【深度学习系列】用PaddlePaddle和Tensorflow实现经典CNN网络Vgg

  上周我们讲了经典CNN网络AlexNet对图像分类的效果,2014年,在AlexNet出来的两年后,牛津大学提出了Vgg网络,并在ILSVRC 2014中的classification项目的比赛中取得了第2名的成绩(第一名是GoogLeNet,也是同年提出的)。在论文《Very Deep Convolutional Networks for Large-Scale Image Recognition》中,作者提出通过缩小卷积核大小来构建更深的网络。



Vgg网络结构

  VGGnet是Oxford的Visual Geometry Group的team,在ILSVRC 2014上的主要工作是证明了增加网络的深度能够在一定程度上影响网络最终的性能,如下图,文章通过逐步增加网络深度来提高性能,虽然看起来有一点小暴力,没有特别多取巧的,但是确实有效,很多pretrained的方法就是使用VGG的model(主要是16和19),VGG相对其他的方法,参数空间很大,所以train一个vgg模型通常要花费更长的时间,不过公开的pretrained model让我们很方便的使用,paper中的几种模型如下:

图1 vgg网络结构

  图中D和E分别为VGG-16和VGG-19,参数分别是138m和144m,是文中两个效果最好的网络结构,VGG网络结构可以看做是AlexNet的加深版,VGG在图像检测中效果很好(如:Faster-RCNN),这种传统结构相对较好的保存了图片的局部位置信息(不像GoogLeNet中引入Inception可能导致位置信息的错乱)。

  我们来仔细看一下vgg16的网络结构:

                      图2 vgg16网络结构                         

  从图中可以看到,每个卷积层都使用更小的3×3卷积核对图像进行卷积,并把这些小的卷积核排列起来作为一个卷积序列。通俗点来讲就是对原始图像进行3×3卷积,然后再进行3×3卷积,连续使用小的卷积核对图像进行多次卷积。

  在alexnet里我们一开始的时候是用11*11的大卷积核网络,为什么在这里要用3*3的小卷积核来对图像进行卷积呢?并且还是使用连续的小卷积核?VGG一开始提出的时候刚好与LeNet的设计原则相违背,因为LeNet相信大的卷积核能够捕获图像当中相似的特征(权值共享)。AlexNet在浅层网络开始的时候也是使用9×9、11×11卷积核,并且尽量在浅层网络的时候避免使用1×1的卷积核。但是VGG的神奇之处就是在于使用多个3×3卷积核可以模仿较大卷积核那样对图像进行局部感知。后来多个小的卷积核串联这一思想被GoogleNet和ResNet等吸收。

  从图1的实验结果也可以看到,VGG使用多个3x3卷积来对高维特征进行提取。因为如果使用较大的卷积核,参数就会大量地增加、运算时间也会成倍的提升。例如3x3的卷积核只有9个权值参数,使用7*7的卷积核权值参数就会增加到49个。因为缺乏一个模型去对大量的参数进行归一化、约减,或者说是限制大规模的参数出现,因此训练核数更大的卷积网络就变得非常困难了。

  VGG相信如果使用大的卷积核将会造成很大的时间浪费,减少的卷积核能够减少参数,节省运算开销。虽然训练的时间变长了,但是总体来说预测的时间和参数都是减少的了。



 Vgg的优势

  与AlexNet相比:

  • 相同点

    • 整体结构分五层;
    • 除softmax层外,最后几层为全连接层;
    • 五层之间通过max pooling连接。
  • 不同点
    • 使用3×3的小卷积核代替7×7大卷积核,网络构建的比较深;
    • 由于LRN太耗费计算资源,性价比不高,所以被去掉;
    • 采用了更多的feature map,能够提取更多的特征,从而能够做更多特征的组合。  


