"from keras.utils import to_categorical\n", | ||
"\n", | ||
"(train_images, train_labels), (test_images, test_labels) = mnist.load_data()\n", | ||
"\n", | ||
"train_images = train_images.reshape((60000, 28, 28, 1))\n", | ||
"train_images = train_images.astype('float32') / 255\n", | ||
"\n", | ||
"test_images = test_images.reshape((10000, 28, 28, 1))\n", | ||
"test_images = test_images.astype('float32') / 255\n", | ||
"\n", | ||
"train_labels = to_categorical(train_labels)\n", | ||
"test_labels = to_categorical(test_labels)" | ||
] | ||
}, | ||
{ | ||
"cell_type": "code", | ||
"execution_count": 7, | ||
"metadata": {}, | ||
"outputs": [ | ||
{ | ||
"name": "stdout", | ||
"output_type": "stream", | ||
"text": [ | ||
"Epoch 1/5\n", | ||
"60000/60000 [==============================] - 8s - loss: 0.1766 - acc: 0.9440 \n", | ||
"Epoch 2/5\n", | ||
"60000/60000 [==============================] - 7s - loss: 0.0462 - acc: 0.9855 \n", | ||
"Epoch 3/5\n", | ||
"60000/60000 [==============================] - 7s - loss: 0.0322 - acc: 0.9902 \n", | ||
"Epoch 4/5\n", | ||
"60000/60000 [==============================] - 7s - loss: 0.0241 - acc: 0.9926 \n", | ||
"Epoch 5/5\n", | ||
"60000/60000 [==============================] - 7s - loss: 0.0187 - acc: 0.9943 \n" | ||
] | ||
}, | ||
{ | ||
"data": { | ||
"text/plain": [ | ||
"<keras.callbacks.History at 0x7fbd9c4cd828>" | ||
] | ||
}, | ||
"execution_count": 7, | ||
"metadata": {}, | ||
"output_type": "execute_result" | ||
} | ||
], | ||
"source": [ | ||
"model.compile(optimizer='rmsprop',\n", | ||
" loss='categorical_crossentropy',\n", | ||
" metrics=['accuracy'])\n", | ||
"model.fit(train_images, train_labels, epochs=5, batch_size=64)" | ||
] | ||
}, | ||
{ | ||
"cell_type": "markdown", | ||
"metadata": {}, | ||
"source": [ | ||
"Let's evaluate the model on the test data:" | ||
] | ||
}, | ||
{ | ||
"cell_type": "code", | ||
"execution_count": 8, | ||
"metadata": {}, | ||
"outputs": [ | ||
{ | ||
"name": "stdout", | ||
"output_type": "stream", | ||
"text": [ | ||
" 9536/10000 [===========================>..] - ETA: 0s" | ||
] | ||
} | ||
], | ||
"source": [ | ||
"test_loss, test_acc = model.evaluate(test_images, test_labels)" | ||
] | ||
}, | ||
{ | ||
"cell_type": "code", | ||
"execution_count": 9, | ||
"metadata": {}, | ||
"outputs": [ | ||
{ | ||
"data": { | ||
"text/plain": [ | ||
"0.99129999999999996" | ||
] | ||
}, | ||
"execution_count": 9, | ||
"metadata": {}, | ||
"output_type": "execute_result" | ||
} | ||
], | ||
"source": [ | ||
"test_acc" | ||
] | ||
}, | ||
{ | ||
"cell_type": "markdown", | ||
"metadata": {}, | ||
"source": [ | ||
"While our densely-connected network from Chapter 2 had a test accuracy of 97.8%, our basic convnet has a test accuracy of 99.3%: we \n", | ||
"decreased our error rate by 68% (relative). Not bad! " | ||
] | ||
} | ||
], | ||
"metadata": { | ||
"kernelspec": { | ||
"display_name": "Python 3", | ||
"language": "python", | ||
"name": "python3" | ||
}, | ||
"language_info": { | ||
"codemirror_mode": { | ||
"name": "ipython", | ||
"version": 3 | ||
}, | ||
"file_extension": ".py", | ||
"mimetype": "text/x-python", | ||
"name": "python", | ||
"nbconvert_exporter": "python", | ||
"pygments_lexer": "ipython3", | ||
"version": "3.5.2" | ||
} | ||
}, | ||
"nbformat": 4, | ||
"nbformat_minor": 2 | ||
} |
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