README.md 34.9 KB
Newer Older
F
fengjiayi 已提交
1

C
choijulie 已提交
2 3
Image Classification
=======================
D
dangqingqing 已提交
4

L
Luo Tao 已提交
5
The source code for this chapter is at [book/image_classification](https://github.com/PaddlePaddle/book/tree/develop/03.image_classification). First-time users, please refer to PaddlePaddle [Installation Tutorial](https://github.com/PaddlePaddle/book/blob/develop/README.md#running-the-book) for installation instructions.
L
Luo Tao 已提交
6

C
choijulie 已提交
7
## Background
D
dangqingqing 已提交
8

C
choijulie 已提交
9
Compared to words, images provide much more vivid and easier to understand information with an artistic sense. They are an important source for people to express and exchange ideas. In this chapter, we focus on one of the essential problems in image recognition -- image classification.
D
dangqingqing 已提交
10

C
choijulie 已提交
11
Image classification is the task of distinguishing images in different categories based on their semantic meaning. It is a core problem in computer vision and is also the foundation of other higher level computer vision tasks such as object detection, image segmentation, object tracking, action recognition, etc. Image classification has applications in many areas such as face recognition, intelligent video analysis in security systems, traffic scene recognition in transportation systems, content-based image retrieval and automatic photo indexing in web services, image classification in medicine, etc.
D
dangqingqing 已提交
12

X
Xi Chen 已提交
13
To classify an image we firstly encode the entire image using handcrafted or learned features and then determine the category using a classifier. Thus, feature extraction plays an important role in image classification. Prior to deep learning the BoW(Bag of Words) model was the most widely used method for classifying an image as well as an object. The BoW technique was introduced in Natural Language Processing where a training sentence is represented as a bag of words. In the context of image classification, the BoW model requires constructing a dictionary. The simplest BoW framework can be designed with three steps: **feature extraction**, **feature encoding** and **classifier design**.
D
dangqingqing 已提交
14

C
choijulie 已提交
15
Using Deep learning, image classification can be framed as a supervised or unsupervised learning problem that uses hierarchical features automatically without any need for manually crafted features from the image. In recent years, Convolutional Neural Networks (CNNs) have made significant progress in image classification. CNNs use raw image pixels as input, extract low-level and high-level abstract features through convolution operations, and directly output the classification results from the model. This style of end-to-end learning has lead to not only increased performance but also wider adoption various applications.
D
dangqingqing 已提交
16

C
choijulie 已提交
17
In this chapter, we introduce deep-learning-based image classification methods and explain how to train a CNN model using PaddlePaddle.
D
dangqingqing 已提交
18

C
choijulie 已提交
19
## Demonstration
D
dangqingqing 已提交
20

C
choijulie 已提交
21
An image can be classified by a general as well as fine-grained image classifier.
D
dangqingqing 已提交
22

C
choijulie 已提交
23 24

Figure 1 shows the results of a general image classifier -- the trained model can correctly recognize the main objects in the images.
D
dangqingqing 已提交
25 26

<p align="center">
D
dangqingqing 已提交
27
<img src="image/dog_cat.png "  width="350" ><br/>
C
choijulie 已提交
28
Figure 1. General image classification
D
dangqingqing 已提交
29 30 31
</p>


C
choijulie 已提交
32
Figure 2 shows the results of a fine-grained image classifier. This task of flower recognition requires correctly recognizing of the flower's categories.
D
dangqingqing 已提交
33 34

<p align="center">
D
dangqingqing 已提交
35
<img src="image/flowers.png" width="400" ><br/>
C
choijulie 已提交
36
Figure 2. Fine-grained image classification
D
dangqingqing 已提交
37 38 39
</p>


C
choijulie 已提交
40 41
A good model should recognize objects of different categories correctly. The results of such a model should not vary due to viewpoint variation, illumination conditions, object distortion or occlusion.
Figure 3 shows some images with various disturbances. A good model should classify these images correctly like humans.
D
dangqingqing 已提交
42 43

<p align="center">
C
choijulie 已提交
44 45
<img src="image/variations_en.png" width="550" ><br/>
Figure 3. Disturbed images [22]
D
dangqingqing 已提交
46 47
</p>

C
choijulie 已提交
48 49
## Model Overview

X
Xi Chen 已提交
50
A large amount of research in image classification is built upon public datasets such as [PASCAL VOC](http://host.robots.ox.ac.uk/pascal/VOC/), [ImageNet](http://image-net.org/) etc. Many image classification algorithms are usually evaluated and compared on top of these datasets. PASCAL VOC is a computer vision competition started in 2005, and ImageNet is a dataset for Large Scale Visual Recognition Challenge (ILSVRC) started in 2010. In this chapter, we introduce some image classification models from the submissions to these competitions.
C
choijulie 已提交
51 52

Before 2012, traditional image classification was accomplished with the three steps described in the background section. A complete model construction usually involves the following stages: low-level feature extraction, feature encoding, spatial constraint or feature clustering, classifier design, model ensemble.
D
dangqingqing 已提交
53

C
choijulie 已提交
54
  1). **Low-level feature extraction**: This step extracts large amounts of local features according to fixed strides and scales. Popular local features include Scale-Invariant Feature Transform (SIFT)[1], Histogram of Oriented Gradient(HOG)[2], Local Binary Pattern(LBP)[3], etc. A common practice is to employ multiple feature descriptors in order to avoid missing a lot of information.
D
dangqingqing 已提交
55

C
choijulie 已提交
56
  2). **Feature encoding**: Low-level features contain a large amount of redundancy and noise. In order to improve the robustness of features, it is necessary to employ a feature transformation to encode low-level features. This is called feature encoding. Common feature encoding methods include vector quantization [4], sparse coding [5], locality-constrained linear coding [6], Fisher vector encoding [7], etc.
57

C
choijulie 已提交
58
  3). **Spatial constraint**: Spatial constraint or feature clustering is usually adopted after feature encoding for extracting the maximum or average of each dimension in the spatial domain. Pyramid feature matching--a popular feature clustering method--divides an image uniformly into patches and performs feature clustering in each patch.
D
dangqingqing 已提交
59

C
choijulie 已提交
60 61 62 63 64
  4). **Classification**: In the above steps an image can be described by a vector of fixed dimension. Then a classifier can be used to classify the image into categories. Common classifiers include Support Vector Machine(SVM), random forest etc. Kernel SVM is the most popular classifier and has achieved very good performance in traditional image classification tasks.