用PaddlePaddle实现Vgg

  1.网络结构

 1 #coding:utf-8
 2 ‘‘‘
 3 Created by huxiaoman 2017.12.12
 4 vggnet.py:用vgg网络实现cifar-10分类
 5 ‘‘‘
 6
 7 import paddle.v2 as paddle
 8
 9 def vgg(input):
10     def conv_block(ipt, num_filter, groups, dropouts, num_channels=None):
11         return paddle.networks.img_conv_group(
12             input=ipt,
13             num_channels=num_channels,
14             pool_size=2,
15             pool_stride=2,
16             conv_num_filter=[num_filter] * groups,
17             conv_filter_size=3,
18             conv_act=paddle.activation.Relu(),
19             conv_with_batchnorm=True,
20             conv_batchnorm_drop_rate=dropouts,
21             pool_type=paddle.pooling.Max())
22
23     conv1 = conv_block(input, 64, 2, [0.3, 0], 3)
24     conv2 = conv_block(conv1, 128, 2, [0.4, 0])
25     conv3 = conv_block(conv2, 256, 3, [0.4, 0.4, 0])
26     conv4 = conv_block(conv3, 512, 3, [0.4, 0.4, 0])
27     conv5 = conv_block(conv4, 512, 3, [0.4, 0.4, 0])
28
29     drop = paddle.layer.dropout(input=conv5, dropout_rate=0.5)
30     fc1 = paddle.layer.fc(input=drop, size=512, act=paddle.activation.Linear())
31     bn = paddle.layer.batch_norm(
32         input=fc1,
33         act=paddle.activation.Relu(),
34         layer_attr=paddle.attr.Extra(drop_rate=0.5))
35     fc2 = paddle.layer.fc(input=bn, size=512, act=paddle.activation.Linear())
36     return fc2

  2.训练模型

  1 #coding:utf-8
  2 ‘‘‘
  3 Created by huxiaoman 2017.12.12
  4 train_vgg.py:训练vgg16对cifar10数据集进行分类
  5 ‘‘‘
  6
  7 import sys, os
  8 import paddle.v2 as paddle
  9 from vggnet import vgg
 10
 11 with_gpu = os.getenv(‘WITH_GPU‘, ‘0‘) != ‘1‘
 12
 13 def main():
 14     datadim = 3 * 32 * 32
 15     classdim = 10
 16
 17     # PaddlePaddle init
 18     paddle.init(use_gpu=with_gpu, trainer_count=8)
 19
 20     image = paddle.layer.data(
 21         name="image", type=paddle.data_type.dense_vector(datadim))
 22
 23     net = vgg(image)
 24
 25     out = paddle.layer.fc(
 26         input=net, size=classdim, act=paddle.activation.Softmax())
 27
 28     lbl = paddle.layer.data(
 29         name="label", type=paddle.data_type.integer_value(classdim))
 30     cost = paddle.layer.classification_cost(input=out, label=lbl)
 31
 32     # Create parameters
 33     parameters = paddle.parameters.create(cost)
 34
 35     # Create optimizer
 36     momentum_optimizer = paddle.optimizer.Momentum(
 37         momentum=0.9,
 38         regularization=paddle.optimizer.L2Regularization(rate=0.0002 * 128),
 39         learning_rate=0.1 / 128.0,
 40         learning_rate_decay_a=0.1,
 41         learning_rate_decay_b=50000 * 100,
 42         learning_rate_schedule=‘discexp‘)
 43
 44     # End batch and end pass event handler
 45     def event_handler(event):
 46         if isinstance(event, paddle.event.EndIteration):
 47             if event.batch_id % 100 == 0:
 48                 print "\nPass %d, Batch %d, Cost %f, %s" % (
 49                     event.pass_id, event.batch_id, event.cost, event.metrics)
 50             else:
 51                 sys.stdout.write(‘.‘)
 52                 sys.stdout.flush()
 53         if isinstance(event, paddle.event.EndPass):
 54             # save parameters
 55             with open(‘params_pass_%d.tar‘ % event.pass_id, ‘w‘) as f:
 56                 parameters.to_tar(f)
 57
 58             result = trainer.test(
 59                 reader=paddle.batch(
 60                     paddle.dataset.cifar.test10(), batch_size=128),
 61                 feeding={‘image‘: 0,
 62                          ‘label‘: 1})
 63             print "\nTest with Pass %d, %s" % (event.pass_id, result.metrics)
 64
 65     # Create trainer
 66     trainer = paddle.trainer.SGD(
 67         cost=cost, parameters=parameters, update_equation=momentum_optimizer)
 68
 69     # Save the inference topology to protobuf.
 70     inference_topology = paddle.topology.Topology(layers=out)
 71     with open("inference_topology.pkl", ‘wb‘) as f:
 72         inference_topology.serialize_for_inference(f)
 73
 74     trainer.train(
 75         reader=paddle.batch(
 76             paddle.reader.shuffle(
 77                 paddle.dataset.cifar.train10(), buf_size=50000),
 78             batch_size=128),
 79         num_passes=200,
 80         event_handler=event_handler,
 81         feeding={‘image‘: 0,
 82                  ‘label‘: 1})
 83
 84     # inference
 85     from PIL import Image
 86     import numpy as np
 87     import os
 88
 89     def load_image(file):
 90         im = Image.open(file)
 91         im = im.resize((32, 32), Image.ANTIALIAS)
 92         im = np.array(im).astype(np.float32)
 93         im = im.transpose((2, 0, 1))  # CHW
 94         im = im[(2, 1, 0), :, :]  # BGR
 95         im = im.flatten()
 96         im = im / 255.0
 97         return im
 98
 99     test_data = []
100     cur_dir = os.path.dirname(os.path.realpath(__file__))
101     test_data.append((load_image(cur_dir + ‘/image/dog.png‘), ))
102
103     probs = paddle.infer(
104         output_layer=out, parameters=parameters, input=test_data)
105     lab = np.argsort(-probs)  # probs and lab are the results of one batch data
106     print "Label of image/dog.png is: %d" % lab[0][0]
107
108
109 if __name__ == ‘__main__‘:
110     main()

