pytorch cnn 识别手写的字实现自建图片数据

小鱼们欢快的闹腾起来,有的甩动着尾巴,有的吐着泡泡,有的扭动着身体,互相追玩,好不热闹。春天来了!你看,融化的冰水把小溪弄醒了。 "丁粳、丁粳 ",它就像大自然的神奇歌手,唱着清脆悦耳的歌,向前奔流……

本文主要介绍了pytorch cnn 识别手写的字实现自建图片数据,分享给大家,具体如下:

# library
# standard library
import os 
# third-party library
import torch
import torch.nn as nn
from torch.autograd import Variable
from torch.utils.data import Dataset, DataLoader
import torchvision
import matplotlib.pyplot as plt
from PIL import Image
import numpy as np
# torch.manual_seed(1)  # reproducible 
# Hyper Parameters
EPOCH = 1        # train the training data n times, to save time, we just train 1 epoch
BATCH_SIZE = 50
LR = 0.001       # learning rate 
 
root = "./mnist/raw/"
 
def default_loader(path):
  # return Image.open(path).convert('RGB')
  return Image.open(path)
 
class MyDataset(Dataset):
  def __init__(self, txt, transform=None, target_transform=None, loader=default_loader):
    fh = open(txt, 'r')
    imgs = []
    for line in fh:
      line = line.strip('\n')
      line = line.rstrip()
      words = line.split()
      imgs.append((words[0], int(words[1])))
    self.imgs = imgs
    self.transform = transform
    self.target_transform = target_transform
    self.loader = loader
    fh.close()
  def __getitem__(self, index):
    fn, label = self.imgs[index]
    img = self.loader(fn)
    img = Image.fromarray(np.array(img), mode='L')
    if self.transform is not None:
      img = self.transform(img)
    return img,label
  def __len__(self):
    return len(self.imgs)
 
train_data = MyDataset(txt= root + 'train.txt', transform = torchvision.transforms.ToTensor())
train_loader = DataLoader(dataset = train_data, batch_size=BATCH_SIZE, shuffle=True)
 
test_data = MyDataset(txt= root + 'test.txt', transform = torchvision.transforms.ToTensor())
test_loader = DataLoader(dataset = test_data, batch_size=BATCH_SIZE)
 
class CNN(nn.Module):
  def __init__(self):
    super(CNN, self).__init__()
    self.conv1 = nn.Sequential(     # input shape (1, 28, 28)
      nn.Conv2d(
        in_channels=1,       # input height
        out_channels=16,      # n_filters
        kernel_size=5,       # filter size
        stride=1,          # filter movement/step
        padding=2,         # if want same width and length of this image after con2d, padding=(kernel_size-1)/2 if stride=1
      ),               # output shape (16, 28, 28)
      nn.ReLU(),           # activation
      nn.MaxPool2d(kernel_size=2),  # choose max value in 2x2 area, output shape (16, 14, 14)
    )
    self.conv2 = nn.Sequential(     # input shape (16, 14, 14)
      nn.Conv2d(16, 32, 5, 1, 2),   # output shape (32, 14, 14)
      nn.ReLU(),           # activation
      nn.MaxPool2d(2),        # output shape (32, 7, 7)
    )
    self.out = nn.Linear(32 * 7 * 7, 10)  # fully connected layer, output 10 classes
 
  def forward(self, x):
    x = self.conv1(x)
    x = self.conv2(x)
    x = x.view(x.size(0), -1)      # flatten the output of conv2 to (batch_size, 32 * 7 * 7)
    output = self.out(x)
    return output, x  # return x for visualization 
cnn = CNN()
print(cnn) # net architecture
 
optimizer = torch.optim.Adam(cnn.parameters(), lr=LR)  # optimize all cnn parameters
loss_func = nn.CrossEntropyLoss()            # the target label is not one-hotted 
 
# training and testing
for epoch in range(EPOCH):
  for step, (x, y) in enumerate(train_loader):  # gives batch data, normalize x when iterate train_loader
    b_x = Variable(x)  # batch x
    b_y = Variable(y)  # batch y
 
    output = cnn(b_x)[0]        # cnn output
    loss = loss_func(output, b_y)  # cross entropy loss
    optimizer.zero_grad()      # clear gradients for this training step
    loss.backward()         # backpropagation, compute gradients
    optimizer.step()        # apply gradients
 
    if step % 50 == 0:
      cnn.eval()
      eval_loss = 0.
      eval_acc = 0.
      for i, (tx, ty) in enumerate(test_loader):
        t_x = Variable(tx)
        t_y = Variable(ty)
        output = cnn(t_x)[0]
        loss = loss_func(output, t_y)
        eval_loss += loss.data[0]
        pred = torch.max(output, 1)[1]
        num_correct = (pred == t_y).sum()
        eval_acc += float(num_correct.data[0])
      acc_rate = eval_acc / float(len(test_data))
      print('Test Loss: {:.6f}, Acc: {:.6f}'.format(eval_loss / (len(test_data)), acc_rate))

图片和label 见上一篇文章《pytorch 把MNIST数据集转换成图片和txt》

结果如下:

到此这篇关于pytorch cnn 识别手写的字实现自建图片数据就介绍到这了。你就是那个要搞垮永晟的丹尼尔沈,我才做到这个地步你就受不了了傅函君你太弱了,我们之间真的只有这一条路吗。更多相关pytorch cnn 识别手写的字实现自建图片数据内容请查看相关栏目,小编编辑不易,再次感谢大家的支持!

您可能有感兴趣的文章
pytorch--之halfTensor的使用详解

解决pytorch中的kl divergence计算问题

pytorch交叉熵损失函数的weight参数的使用

pytorch 实现变分自动编码器的操作

PyTorch梯度裁剪避免训练loss nan的操作