This method has been used widely as image classification algorithm in PASCAL VOC [18]. NEC Labs(http://www.nec-labs.com/) won the championship by employing SIFT and LBP features, two non-linear encoders and SVM in ILSVRC 2010 [8].

The CNN model--AlexNet proposed by Alex Krizhevsky et al.[9], made a breakthrough in ILSVRC 2012. It dramatically outperformed traditional methods and won the ILSVRC championship in 2012. This was also the first time that a deep learning method was used for large-scale image classification. Since AlexNet, a series of CNN models have been proposed that have advanced the state of the art steadily on Imagenet as shown in Figure 4. With deeper and more sophisticated architectures, Top-5 error rate is getting lower and lower (to around 3.5%). The error rate of human raters on the same Imagenet dataset is 5.1%, which means that the image classification capability of a deep learning model has surpassed human raters.
D
dangqingqing 已提交
65 66

<p align="center">
T
Tao Luo 已提交
67
<img src="image/ilsvrc.png" width="500" ><br/>
C
choijulie 已提交
68
Figure 4. Top-5 error rates on ILSVRC image classification
D
dangqingqing 已提交
69 70
</p>

D
dangqingqing 已提交
71 72
### CNN

C
choijulie 已提交
73
Traditional CNNs consist of convolutional and fully-connected layers and use the softmax multi-category classifier with the cross-entropy loss function. Figure 5 shows a typical CNN. We first introduce the common components of a CNN.
D
dangqingqing 已提交
74 75

<p align="center">
C
choijulie 已提交
76 77
<img src="image/lenet_en.png"><br/>
Figure 5. A CNN example [20]
78
</p>
D
dangqingqing 已提交
79

C
choijulie 已提交
80 81 82
- convolutional layer: this layer uses the convolution operation to extract (low-level and high-level) features and to discover local correlation and spatial invariance.

- pooling layer: this layer down samples feature maps by extracting local max (max-pooling) or average (avg-pooling) value of each patch in the feature map. Down-sampling is a common operation in image processing and is used to filter out high-frequency information.
D
dangqingqing 已提交
83

C
choijulie 已提交
84
- fully-connected layer: this layer fully connects neurons between two adjacent layers.
D
dangqingqing 已提交
85

C
choijulie 已提交
86 87 88 89
- non-linear activation: Convolutional and fully-connected layers are usually followed by some non-linear activation layers. Non-linearities enhance the expression capability of the network. Some examples of non-linear activation functions are Sigmoid, Tanh and ReLU. ReLU is the most commonly used activation function in CNN.

- Dropout [10]: At each training stage, individual nodes are dropped out of the network with a certain probability. This improves the network's ability to generalize and avoids overfitting.

X
Xi Chen 已提交
90
Parameter updates at each layer during training causes input layer distributions to change and in turn requires hyper-parameters to be carefully tuned. In 2015, Sergey Ioffe and Christian Szegedy proposed a Batch Normalization (BN) algorithm [14], which normalizes the features of each batch in a layer, and enables relatively stable distribution in each layer. Not only does BN algorithm act as a regularizer, but also reduces the need for careful hyper-parameter design. Experiments demonstrate that BN algorithm accelerates the training convergence and has been widely used in later deeper models.
C
choijulie 已提交
91 92

In the following sections, we will introduce the following network architectures - VGG, GoogleNet and ResNets.
D
dangqingqing 已提交
93

D
dangqingqing 已提交
94 95
### VGG

C
choijulie 已提交
96
The Oxford Visual Geometry Group (VGG) proposed the VGG network in ILSVRC 2014 [11]. This model is deeper and wider than previous neural architectures. It consists of five main groups of convolution operations. Adjacent convolution groups are connected via max-pooling layers. Each group contains a series of 3x3 convolutional layers (i.e. kernels). The number of convolution kernels stays the same within the group and increases from 64 in the first group to 512 in the last one. The total number of learnable layers could be 11, 13, 16, or 19 depending on the number of convolutional layers in each group. Figure 6 illustrates a 16-layer VGG. The neural architecture of VGG is relatively simple and has been adopted by many papers such as the first one that surpassed human-level performance on ImageNet [19].
D
dangqingqing 已提交
97 98

<p align="center">
D
dangqingqing 已提交
99
<img src="image/vgg16.png" width="750" ><br/>
C
choijulie 已提交
100
Figure 6. VGG16 model for ImageNet
D
dangqingqing 已提交
101
</p>
D
dangqingqing 已提交
102

D
dangqingqing 已提交
103 104
### GoogleNet

C
choijulie 已提交
105 106 107
GoogleNet [12] won the ILSVRC championship in 2014. GoogleNet borrowed some ideas from the Network in Network(NIN) model [13] and is built on the Inception blocks. Let us first familiarize ourselves with these first.