  3.训练结果

 1 nohup: ignoring input
 2 I1127 09:36:58.313799 13026 Util.cpp:166] commandline:  --use_gpu=True --trainer_count=7
 3 [INFO 2017-11-27 09:37:04,477 layers.py:2539] output for __conv_0__: c = 64, h = 32, w = 32, size = 65536
 4 [INFO 2017-11-27 09:37:04,478 layers.py:3062] output for __batch_norm_0__: c = 64, h = 32, w = 32, size = 65536
 5 [INFO 2017-11-27 09:37:04,479 layers.py:2539] output for __conv_1__: c = 64, h = 32, w = 32, size = 65536
 6 [INFO 2017-11-27 09:37:04,480 layers.py:3062] output for __batch_norm_1__: c = 64, h = 32, w = 32, size = 65536
 7 [INFO 2017-11-27 09:37:04,480 layers.py:2667] output for __pool_0__: c = 64, h = 16, w = 16, size = 16384
 8 [INFO 2017-11-27 09:37:04,481 layers.py:2539] output for __conv_2__: c = 128, h = 16, w = 16, size = 32768
 9 [INFO 2017-11-27 09:37:04,482 layers.py:3062] output for __batch_norm_2__: c = 128, h = 16, w = 16, size = 32768
10 [INFO 2017-11-27 09:37:04,483 layers.py:2539] output for __conv_3__: c = 128, h = 16, w = 16, size = 32768
11 [INFO 2017-11-27 09:37:04,484 layers.py:3062] output for __batch_norm_3__: c = 128, h = 16, w = 16, size = 32768
12 [INFO 2017-11-27 09:37:04,485 layers.py:2667] output for __pool_1__: c = 128, h = 8, w = 8, size = 8192
13 [INFO 2017-11-27 09:37:04,485 layers.py:2539] output for __conv_4__: c = 256, h = 8, w = 8, size = 16384
14 [INFO 2017-11-27 09:37:04,486 layers.py:3062] output for __batch_norm_4__: c = 256, h = 8, w = 8, size = 16384
15 [INFO 2017-11-27 09:37:04,487 layers.py:2539] output for __conv_5__: c = 256, h = 8, w = 8, size = 16384
16 [INFO 2017-11-27 09:37:04,488 layers.py:3062] output for __batch_norm_5__: c = 256, h = 8, w = 8, size = 16384
17 [INFO 2017-11-27 09:37:04,489 layers.py:2539] output for __conv_6__: c = 256, h = 8, w = 8, size = 16384
18 [INFO 2017-11-27 09:37:04,490 layers.py:3062] output for __batch_norm_6__: c = 256, h = 8, w = 8, size = 16384
19 [INFO 2017-11-27 09:37:04,490 layers.py:2667] output for __pool_2__: c = 256, h = 4, w = 4, size = 4096
20 [INFO 2017-11-27 09:37:04,491 layers.py:2539] output for __conv_7__: c = 512, h = 4, w = 4, size = 8192
21 [INFO 2017-11-27 09:37:04,492 layers.py:3062] output for __batch_norm_7__: c = 512, h = 4, w = 4, size = 8192
22 [INFO 2017-11-27 09:37:04,493 layers.py:2539] output for __conv_8__: c = 512, h = 4, w = 4, size = 8192
23 [INFO 2017-11-27 09:37:04,494 layers.py:3062] output for __batch_norm_8__: c = 512, h = 4, w = 4, size = 8192
24 [INFO 2017-11-27 09:37:04,495 layers.py:2539] output for __conv_9__: c = 512, h = 4, w = 4, size = 8192
25 [INFO 2017-11-27 09:37:04,495 layers.py:3062] output for __batch_norm_9__: c = 512, h = 4, w = 4, size = 8192
26 [INFO 2017-11-27 09:37:04,496 layers.py:2667] output for __pool_3__: c = 512, h = 2, w = 2, size = 2048
