PyTorch CNN实战之MNIST手写数字识别示例

所属分类: 脚本专栏 / python 阅读数: 1542
收藏 0 赞 0 分享

简介

卷积神经网络(Convolutional Neural Network, CNN)是深度学习技术中极具代表的网络结构之一,在图像处理领域取得了很大的成功,在国际标准的ImageNet数据集上,许多成功的模型都是基于CNN的。

卷积神经网络CNN的结构一般包含这几个层:

  1. 输入层:用于数据的输入
  2. 卷积层:使用卷积核进行特征提取和特征映射
  3. 激励层:由于卷积也是一种线性运算,因此需要增加非线性映射
  4. 池化层:进行下采样,对特征图稀疏处理,减少数据运算量。
  5. 全连接层:通常在CNN的尾部进行重新拟合,减少特征信息的损失
  6. 输出层:用于输出结果

PyTorch实战

本文选用上篇的数据集MNIST手写数字识别实践CNN。

import torch
import torch.nn as nn
import torch.nn.functional as F
import torch.optim as optim
from torchvision import datasets, transforms
from torch.autograd import Variable

# Training settings
batch_size = 64

# MNIST Dataset
train_dataset = datasets.MNIST(root='./data/',
                train=True,
                transform=transforms.ToTensor(),
                download=True)

test_dataset = datasets.MNIST(root='./data/',
               train=False,
               transform=transforms.ToTensor())

# Data Loader (Input Pipeline)
train_loader = torch.utils.data.DataLoader(dataset=train_dataset,
                      batch_size=batch_size,
                      shuffle=True)

test_loader = torch.utils.data.DataLoader(dataset=test_dataset,
                     batch_size=batch_size,
                     shuffle=False)


class Net(nn.Module):
  def __init__(self):
    super(Net, self).__init__()
    # 输入1通道,输出10通道,kernel 5*5
    self.conv1 = nn.Conv2d(1, 10, kernel_size=5)
    self.conv2 = nn.Conv2d(10, 20, kernel_size=5)
    self.mp = nn.MaxPool2d(2)
    # fully connect
    self.fc = nn.Linear(320, 10)

  def forward(self, x):
    # in_size = 64
    in_size = x.size(0) # one batch
    # x: 64*10*12*12
    x = F.relu(self.mp(self.conv1(x)))
    # x: 64*20*4*4
    x = F.relu(self.mp(self.conv2(x)))
    # x: 64*320
    x = x.view(in_size, -1) # flatten the tensor
    # x: 64*10
    x = self.fc(x)
    return F.log_softmax(x)


model = Net()

optimizer = optim.SGD(model.parameters(), lr=0.01, momentum=0.5)

def train(epoch):
  for batch_idx, (data, target) in enumerate(train_loader):
    data, target = Variable(data), Variable(target)
    optimizer.zero_grad()
    output = model(data)
    loss = F.nll_loss(output, target)
    loss.backward()
    optimizer.step()
    if batch_idx % 200 == 0:
      print('Train Epoch: {} [{}/{} ({:.0f}%)]\tLoss: {:.6f}'.format(
        epoch, batch_idx * len(data), len(train_loader.dataset),
        100. * batch_idx / len(train_loader), loss.data[0]))


def test():
  test_loss = 0
  correct = 0
  for data, target in test_loader:
    data, target = Variable(data, volatile=True), Variable(target)
    output = model(data)
    # sum up batch loss
    test_loss += F.nll_loss(output, target, size_average=False).data[0]
    # get the index of the max log-probability
    pred = output.data.max(1, keepdim=True)[1]
    correct += pred.eq(target.data.view_as(pred)).cpu().sum()

  test_loss /= len(test_loader.dataset)
  print('\nTest set: Average loss: {:.4f}, Accuracy: {}/{} ({:.0f}%)\n'.format(
    test_loss, correct, len(test_loader.dataset),
    100. * correct / len(test_loader.dataset)))


for epoch in range(1, 10):
  train(epoch)
  test()

输出结果:

Train Epoch: 1 [0/60000 (0%)]   Loss: 2.315724
Train Epoch: 1 [12800/60000 (21%)]  Loss: 1.931551
Train Epoch: 1 [25600/60000 (43%)]  Loss: 0.733935
Train Epoch: 1 [38400/60000 (64%)]  Loss: 0.165043
Train Epoch: 1 [51200/60000 (85%)]  Loss: 0.235188

Test set: Average loss: 0.1935, Accuracy: 9421/10000 (94%)

Train Epoch: 2 [0/60000 (0%)]   Loss: 0.333513
Train Epoch: 2 [12800/60000 (21%)]  Loss: 0.163156
Train Epoch: 2 [25600/60000 (43%)]  Loss: 0.213840
Train Epoch: 2 [38400/60000 (64%)]  Loss: 0.141114
Train Epoch: 2 [51200/60000 (85%)]  Loss: 0.128191

Test set: Average loss: 0.1180, Accuracy: 9645/10000 (96%)

Train Epoch: 3 [0/60000 (0%)]   Loss: 0.206469
Train Epoch: 3 [12800/60000 (21%)]  Loss: 0.234443
Train Epoch: 3 [25600/60000 (43%)]  Loss: 0.061048
Train Epoch: 3 [38400/60000 (64%)]  Loss: 0.192217
Train Epoch: 3 [51200/60000 (85%)]  Loss: 0.089190

Test set: Average loss: 0.0938, Accuracy: 9723/10000 (97%)

Train Epoch: 4 [0/60000 (0%)]   Loss: 0.086325
Train Epoch: 4 [12800/60000 (21%)]  Loss: 0.117741
Train Epoch: 4 [25600/60000 (43%)]  Loss: 0.188178
Train Epoch: 4 [38400/60000 (64%)]  Loss: 0.049807
Train Epoch: 4 [51200/60000 (85%)]  Loss: 0.174097