The two main characteristics of the NIN model are:
D
dangqingqing 已提交
108

C
choijulie 已提交
109
1) A single-layer convolutional network is replaced with a Multi-Layer Perceptron Convolution (MLPconv). MLPconv is a tiny multi-layer convolutional network. It enhances non-linearity by adding several 1x1 convolutional layers after linear ones.
D
dangqingqing 已提交
110

C
choijulie 已提交
111 112 113
2) In traditional CNNs, the last fewer layers are usually fully-connected with a large number of parameters. In contrast, NIN replaces all fully-connected layers with convolutional layers with feature maps of the same size as the category dimension and a global average pooling. This replacement of fully-connected layers significantly reduces the number of parameters.

Figure 7 depicts two Inception blocks. Figure 7(a) is the simplest design. The output is a concatenation of features from three convolutional layers and one pooling layer. The disadvantage of this design is that the pooling layer does not change the number of filters and leads to an increase in the number of outputs. After several of such blocks, the number of outputs and parameters become larger and larger and lead to higher computation complexity. To overcome this drawback, the Inception block in Figure 7(b) employs three 1x1 convolutional layers. These reduce dimensions or the number of channels but improve the non-linearity of the network.
D
dangqingqing 已提交
114 115

<p align="center">
C
choijulie 已提交
116 117
<img src="image/inception_en.png" width="800" ><br/>
Figure 7. Inception block
D
dangqingqing 已提交
118 119
</p>

C
choijulie 已提交
120
GoogleNet consists of multiple stacked Inception blocks followed by an avg-pooling layer as in NIN instead of traditional fully connected layers. The difference between GoogleNet and NIN is that GoogleNet adds a fully connected layer after avg-pooling layer to output a vector of category size. Besides these two characteristics, the features from middle layers of a GoogleNet are also very discriminative. Therefore, GoogeleNet inserts two auxiliary classifiers in the model for enhancing gradient and regularization when doing backpropagation. The loss function of the whole network is the weighted sum of these three classifiers.
D
dangqingqing 已提交
121

X
Xi Chen 已提交
122
Figure 8 illustrates the neural architecture of a GoogleNet which consists of 22 layers: it starts with three regular convolutional layers followed by three groups of sub-networks -- the first group contains two Inception blocks, the second group has five, and the third group has two. It ends with an average pooling and a fully-connected layer.
D
dangqingqing 已提交
123 124

<p align="center">
D
dangqingqing 已提交
125
<img src="image/googlenet.jpeg" ><br/>
C
choijulie 已提交
126
Figure 8. GoogleNet[12]
D
dangqingqing 已提交
127 128
</p>

C
choijulie 已提交
129
The above model is the first version of GoogleNet or GoogelNet-v1. GoogleNet-v2 [14] introduced BN layer; GoogleNet-v3 [16] further split some convolutional layers, which increases non-linearity and network depth; GoogelNet-v4 [17] leads to the design idea of ResNet which will be introduced in the next section. The evolution from v1 to v4 improved the accuracy rate consistently. We will not go into details of the neural architectures of v2 to v4.
D
dangqingqing 已提交
130

D
dangqingqing 已提交
131 132
### ResNet

X
Xi Chen 已提交
133
Residual Network(ResNet)[15] won the 2015 championship on three ImageNet competitions -- image classification, object localization, and object detection. The main challenge in training deeper networks is that accuracy degrades with network depth. The authors of ResNet proposed a residual learning approach to ease the difficulty of training deeper networks. Based on the design ideas of BN, small convolutional kernels, full convolutional network, ResNets reformulate the layers as residual blocks, with each block containing two branches, one directly connecting input to the output, the other performing two to three convolutions and calculating the residual function with reference to the layer's inputs. The outputs of these two branches are then added up.
D
dangqingqing 已提交
134

C
choijulie 已提交
135
Figure 9 illustrates the ResNet architecture. To the left is the basic building block, it consists of two 3x3 convolutional layers of the same channels. To the right is a Bottleneck block. The bottleneck is a 1x1 convolutional layer used to reduce dimension from 256 to 64. The other 1x1 convolutional layer is used to increase dimension from 64 to 256. Thus, the number of input and output channels of the middle 3x3 convolutional layer is 64, which is relatively small.
D
dangqingqing 已提交
136 137

<p align="center">
T
Tao Luo 已提交
138
<img src="image/resnet_block.jpg" width="400"><br/>
C
choijulie 已提交
139
Figure 9. Residual block
D
dangqingqing 已提交
140 141
</p>

C
choijulie 已提交
142
Figure 10 illustrates ResNets with 50, 101, 152 layers, respectively. All three networks use bottleneck blocks of different numbers of repetitions. ResNet converges very fast and can be trained with hundreds or thousands of layers.
D
dangqingqing 已提交
143

D
dangqingqing 已提交
144 145
<p align="center">
<img src="image/resnet.png"><br/>
C
choijulie 已提交
146
Figure 10. ResNet model for ImageNet
D
dangqingqing 已提交
147
</p>
D
dangqingqing 已提交
148 149


C
choijulie 已提交
150
## Dataset
D
dangqingqing 已提交
151

C
choijulie 已提交
152
Commonly used public datasets for image classification are [CIFAR](https://www.cs.toronto.edu/~kriz/cifar.html), [ImageNet](http://image-net.org/), [COCO](http://mscoco.org/), etc. Those used for fine-grained image classification are [CUB-200-2011](http://www.vision.caltech.edu/visipedia/CUB-200-2011.html), [Stanford Dog](http://vision.stanford.edu/aditya86/ImageNetDogs/), [Oxford-flowers](http://www.robots.ox.ac.uk/~vgg/data/flowers/), etc. Among these, the ImageNet dataset is the largest. Most research results are reported on ImageNet as mentioned in the Model Overview section. Since 2010, the ImageNet dataset has gone through some changes. The commonly used ImageNet-2012 dataset contains 1000 categories. There are 1,281,167 training images, ranging from 732 to 1200 images per category, and 50,000 validation images with 50 images per category in average.
D
dangqingqing 已提交
153