27 [INFO 2017-11-27 09:37:04,497 layers.py:2539] output for __conv_10__: c = 512, h = 2, w = 2, size = 2048
28 [INFO 2017-11-27 09:37:04,498 layers.py:3062] output for __batch_norm_10__: c = 512, h = 2, w = 2, size = 2048
29 [INFO 2017-11-27 09:37:04,499 layers.py:2539] output for __conv_11__: c = 512, h = 2, w = 2, size = 2048
30 [INFO 2017-11-27 09:37:04,499 layers.py:3062] output for __batch_norm_11__: c = 512, h = 2, w = 2, size = 2048
31 [INFO 2017-11-27 09:37:04,502 layers.py:2539] output for __conv_12__: c = 512, h = 2, w = 2, size = 2048
32 [INFO 2017-11-27 09:37:04,502 layers.py:3062] output for __batch_norm_12__: c = 512, h = 2, w = 2, size = 2048
33 [INFO 2017-11-27 09:37:04,503 layers.py:2667] output for __pool_4__: c = 512, h = 1, w = 1, size = 512
34 I1127 09:37:04.563228 13026 MultiGradientMachine.cpp:99] numLogicalDevices=1 numThreads=7 numDevices=8
35 I1127 09:37:04.822993 13026 GradientMachine.cpp:85] Initing parameters..
36 I1127 09:37:05.728123 13026 GradientMachine.cpp:92] Init parameters done.
37
38 Pass 0, Batch 0, Cost 2.407296, {‘classification_error_evaluator‘: 0.8828125}
39 ...................................................................................................
40 Pass 0, Batch 100, Cost 1.994910, {‘classification_error_evaluator‘: 0.84375}
41 ...................................................................................................
42 Pass 0, Batch 200, Cost 2.199248, {‘classification_error_evaluator‘: 0.8671875}
43 ...................................................................................................
44 Pass 0, Batch 300, Cost 1.982006, {‘classification_error_evaluator‘: 0.8125}
45 ..........................................................................................
46 Test with Pass 0, {‘classification_error_evaluator‘: 0.8999999761581421}
47
48 ```
49 ```
50 Pass 199, Batch 0, Cost 0.012132, {‘classification_error_evaluator‘: 0.0}
51 ...................................................................................................
52 Pass 199, Batch 100, Cost 0.021121, {‘classification_error_evaluator‘: 0.0078125}
53 ...................................................................................................
54 Pass 199, Batch 200, Cost 0.068369, {‘classification_error_evaluator‘: 0.0078125}
55 ...................................................................................................
56 Pass 199, Batch 300, Cost 0.015805, {‘classification_error_evaluator‘: 0.0}
57 ..........................................................................................I1128 01:57:44.727157 13026 MultiGradientMachine.cpp:99] numLogicalDevices=1 numThreads=7 numDevices=8
58
59 Test with Pass 199, {‘classification_error_evaluator‘: 0.10890000313520432}
60 Label of image/dog.png is: 5