Test set: Average loss: 0.0743, Accuracy: 9767/10000 (98%)

Train Epoch: 5 [0/60000 (0%)]   Loss: 0.063171
Train Epoch: 5 [12800/60000 (21%)]  Loss: 0.061265
Train Epoch: 5 [25600/60000 (43%)]  Loss: 0.103549
Train Epoch: 5 [38400/60000 (64%)]  Loss: 0.019137
Train Epoch: 5 [51200/60000 (85%)]  Loss: 0.067103

Test set: Average loss: 0.0720, Accuracy: 9781/10000 (98%)

Train Epoch: 6 [0/60000 (0%)]   Loss: 0.069251
Train Epoch: 6 [12800/60000 (21%)]  Loss: 0.075502
Train Epoch: 6 [25600/60000 (43%)]  Loss: 0.052337
Train Epoch: 6 [38400/60000 (64%)]  Loss: 0.015375
Train Epoch: 6 [51200/60000 (85%)]  Loss: 0.028996

Test set: Average loss: 0.0694, Accuracy: 9783/10000 (98%)

Train Epoch: 7 [0/60000 (0%)]   Loss: 0.171613
Train Epoch: 7 [12800/60000 (21%)]  Loss: 0.078520
Train Epoch: 7 [25600/60000 (43%)]  Loss: 0.149186
Train Epoch: 7 [38400/60000 (64%)]  Loss: 0.026692
Train Epoch: 7 [51200/60000 (85%)]  Loss: 0.108824

Test set: Average loss: 0.0672, Accuracy: 9793/10000 (98%)

Train Epoch: 8 [0/60000 (0%)]   Loss: 0.029188
Train Epoch: 8 [12800/60000 (21%)]  Loss: 0.031202
Train Epoch: 8 [25600/60000 (43%)]  Loss: 0.194858
Train Epoch: 8 [38400/60000 (64%)]  Loss: 0.051497
Train Epoch: 8 [51200/60000 (85%)]  Loss: 0.024832

Test set: Average loss: 0.0535, Accuracy: 9837/10000 (98%)

Train Epoch: 9 [0/60000 (0%)]   Loss: 0.026706
Train Epoch: 9 [12800/60000 (21%)]  Loss: 0.057807
Train Epoch: 9 [25600/60000 (43%)]  Loss: 0.065225
Train Epoch: 9 [38400/60000 (64%)]  Loss: 0.037004
Train Epoch: 9 [51200/60000 (85%)]  Loss: 0.057822

Test set: Average loss: 0.0538, Accuracy: 9829/10000 (98%)

Process finished with exit code 0

参考:https://github.com/hunkim/PyTorchZeroToAll

以上就是本文的全部内容,希望对大家的学习有所帮助,也希望大家多多支持脚本之家。

更多精彩内容其他人还在看

Python常见加密模块用法分析【MD5,sha,crypt模块】

这篇文章主要介绍了Python常见加密模块用法,结合实例形式较为详细的分析了MD5,sha与crypt模块加密的相关实现方法与操作技巧,需要的朋友可以参考下
收藏 0 赞 0 分享

Python向日志输出中添加上下文信息

这篇文章主要介绍了Python向日志输出中添加上下文信息的方法,非常不错,具有参考借鉴价值,需要的朋友可以参考下
收藏 0 赞 0 分享

Python实现的简单dns查询功能示例

这篇文章主要介绍了Python实现的简单dns查询功能,结合实例形式分析了Python基于socket模块的dns信息查询实现技巧,需要的朋友可以参考下
收藏 0 赞 0 分享

利用Anaconda完美解决Python 2与python 3的共存问题

Anaconda 是 Python 的一个发行版,如果把 Python 比作 Linux,那么 Anancoda 就是 CentOS 或者 Ubuntu,下面这篇文章主要给大家介绍了利用Anaconda完美解决Python 2与python 3共存问题的相关资料,文中介绍的非常详
收藏 0 赞 0 分享

Python随机读取文件实现实例

这篇文章主要介绍了Python随机读取文件的相关资料,需要的朋友可以参考下
收藏 0 赞 0 分享

用生成器来改写直接返回列表的函数方法

下面小编就为大家带来一篇用生成器来改写直接返回列表的函数方法。小编觉得挺不错的,现在就分享给大家,也给大家做个参考。一起跟随小编过来看看吧
收藏 0 赞 0 分享

python爬虫入门教程--快速理解HTTP协议(一)

http协议是互联网里面最重要,最基础的协议之一,我们的爬虫需要经常和http协议打交道。下面这篇文章主要给大家介绍了关于python爬虫入门之快速理解HTTP协议的相关资料,文中介绍的非常详细,需要的朋友可以参考借鉴,下面来一起看看吧。
收藏 0 赞 0 分享

老生常谈Python进阶之装饰器

下面小编就为大家带来一篇老生常谈Python进阶之装饰器。小编觉得挺不错的,现在就分享给大家,也给大家做个参考。一起跟随小编过来看看吧
收藏 0 赞 0 分享

浅谈Python基础之I/O模型

下面小编就为大家带来一篇浅谈Python基础之I/O模型。小编觉得挺不错的,现在就分享给大家,也给大家做个参考。一起跟随小编过来看看吧
收藏 0 赞 0 分享

python如何获取服务器硬件信息

这篇文章主要为大家详细介绍了python获取服务器硬件信息的相关代码,具有一定的参考价值,感兴趣的小伙伴们可以参考一下
收藏 0 赞 0 分享
查看更多