C
choijulie 已提交
154
Since ImageNet is too large to be downloaded and trained efficiently, we use [CIFAR-10](https://www.cs.toronto.edu/~kriz/cifar.html) in this tutorial. The CIFAR-10 dataset consists of 60000 32x32 color images in 10 classes, with 6000 images per class. There are 50000 training images and 10000 test images. Figure 11 shows all the classes in CIFAR-10 as well as 10 images randomly sampled from each category.
D
dangqingqing 已提交
155 156

<p align="center">
D
dangqingqing 已提交
157
<img src="image/cifar.png" width="350"><br/>
C
choijulie 已提交
158
Figure 11. CIFAR10 dataset[21]
D
dangqingqing 已提交
159 160
</p>

C
choijulie 已提交
161
 `paddle.datasets` package encapsulates multiple public datasets, including `cifar`, `imdb`, `mnist`, `moivelens` and `wmt14`, etc. There's no need to manually download and preprocess CIFAR-10.
D
dangqingqing 已提交
162

X
Xi Chen 已提交
163
After running the command `python train.py`, training will start immediately. The following sections will describe in details.
D
dangqingqing 已提交
164

C
choijulie 已提交
165
## Model Structure
D
dangqingqing 已提交
166

C
choijulie 已提交
167
### Initialize PaddlePaddle
D
dangqingqing 已提交
168

C
choijulie 已提交
169
We must import and initialize PaddlePaddle (enable/disable GPU, set the number of trainers, etc).
D
dangqingqing 已提交
170 171

```python
L
liaogang 已提交
172 173 174 175
import sys
import paddle.v2 as paddle
from vgg import vgg_bn_drop
from resnet import resnet_cifar10
D
dangqingqing 已提交
176

L
liaogang 已提交
177
# PaddlePaddle init
L
liaogang 已提交
178
paddle.init(use_gpu=False, trainer_count=1)
D
dangqingqing 已提交
179
```
X
Xi Chen 已提交
180
Now we are going to walk you through the implementations of the VGG and ResNet.
D
dangqingqing 已提交
181

C
choijulie 已提交
182
### VGG
D
dangqingqing 已提交
183

X
Xi Chen 已提交
184
Let's start with the VGG model. Since the image size and amount of CIFAR10 are relatively small comparing to ImageNet, we use a small version of VGG network for CIFAR10. Convolution groups incorporate BN and dropout operations.
D
dangqingqing 已提交
185

C
choijulie 已提交
186
1. Define input data and its dimension
D
dangqingqing 已提交
187

C
choijulie 已提交
188
    The input to the network is defined as `paddle.layer.data`, or image pixels in the context of image classification. The images in CIFAR10 are 32x32 color images of three channels. Therefore, the size of the input data is 3072 (3x32x32), and the number of categories is 10.
189

190
    ```python
L
liaogang 已提交
191 192 193 194
    datadim = 3 * 32 * 32
    classdim = 10
    image = paddle.layer.data(
        name="image", type=paddle.data_type.dense_vector(datadim))
195
    ```
D
dangqingqing 已提交
196

C
choijulie 已提交
197
2. Define VGG main module
D
dangqingqing 已提交
198

199 200 201
    ```python
    net = vgg_bn_drop(image)
    ```
C
choijulie 已提交
202
    The input to VGG main module is from the data layer. `vgg_bn_drop` defines a 16-layer VGG network, with each convolutional layer followed by BN and dropout layers. Here is the definition in detail:
203

204
    ```python
L
liaogang 已提交
205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232
    def vgg_bn_drop(input):
        def conv_block(ipt, num_filter, groups, dropouts, num_channels=None):
            return paddle.networks.img_conv_group(
                input=ipt,
                num_channels=num_channels,
                pool_size=2,
                pool_stride=2,
                conv_num_filter=[num_filter] * groups,
                conv_filter_size=3,
                conv_act=paddle.activation.Relu(),
                conv_with_batchnorm=True,
                conv_batchnorm_drop_rate=dropouts,
                pool_type=paddle.pooling.Max())

        conv1 = conv_block(input, 64, 2, [0.3, 0], 3)
        conv2 = conv_block(conv1, 128, 2, [0.4, 0])
        conv3 = conv_block(conv2, 256, 3, [0.4, 0.4, 0])
        conv4 = conv_block(conv3, 512, 3, [0.4, 0.4, 0])
        conv5 = conv_block(conv4, 512, 3, [0.4, 0.4, 0])

        drop = paddle.layer.dropout(input=conv5, dropout_rate=0.5)
        fc1 = paddle.layer.fc(input=drop, size=512, act=paddle.activation.Linear())
        bn = paddle.layer.batch_norm(
            input=fc1,
            act=paddle.activation.Relu(),
            layer_attr=paddle.attr.Extra(drop_rate=0.5))
        fc2 = paddle.layer.fc(input=bn, size=512, act=paddle.activation.Linear())
        return fc2
233
    ```
234

X
Xi Chen 已提交
235
    2.1. Firstly, it defines a convolution block or conv_block. The default convolution kernel is 3x3, and the default pooling size is 2x2 with stride 2. Dropout specifies the probability in dropout operation. Function `img_conv_group` is defined in `paddle.networks` consisting of a series of `Conv->BN->ReLu->Dropout` and a `Pooling`.
236

C
choijulie 已提交
237
    2.2. Five groups of convolutions. The first two groups perform two convolutions, while the last three groups perform three convolutions. The dropout rate of the last convolution in each group is set to 0, which means there is no dropout for this layer.
238