  从训练结果来看,开了7个线程,8个Tesla K80,迭代200次,耗时16h21min,相比于之前训练的lenet和alexnet的几个小时来说,时间消耗很高,但是结果很好,准确率是89.11%,在同设备和迭代次数情况下,比lenet的和alexnet的精度都要高。



用Tensorflow实现vgg

  1.网络结构

 1 def inference_op(input_op, keep_prob):
 2     p = []
 3     # 第一块 conv1_1-conv1_2-pool1
 4     conv1_1 = conv_op(input_op, name=‘conv1_1‘, kh=3, kw=3,
 5                 n_out = 64, dh = 1, dw = 1, p = p)
 6     conv1_2 = conv_op(conv1_1, name=‘conv1_2‘, kh=3, kw=3,
 7                 n_out = 64, dh = 1, dw = 1, p = p)
 8     pool1 = mpool_op(conv1_2, name = ‘pool1‘, kh = 2, kw = 2,
 9                 dw = 2, dh = 2)
10     # 第二块 conv2_1-conv2_2-pool2
11     conv2_1 = conv_op(pool1, name=‘conv2_1‘, kh=3, kw=3,
12                 n_out = 128, dh = 1, dw = 1, p = p)
13     conv2_2 = conv_op(conv2_1, name=‘conv2_2‘, kh=3, kw=3,
14                 n_out = 128, dh = 1, dw = 1, p = p)
15     pool2 = mpool_op(conv2_2, name = ‘pool2‘, kh = 2, kw = 2,
16                 dw = 2, dh = 2)
17     # 第三块 conv3_1-conv3_2-conv3_3-pool3
18     conv3_1 = conv_op(pool2, name=‘conv3_1‘, kh=3, kw=3,
19                 n_out = 256, dh = 1, dw = 1, p = p)
20     conv3_2 = conv_op(conv3_1, name=‘conv3_2‘, kh=3, kw=3,
21                 n_out = 256, dh = 1, dw = 1, p = p)
22     conv3_3 = conv_op(conv3_2, name=‘conv3_3‘, kh=3, kw=3,
23                 n_out = 256, dh = 1, dw = 1, p = p)
24     pool3 = mpool_op(conv3_3, name = ‘pool3‘, kh = 2, kw = 2,
25                 dw = 2, dh = 2)
26     # 第四块 conv4_1-conv4_2-conv4_3-pool4
27     conv4_1 = conv_op(pool3, name=‘conv4_1‘, kh=3, kw=3,
28                 n_out = 512, dh = 1, dw = 1, p = p)
29     conv4_2 = conv_op(conv4_1, name=‘conv4_2‘, kh=3, kw=3,
30                 n_out = 512, dh = 1, dw = 1, p = p)
31     conv4_3 = conv_op(conv4_2, name=‘conv4_3‘, kh=3, kw=3,
32                 n_out = 512, dh = 1, dw = 1, p = p)
33     pool4 = mpool_op(conv4_3, name = ‘pool4‘, kh = 2, kw = 2,
34                 dw = 2, dh = 2)
35     # 第五块 conv5_1-conv5_2-conv5_3-pool5
36     conv5_1 = conv_op(pool4, name=‘conv5_1‘, kh=3, kw=3,
37                 n_out = 512, dh = 1, dw = 1, p = p)
38     conv5_2 = conv_op(conv5_1, name=‘conv5_2‘, kh=3, kw=3,
39                 n_out = 512, dh = 1, dw = 1, p = p)
40     conv5_3 = conv_op(conv5_2, name=‘conv5_3‘, kh=3, kw=3,
41                 n_out = 512, dh = 1, dw = 1, p = p)
42     pool5 = mpool_op(conv5_3, name = ‘pool5‘, kh = 2, kw = 2,
43                 dw = 2, dh = 2)
44     # 把pool5 ( [7, 7, 512] )  拉成向量
45     shp  = pool5.get_shape()
46     flattened_shape = shp[1].value * shp[2].value * shp[3].value
47     resh1 = tf.reshape(pool5, [-1, flattened_shape], name = ‘resh1‘)
48
49     # 全连接层1 添加了 Droput来防止过拟合
50     fc1 = fc_op(resh1, name = ‘fc1‘, n_out = 2048, p = p)
51     fc1_drop = tf.nn.dropout(fc1, keep_prob, name = ‘fc1_drop‘)
52
53     # 全连接层2 添加了 Droput来防止过拟合
54     fc2 = fc_op(fc1_drop, name = ‘fc2‘, n_out = 2048, p = p)
55     fc2_drop = tf.nn.dropout(fc2, keep_prob, name = ‘fc2_drop‘)
56
57     # 全连接层3 加一个softmax求给类别的概率
58     fc3 = fc_op(fc2_drop, name = ‘fc3‘, n_out = 1000, p = p)
59     softmax = tf.nn.softmax(fc3)
60     predictions = tf.argmax(softmax, 1)
61     return predictions, softmax, fc3, p