C
choijulie 已提交
239
    2.3. The last two layers are fully-connected layers of dimension 512.
D
dangqingqing 已提交
240

C
choijulie 已提交
241
3. Define Classifier
D
dangqingqing 已提交
242

C
choijulie 已提交
243
    The above VGG network extracts high-level features and maps them to a vector of the same size as the categories. Softmax function or classifier is then used for calculating the probability of the image belonging to each category.
Y
Yu Yang 已提交
244

245
    ```python
L
liaogang 已提交
246 247 248
    out = paddle.layer.fc(input=net,
                          size=classdim,
                          act=paddle.activation.Softmax())
249
    ```
D
dangqingqing 已提交
250

C
choijulie 已提交
251
4. Define Loss Function and Outputs
D
dangqingqing 已提交
252

C
choijulie 已提交
253
    In the context of supervised learning, labels of training images are defined in `paddle.layer.data` as well. During training, the cross-entropy loss function is used and the loss is the output of the network. During testing, the outputs are the probabilities calculated in the classifier.
254

255
    ```python
L
liaogang 已提交
256 257 258
    lbl = paddle.layer.data(
        name="label", type=paddle.data_type.integer_value(classdim))
    cost = paddle.layer.classification_cost(input=out, label=lbl)
259
    ```
D
dangqingqing 已提交
260 261 262

### ResNet

X
Xi Chen 已提交
263
The first, third and fourth steps of a ResNet are the same as a VGG. The second step is the main module of ResNet.
D
dangqingqing 已提交
264 265

```python
H
hedaoyuan 已提交
266
net = resnet_cifar10(image, depth=56)
D
dangqingqing 已提交
267 268
```

C
choijulie 已提交
269
Here are some basic functions used in `resnet_cifar10`:
D
dangqingqing 已提交
270

C
choijulie 已提交
271 272 273 274 275 276
  - `conv_bn_layer` : convolutional layer followed by BN.
  - `shortcut` : the shortcut branch in a residual block. There are two kinds of shortcuts: 1x1 convolution used when the number of channels between input and output is different; direct connection used otherwise.

  - `basicblock` : a basic residual module as shown in the left of Figure 9, it consists of two sequential 3x3 convolutions and one "shortcut" branch.
  - `bottleneck` : a bottleneck module as shown in the right of Figure 9, it consists of two 1x1 convolutions with one 3x3 convolution in between branch and a "shortcut" branch.
  - `layer_warp` : a group of residual modules consisting of several stacking blocks. In each group, the sliding window size of the first residual block could be different from the rest of blocks, in order to reduce the size of feature maps along horizontal and vertical directions.
D
dangqingqing 已提交
277 278 279 280 281 282 283

```python
def conv_bn_layer(input,
                  ch_out,
                  filter_size,
                  stride,
                  padding,
L
liaogang 已提交
284
                  active_type=paddle.activation.Relu(),
D
dangqingqing 已提交
285
                  ch_in=None):
L
liaogang 已提交
286
    tmp = paddle.layer.img_conv(
D
dangqingqing 已提交
287 288 289 290 291 292
        input=input,
        filter_size=filter_size,
        num_channels=ch_in,
        num_filters=ch_out,
        stride=stride,
        padding=padding,
L
liaogang 已提交
293
        act=paddle.activation.Linear(),
D
dangqingqing 已提交
294
        bias_attr=False)
L
liaogang 已提交
295
    return paddle.layer.batch_norm(input=tmp, act=active_type)
D
dangqingqing 已提交
296 297 298

def shortcut(ipt, n_in, n_out, stride):
    if n_in != n_out:
L
liaogang 已提交
299 300
        return conv_bn_layer(ipt, n_out, 1, stride, 0,
                             paddle.activation.Linear())
D
dangqingqing 已提交
301 302 303 304
    else:
        return ipt

def basicblock(ipt, ch_out, stride):
L
liaogang 已提交
305
    ch_in = ch_out * 2
D
dangqingqing 已提交
306
    tmp = conv_bn_layer(ipt, ch_out, 3, stride, 1)
L
liaogang 已提交
307
    tmp = conv_bn_layer(tmp, ch_out, 3, 1, 1, paddle.activation.Linear())
D
dangqingqing 已提交
308
    short = shortcut(ipt, ch_in, ch_out, stride)
L
liaogang 已提交
309
    return paddle.layer.addto(input=[tmp, short], act=paddle.activation.Relu())
D
dangqingqing 已提交
310 311 312 313 314 315

def layer_warp(block_func, ipt, features, count, stride):
    tmp = block_func(ipt, features, stride)
    for i in range(1, count):
        tmp = block_func(tmp, features, 1)
    return tmp
D
dangqingqing 已提交
316 317
```

C
choijulie 已提交
318
The following are the components of `resnet_cifar10`:
D
dangqingqing 已提交
319

C
choijulie 已提交
320 321 322
1. The lowest level is `conv_bn_layer`.
2. The middle level consists of three `layer_warp`, each of which uses the left residual block in Figure 9.
3. The last level is average pooling layer.
D
dangqingqing 已提交
323