  2.训练网络结构

  1 # -*- coding: utf-8 -*-
  2 """
  3 Created by huxiaoman 2017.12.12
  4 vgg_tf.py:训练tensorflow版的vgg16网络,对cifar-10shuju进行分类
  5 """
  6 from datetime import datetime
  7 import math
  8 import time
  9 import tensorflow as tf
 10 import cifar10
 11
 12 batch_size = 128
 13 num_batches = 200
 14
 15 # 定义函数对卷积层进行初始化
 16 # input_op : 输入数据
 17 # name : 该卷积层的名字,用tf.name_scope()来命名
 18 # kh,kw : 分别是卷积核的高和宽
 19 # n_out : 输出通道数
 20 # dh,dw : 步长的高和宽
 21 # p : 是参数列表,存储VGG所用到的参数
 22 # 采用xavier方法对卷积核权值进行初始化
 23 def conv_op(input_op, name, kh, kw, n_out, dh, dw, p):
 24     n_in = input_op.get_shape()[-1].value # 获得输入图像的通道数
 25     with tf.name_scope(name) as scope:
 26         kernel = tf.get_variable(scope+‘w‘,
 27             shape = [kh, kw, n_in, n_out], dtype = tf.float32,
 28             initializer = tf.contrib.layers.xavier_initializer_conv2d())
 29         #  卷积层计算
 30         conv = tf.nn.conv2d(input_op, kernel, (1, dh, dw, 1), padding = ‘SAME‘)
 31         bias_init_val = tf.constant(0.0, shape = [n_out], dtype = tf.float32)
 32         biases = tf.Variable(bias_init_val, trainable = True, name = ‘b‘)
 33         z = tf.nn.bias_add(conv, biases)
 34         activation = tf.nn.relu(z, name = scope)
 35         p += [kernel, biases]
 36         return activation
 37
 38 # 定义函数对全连接层进行初始化
 39 # input_op : 输入数据
 40 # name : 该全连接层的名字
 41 # n_out : 输出的通道数
 42 # p : 参数列表
 43 # 初始化方法用 xavier方法
 44 def fc_op(input_op, name, n_out, p):
 45     n_in = input_op.get_shape()[-1].value
 46
 47     with tf.name_scope(name) as scope:
 48         kernel = tf.get_variable(scope+‘w‘,
 49             shape = [n_in, n_out], dtype = tf.float32,
 50             initializer = tf.contrib.layers.xavier_initializer())
 51         biases = tf.Variable(tf.constant(0.1, shape = [n_out],
 52             dtype = tf.float32), name = ‘b‘)
 53         activation = tf.nn.relu_layer(input_op, kernel,  #  ???????????????
 54             biases, name = scope)
 55         p += [kernel, biases]
 56         return activation
 57
 58 # 定义函数 创建 maxpool层
 59 # input_op : 输入数据
 60 # name : 该卷积层的名字,用tf.name_scope()来命名
 61 # kh,kw : 分别是卷积核的高和宽
 62 # dh,dw : 步长的高和宽
 63 def mpool_op(input_op, name, kh, kw, dh, dw):
 64     return tf.nn.max_pool(input_op, ksize = [1,kh,kw,1],
 65         strides = [1, dh, dw, 1], padding = ‘SAME‘, name = name)
 66
 67 #---------------创建 VGG-16------------------
 68
 69 def inference_op(input_op, keep_prob):
 70     p = []
 71     # 第一块 conv1_1-conv1_2-pool1
 72     conv1_1 = conv_op(input_op, name=‘conv1_1‘, kh=3, kw=3,
 73                 n_out = 64, dh = 1, dw = 1, p = p)
 74     conv1_2 = conv_op(conv1_1, name=‘conv1_2‘, kh=3, kw=3,
 75                 n_out = 64, dh = 1, dw = 1, p = p)
 76     pool1 = mpool_op(conv1_2, name = ‘pool1‘, kh = 2, kw = 2,
 77                 dw = 2, dh = 2)
 78     # 第二块 conv2_1-conv2_2-pool2
 79     conv2_1 = conv_op(pool1, name=‘conv2_1‘, kh=3, kw=3,
 80                 n_out = 128, dh = 1, dw = 1, p = p)
 81     conv2_2 = conv_op(conv2_1, name=‘conv2_2‘, kh=3, kw=3,
 82                 n_out = 128, dh = 1, dw = 1, p = p)
 83     pool2 = mpool_op(conv2_2, name = ‘pool2‘, kh = 2, kw = 2,
 84                 dw = 2, dh = 2)
 85     # 第三块 conv3_1-conv3_2-conv3_3-pool3
 86     conv3_1 = conv_op(pool2, name=‘conv3_1‘, kh=3, kw=3,
 87                 n_out = 256, dh = 1, dw = 1, p = p)
 88     conv3_2 = conv_op(conv3_1, name=‘conv3_2‘, kh=3, kw=3,
 89                 n_out = 256, dh = 1, dw = 1, p = p)
 90     conv3_3 = conv_op(conv3_2, name=‘conv3_3‘, kh=3, kw=3,
 91                 n_out = 256, dh = 1, dw = 1, p = p)
 92     pool3 = mpool_op(conv3_3, name = ‘pool3‘, kh = 2, kw = 2,
 93                 dw = 2, dh = 2)