C
choijulie 已提交
324
Note: besides the first convolutional layer and the last fully-connected layer, the total number of layers in three `layer_warp` should be dividable by 6, that is the depth of `resnet_cifar10` should satisfy $(depth - 2) % 6 == 0$.
D
dangqingqing 已提交
325 326

```python
L
liaogang 已提交
327
def resnet_cifar10(ipt, depth=32):
D
dangqingqing 已提交
328 329
    # depth should be one of 20, 32, 44, 56, 110, 1202
    assert (depth - 2) % 6 == 0
D
dangqingqing 已提交
330 331
    n = (depth - 2) / 6
    nStages = {16, 64, 128}
L
liaogang 已提交
332 333
    conv1 = conv_bn_layer(
        ipt, ch_in=3, ch_out=16, filter_size=3, stride=1, padding=1)
D
dangqingqing 已提交
334 335 336
    res1 = layer_warp(basicblock, conv1, 16, n, 1)
    res2 = layer_warp(basicblock, res1, 32, n, 2)
    res3 = layer_warp(basicblock, res2, 64, n, 2)
L
liaogang 已提交
337 338
    pool = paddle.layer.img_pool(
        input=res3, pool_size=8, stride=1, pool_type=paddle.pooling.Avg())
D
dangqingqing 已提交
339
    return pool
D
dangqingqing 已提交
340 341
```

C
choijulie 已提交
342
## Model Training
L
liaogang 已提交
343

C
choijulie 已提交
344
### Define Parameters
L
liaogang 已提交
345

X
Xi Chen 已提交
346
Firstly, we create the model parameters according to the previous model configuration `cost`.
L
liaogang 已提交
347 348 349 350 351 352

```python
# Create parameters
parameters = paddle.parameters.create(cost)
```

C
choijulie 已提交
353
### Create Trainer
L
liaogang 已提交
354

C
choijulie 已提交
355 356
Before creating a training module, it is necessary to set the algorithm.
Here we specify `Momentum` optimization algorithm via `paddle.optimizer`.
D
dangqingqing 已提交
357

L
liaogang 已提交
358 359 360 361 362 363 364 365
```python
# Create optimizer
momentum_optimizer = paddle.optimizer.Momentum(
    momentum=0.9,
    regularization=paddle.optimizer.L2Regularization(rate=0.0002 * 128),
    learning_rate=0.1 / 128.0,
    learning_rate_decay_a=0.1,
    learning_rate_decay_b=50000 * 100,
Q
qingqing01 已提交
366
    learning_rate_schedule='discexp')
L
liaogang 已提交
367 368 369 370

# Create trainer
trainer = paddle.trainer.SGD(cost=cost,
                             parameters=parameters,
L
liaogang 已提交
371
                             update_equation=momentum_optimizer)
D
dangqingqing 已提交
372 373
```

C
choijulie 已提交
374
The learning rate adjustment policy can be defined with variables `learning_rate_decay_a`($a$), `learning_rate_decay_b`($b$) and `learning_rate_schedule`. In this example, discrete exponential method is used for adjusting learning rate. The formula is as follows,
L
liaogang 已提交
375
$$  lr = lr_{0} * a^ {\lfloor \frac{n}{ b}\rfloor} $$
C
choijulie 已提交
376
where $n$ is the number of processed samples, $lr_{0}$ is the learning_rate.
L
liaogang 已提交
377

C
choijulie 已提交
378
### Training
L
liaogang 已提交
379

C
choijulie 已提交
380
`cifar.train10()` will yield records during each pass, after shuffling, a batch input is generated for training.
L
liaogang 已提交
381 382

```python
H
hedaoyuan 已提交
383
reader=paddle.batch(
L
liaogang 已提交
384 385 386 387 388
    paddle.reader.shuffle(
        paddle.dataset.cifar.train10(), buf_size=50000),
        batch_size=128)
```

C
choijulie 已提交
389 390
`feeding` is devoted to specifying the correspondence between each yield record and `paddle.layer.data`. For instance,
 the first column of data generated by `cifar.train10()` corresponds to image layer's feature.
L
liaogang 已提交
391 392

```python
L
liaogang 已提交
393 394
feeding={'image': 0,
         'label': 1}
L
liaogang 已提交
395 396
```

C
choijulie 已提交
397
Callback function `event_handler` will be called during training when a pre-defined event happens.
L
liaogang 已提交
398

C
choijulie 已提交
399
`event_handler_plot`is used to plot a figure like below:
400 401 402 403 404 405 406 407 408 409 410 411 412 413 414 415 416 417 418 419 420 421 422 423 424 425

![png](./image/train_and_test.png)

```python
from paddle.v2.plot import Ploter

train_title = "Train cost"
test_title = "Test cost"
cost_ploter = Ploter(train_title, test_title)

step = 0
def event_handler_plot(event):
    global step
    if isinstance(event, paddle.event.EndIteration):
        if step % 1 == 0:
            cost_ploter.append(train_title, step, event.cost)
            cost_ploter.plot()
        step += 1
    if isinstance(event, paddle.event.EndPass):
        result = trainer.test(
            reader=paddle.batch(
                paddle.dataset.cifar.test10(), batch_size=128),
            feeding=feeding)
        cost_ploter.append(test_title, step, result.cost)
```

C
choijulie 已提交
426
`event_handler` is used to plot some text data when training.
427

L
liaogang 已提交
428
```python
C
choijulie 已提交
429
# event handler to track training and testing process
L
liaogang 已提交
430 431 432 433 434 435 436 437 438
def event_handler(event):
    if isinstance(event, paddle.event.EndIteration):
        if event.batch_id % 100 == 0:
            print "\nPass %d, Batch %d, Cost %f, %s" % (
                event.pass_id, event.batch_id, event.cost, event.metrics)
        else:
            sys.stdout.write('.')
            sys.stdout.flush()
    if isinstance(event, paddle.event.EndPass):
Q
qingqing01 已提交
439
        # save parameters
440
        with open('params_pass_%d.tar' % event.pass_id, 'w') as f:
Q
qingqing01 已提交
441 442
            parameters.to_tar(f)

L
liaogang 已提交
443
        result = trainer.test(
L
liaogang 已提交
444
            reader=paddle.batch(
L
liaogang 已提交
445
                paddle.dataset.cifar.test10(), batch_size=128),
L
liaogang 已提交
446
            feeding=feeding)
L
liaogang 已提交
447
        print "\nTest with Pass %d, %s" % (event.pass_id, result.metrics)
L
liaogang 已提交
448
```
L
liaogang 已提交
449

C
choijulie 已提交
450
Finally, we can invoke `trainer.train` to start training:
L
liaogang 已提交
451 452

```python
L
liaogang 已提交
453
trainer.train(
L
liaogang 已提交
454
    reader=reader,
L
liaogang 已提交
455
    num_passes=200,
456
    event_handler=event_handler_plot,
L
liaogang 已提交
457
    feeding=feeding)
D
dangqingqing 已提交
458 459
```

C
choijulie 已提交
460
Here is an example log after training for one pass. The average error rates are 0.6875 on the training set and 0.8852 on the validation set.
D
dangqingqing 已提交
461 462

```text
L
liaogang 已提交
463 464 465 466 467 468 469 470 471
Pass 0, Batch 0, Cost 2.473182, {'classification_error_evaluator': 0.9140625}
...................................................................................................
Pass 0, Batch 100, Cost 1.913076, {'classification_error_evaluator': 0.78125}
...................................................................................................
Pass 0, Batch 200, Cost 1.783041, {'classification_error_evaluator': 0.7421875}
...................................................................................................
Pass 0, Batch 300, Cost 1.668833, {'classification_error_evaluator': 0.6875}
..........................................................................................
Test with Pass 0, {'classification_error_evaluator': 0.885200023651123}
D
dangqingqing 已提交
472 473
```

C
choijulie 已提交
474
Figure 12 shows the curve of training error rate, which indicates it converges at Pass 200 with error rate 8.54%.
D
dangqingqing 已提交
475
<p align="center">
C
choijulie 已提交
476 477
<img src="image/plot_en.png" width="400" ><br/>
Figure 12. The error rate of VGG model on CIFAR10
D
dangqingqing 已提交
478
</p>
D
dangqingqing 已提交
479

480

C
choijulie 已提交
481 482 483

## Application

X
Xi Chen 已提交
484
After training is completed, users can use the trained model to classify images. The following code shows how to infer through `paddle.infer` interface. You can uncomment some lines from below to change the model name.
485 486 487 488

```python
from PIL import Image
import numpy as np
L
liaogang 已提交
489
import os
490 491 492
def load_image(file):
    im = Image.open(file)
    im = im.resize((32, 32), Image.ANTIALIAS)
Q
qingqing01 已提交
493
    im = np.array(im).astype(np.float32)
C
choijulie 已提交
494 495 496
    # The storage order of the loaded image is W(widht),
    # H(height), C(channel). PaddlePaddle requires
    # the CHW order, so transpose them.
Q
qingqing01 已提交
497
    im = im.transpose((2, 0, 1)) # CHW
C
choijulie 已提交
498 499 500
    # In the training phase, the channel order of CIFAR
    # image is B(Blue), G(green), R(Red). But PIL open
    # image in RGB mode. It must swap the channel order.
Q
qingqing01 已提交
501 502
    im = im[(2, 1, 0),:,:] # BGR
    im = im.flatten()
503 504 505
    im = im / 255.0
    return im
test_data = []
C
chengduoZH 已提交
506
cur_dir = os.getcwd()
L
livc 已提交
507
test_data.append((load_image(cur_dir + '/image/dog.png'),))
508

C
choijulie 已提交
509
# users can remove the comments and change the model name
510
# with open('params_pass_50.tar', 'r') as f:
Q
qingqing01 已提交
511 512
#    parameters = paddle.parameters.Parameters.from_tar(f)

513 514 515
probs = paddle.infer(
    output_layer=out, parameters=parameters, input=test_data)
lab = np.argsort(-probs) # probs and lab are the results of one batch data
Q
qingqing01 已提交
516
print "Label of image/dog.png is: %d" % lab[0][0]
517 518
```

D
dangqingqing 已提交
519

C
choijulie 已提交
520
## Conclusion
D
dangqingqing 已提交
521

X
Xi Chen 已提交
522
Traditional image classification methods involve multiple stages of processing, which has to utilize complex frameworks. Contrarily, CNN models can be trained end-to-end with a significant increase in classification accuracy. In this chapter, we introduced three models -- VGG, GoogleNet, ResNet and provided PaddlePaddle config files for training VGG and ResNet on CIFAR10. We also explained how to perform prediction and feature extraction using the PaddlePaddle API. For other datasets such as ImageNet, the procedure for config and training are the same and you are welcome to give it a try.
D
dangqingqing 已提交
523

D
dangqingqing 已提交
524

C
choijulie 已提交
525
## Reference
D
dangqingqing 已提交
526

D
dangqingqing 已提交
527 528 529 530
[1] D. G. Lowe, [Distinctive image features from scale-invariant keypoints](http://www.cs.ubc.ca/~lowe/papers/ijcv04.pdf). IJCV, 60(2):91-110, 2004.

[2] N. Dalal, B. Triggs, [Histograms of Oriented Gradients for Human Detection](http://vision.stanford.edu/teaching/cs231b_spring1213/papers/CVPR05_DalalTriggs.pdf), Proc. IEEE Conf. Computer Vision and Pattern Recognition, 2005.