 94     # 第四块 conv4_1-conv4_2-conv4_3-pool4
 95     conv4_1 = conv_op(pool3, name=‘conv4_1‘, kh=3, kw=3,
 96                 n_out = 512, dh = 1, dw = 1, p = p)
 97     conv4_2 = conv_op(conv4_1, name=‘conv4_2‘, kh=3, kw=3,
 98                 n_out = 512, dh = 1, dw = 1, p = p)
 99     conv4_3 = conv_op(conv4_2, name=‘conv4_3‘, kh=3, kw=3,
100                 n_out = 512, dh = 1, dw = 1, p = p)
101     pool4 = mpool_op(conv4_3, name = ‘pool4‘, kh = 2, kw = 2,
102                 dw = 2, dh = 2)
103     # 第五块 conv5_1-conv5_2-conv5_3-pool5
104     conv5_1 = conv_op(pool4, name=‘conv5_1‘, kh=3, kw=3,
105                 n_out = 512, dh = 1, dw = 1, p = p)
106     conv5_2 = conv_op(conv5_1, name=‘conv5_2‘, kh=3, kw=3,
107                 n_out = 512, dh = 1, dw = 1, p = p)
108     conv5_3 = conv_op(conv5_2, name=‘conv5_3‘, kh=3, kw=3,
109                 n_out = 512, dh = 1, dw = 1, p = p)
110     pool5 = mpool_op(conv5_3, name = ‘pool5‘, kh = 2, kw = 2,
111                 dw = 2, dh = 2)
112     # 把pool5 ( [7, 7, 512] )  拉成向量
113     shp  = pool5.get_shape()
114     flattened_shape = shp[1].value * shp[2].value * shp[3].value
115     resh1 = tf.reshape(pool5, [-1, flattened_shape], name = ‘resh1‘)
116
117     # 全连接层1 添加了 Droput来防止过拟合
118     fc1 = fc_op(resh1, name = ‘fc1‘, n_out = 2048, p = p)
119     fc1_drop = tf.nn.dropout(fc1, keep_prob, name = ‘fc1_drop‘)
120
121     # 全连接层2 添加了 Droput来防止过拟合
122     fc2 = fc_op(fc1_drop, name = ‘fc2‘, n_out = 2048, p = p)
123     fc2_drop = tf.nn.dropout(fc2, keep_prob, name = ‘fc2_drop‘)
124
125     # 全连接层3 加一个softmax求给类别的概率
126     fc3 = fc_op(fc2_drop, name = ‘fc3‘, n_out = 1000, p = p)
127     softmax = tf.nn.softmax(fc3)
128     predictions = tf.argmax(softmax, 1)
129     return predictions, softmax, fc3, p
130
131 # 定义评测函数
132
133 def time_tensorflow_run(session, target, feed, info_string):
134     num_steps_burn_in = 10
135     total_duration = 0.0
136     total_duration_squared = 0.0
137
138     for i in range(num_batches + num_steps_burn_in):
139         start_time = time.time()
140         _ = session.run(target, feed_dict = feed)
141         duration = time.time() - start_time
142         if i >= num_steps_burn_in:
143             if not i  % 10:
144                 print(‘%s: step %d, duration = %.3f‘ %
145                     (datetime.now(), i-num_steps_burn_in, duration))
146             total_duration += duration
147             total_duration_squared += duration * duration
148     mean_dur = total_duration / num_batches
149     var_dur = total_duration_squared / num_batches - mean_dur * mean_dur
150     std_dur = math.sqrt(var_dur)
151     print(‘%s: %s across %d steps, %.3f +/- %.3f sec / batch‘ %(datetime.now(), info_string, num_batches, mean_dur, std_dur))
152
153
154 def train_vgg16():
155     with tf.Graph().as_default():
156         image_size = 224  # 输入图像尺寸
157         # 生成随机数测试是否能跑通
158         #images = tf.Variable(tf.random_normal([batch_size, image_size, image_size, 3], dtype=tf.float32, stddev=1e-1))
159         with tf.device(‘/cpu:0‘):
160             images, labels = cifar10.distorted_inputs()
161         keep_prob = tf.placeholder(tf.float32)
162         prediction,softmax,fc8,p = inference_op(images,keep_prob)
163         init = tf.global_variables_initializer()
164         sess = tf.Session()
165         sess.run(init)
166         time_tensorflow_run(sess, prediction,{keep_prob:1.0}, "Forward")
167         # 用以模拟训练的过程
168         objective = tf.nn.l2_loss(fc8)  # 给一个loss
169         grad = tf.gradients(objective, p)  # 相对于loss的 所有模型参数的梯度
170         time_tensorflow_run(sess, grad, {keep_prob:0.5},"Forward-backward")
171
172
173
174
175 if __name__ == ‘__main__‘:
176     train_vgg16()