531
[3] Ahonen, T., Hadid, A., and Pietikinen, M. (2006). [Face description with local binary patterns: Application to face recognition](http://ieeexplore.ieee.org/document/1717463/). PAMI, 28.
D
dangqingqing 已提交
532

D
dangqingqing 已提交
533
[4] J. Sivic, A. Zisserman, [Video Google: A Text Retrieval Approach to Object Matching in Videos](http://www.robots.ox.ac.uk/~vgg/publications/papers/sivic03.pdf), Proc. Ninth Int'l Conf. Computer Vision, pp. 1470-1478, 2003.
D
dangqingqing 已提交
534

D
dangqingqing 已提交
535
[5] B. Olshausen, D. Field, [Sparse Coding with an Overcomplete Basis Set: A Strategy Employed by V1?](http://redwood.psych.cornell.edu/papers/olshausen_field_1997.pdf), Vision Research, vol. 37, pp. 3311-3325, 1997.
D
dangqingqing 已提交
536

D
dangqingqing 已提交
537
[6] Wang, J., Yang, J., Yu, K., Lv, F., Huang, T., and Gong, Y. (2010). [Locality-constrained Linear Coding for image classification](http://ieeexplore.ieee.org/abstract/document/5540018/). In CVPR.
D
dangqingqing 已提交
538

D
dangqingqing 已提交
539
[7] Perronnin, F., Sánchez, J., & Mensink, T. (2010). [Improving the fisher kernel for large-scale image classification](http://dl.acm.org/citation.cfm?id=1888101). In ECCV (4).
D
dangqingqing 已提交
540

D
dangqingqing 已提交
541
[8] Lin, Y., Lv, F., Cao, L., Zhu, S., Yang, M., Cour, T., Yu, K., and Huang, T. (2011). [Large-scale image clas- sification: Fast feature extraction and SVM training](http://ieeexplore.ieee.org/document/5995477/). In CVPR.
D
dangqingqing 已提交
542

D
dangqingqing 已提交
543
[9] Krizhevsky, A., Sutskever, I., and Hinton, G. (2012). [ImageNet classification with deep convolutional neu- ral networks](http://www.cs.toronto.edu/~kriz/imagenet_classification_with_deep_convolutional.pdf). In NIPS.
D
dangqingqing 已提交
544

D
dangqingqing 已提交
545
[10] G.E. Hinton, N. Srivastava, A. Krizhevsky, I. Sutskever, and R.R. Salakhutdinov. [Improving neural networks by preventing co-adaptation of feature detectors](https://arxiv.org/abs/1207.0580). arXiv preprint arXiv:1207.0580, 2012.
D
dangqingqing 已提交
546

D
dangqingqing 已提交
547
[11] K. Chatfield, K. Simonyan, A. Vedaldi, A. Zisserman. [Return of the Devil in the Details: Delving Deep into Convolutional Nets](https://arxiv.org/abs/1405.3531). BMVC, 2014。
D
dangqingqing 已提交
548

D
dangqingqing 已提交
549
[12] Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D., Erhan, D., Vanhoucke, V., Rabinovich, A., [Going deeper with convolutions](https://arxiv.org/abs/1409.4842). In: CVPR. (2015)
D
dangqingqing 已提交
550

D
dangqingqing 已提交
551
[13] Lin, M., Chen, Q., and Yan, S. [Network in network](https://arxiv.org/abs/1312.4400). In Proc. ICLR, 2014.
D
dangqingqing 已提交
552

D
dangqingqing 已提交
553
[14] S. Ioffe and C. Szegedy. [Batch normalization: Accelerating deep network training by reducing internal covariate shift](https://arxiv.org/abs/1502.03167). In ICML, 2015.
D
dangqingqing 已提交
554

D
dangqingqing 已提交
555
[15] K. He, X. Zhang, S. Ren, J. Sun. [Deep Residual Learning for Image Recognition](https://arxiv.org/abs/1512.03385). CVPR 2016.
D
dangqingqing 已提交
556

D
dangqingqing 已提交
557
[16] Szegedy, C., Vanhoucke, V., Ioffe, S., Shlens, J., Wojna, Z. [Rethinking the incep-tion architecture for computer vision](https://arxiv.org/abs/1512.00567). In: CVPR. (2016).
D
dangqingqing 已提交
558

D
dangqingqing 已提交
559
[17] Szegedy, C., Ioffe, S., Vanhoucke, V. [Inception-v4, inception-resnet and the impact of residual connections on learning](https://arxiv.org/abs/1602.07261). arXiv:1602.07261 (2016).
D
dangqingqing 已提交
560

D
dangqingqing 已提交
561
[18] Everingham, M., Eslami, S. M. A., Van Gool, L., Williams, C. K. I., Winn, J. and Zisserman, A. [The Pascal Visual Object Classes Challenge: A Retrospective]((http://link.springer.com/article/10.1007/s11263-014-0733-5)). International Journal of Computer Vision, 111(1), 98-136, 2015.
D
dangqingqing 已提交
562

D
dangqingqing 已提交
563
[19] He, K., Zhang, X., Ren, S., and Sun, J. [Delving Deep into Rectifiers: Surpassing Human-Level Performance on ImageNet Classification](https://arxiv.org/abs/1502.01852). ArXiv e-prints, February 2015.
D
dangqingqing 已提交
564 565 566 567 568 569

[20] http://deeplearning.net/tutorial/lenet.html

[21] https://www.cs.toronto.edu/~kriz/cifar.html

[22] http://cs231n.github.io/classification/
L
Luo Tao 已提交
570 571

<br/>
L
Luo Tao 已提交
572
This tutorial is contributed by <a xmlns:cc="http://creativecommons.org/ns#" href="http://book.paddlepaddle.org" property="cc:attributionName" rel="cc:attributionURL">PaddlePaddle</a>, and licensed under a <a rel="license" href="http://creativecommons.org/licenses/by-sa/4.0/">Creative Commons Attribution-ShareAlike 4.0 International License</a>.