  对比训练结果,在同等设备和环境下,迭代200tensorflow的训练结果是89.18%,耗时18h12min,对比paddlepaddle的效果,精度差不多,时间慢一点。其实可以对数据进行处理后再进行训练,转换成tfrecord多线程输入在训练,时间应该会快很多。



总结

  通过论文的分析和实验的结果,我总结了几点:

   1.LRN层太耗费计算资源,作用不大,可以舍去。

    2.大卷积核可以学习更大的空间特征,但是需要的参数空间也更多,小卷积核虽然学习的空间特征有限,但所需参数空间更小,多层叠加训练可能效果更好。

    3.越深的网络效果越好,但是要避免梯度消失的问题,选取relu的激活函数、batch_normalization等都可以从一定程度上避免。

  4.小卷积核+深层网络的效果,在迭代相同次数时,比大卷积核+浅层网络效果更好,对于我们自己设计网络时可以有借鉴作用。但是前者的训练时间可能更长,不过可能比后者收敛速度更快,精确度更好。

ps:为了方便大家及时看到我的更新,我搞了一个公众号,以后文章会同步发布与公众号和博客园,这样大家就能及时收到通知啦,有不懂的问题也可以在公众号留言,这样我能够及时看到并回复。

可以通过扫下面的二维码或者直接搜公众号:CharlotteDataMining 就可以了,谢谢关注^_^

本文同步发布于:https://mp.weixin.qq.com/s?__biz=MzI0OTQwMTA5Ng==&mid=2247483677&idx=1&sn=9402a0532bc6330f83e58c7e18f51b93&chksm=e9935b7adee4d26cd69de6c89b25be994735094ef420befd1d275f97821819ba9528f13e079a#rd

参考文献:

1.https://arxiv.org/pdf/1409.1556.pdf

时间: 2024-08-04 08:12:22

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