神经网络学习--PyTorch学习06 迁移VGG16

    因为我们从头训练一个网络模型花费的时间太长,所以使用迁移学习,也就是将已经训练好的模型进行微调和二次训练,来更快的得到更好的结果。

import torch
import torchvision
from torchvision import datasets, models, transforms
import os
from torch.autograd import Variable
import matplotlib.pyplot as plt
import time

data_dir = "DogsVSCats"
data_transform = {x: transforms.Compose([transforms.Resize([224, 224]),  # 设置尺寸
                                        transforms.ToTensor(),  # 转为Tensor
                                        transforms.Normalize(mean=[0.5, 0.5, 0.5],std=[0.5, 0.5, 0.5])])  # 标准化
                  for x in {"train", "valid"}}  # {"train":"训练集数据格式","valid":"测试集数据格式"}
image_datasets = {x: datasets.ImageFolder(root=os.path.join(data_dir, x),  # 载入数据
                                         transform = data_transform[x])
                  for x in {"train", "valid"}}  # {"train":"训练集","valid":"测试集"}
dataloader = {x: torch.utils.data.DataLoader(dataset=image_datasets[x],
                                            batch_size=16,
                                            shuffle=True)
              for x in {"train", "valid"}}  # {包装16个为一个批次"train":"训练集数据载入","valid":"测试集数据载入"}
X_example, y_example = next(iter(dataloader["train"]))  # 迭代得到一个批次的样本
example_classes = image_datasets["train"].classes
index_classes = image_datasets["train"].class_to_idx

model = models.vgg16(pretrained=True)  # 使用VGG16 网络预训练好的模型
for parma in model.parameters():  # 设置自动梯度为false
    parma.requires_grad = False

model.classifier = torch.nn.Sequential(  # 修改全连接层 自动梯度会恢复为默认值
    torch.nn.Linear(25088, 4096),
    torch.nn.ReLU(),
    torch.nn.Dropout(p=0.5),
    torch.nn.Linear(4096, 4096),
    torch.nn.Dropout(p=0.5),
    torch.nn.Linear(4096, 2))
Use_gpu = torch.cuda.is_available()
if Use_gpu:  # 判断是否有cuda
    model = model.cuda()

loss_f = torch.nn.CrossEntropyLoss()  # 设置残差损失
optimizer = torch.optim.Adam(model.classifier.parameters(), lr=0.00001)  # 使用Adam优化函数

epoch_n = 5
time_open = time.time()

for epoch in range(epoch_n):
    print("Epoch{}/{}".format(epoch,epoch_n-1))
    print("-"*10)
    for phase in {"train","valid"}:
        if phase == "train":
            print("Training...")
            model.train(True)
        else:
            print("Validing...")
            model.train(False)

        running_loss = 0.0
        running_corrects = 0
        for batch, data in enumerate(dataloader[phase], 1):  # enumerate 得到下标和数据
            X, y = data
            if Use_gpu:
                X, y = Variable(X.cuda()), Variable(y.cuda())  # **************************************
            else:
                X, y = Variable(X), Variable(y)
            y_pred = model(X)  # 预测
            _, pred = torch.max(y_pred, 1)
            optimizer.zero_grad()  # 梯度归零
            loss = loss_f(y_pred, y)  # 设置损失

            if phase == "train":
                loss.backward()  # 反向传播
                optimizer.step()  # 更新参数
            running_loss += loss.item()
            running_corrects += torch.sum(pred == y.data)

            if batch % 500 == 0 and phase == "train":
                print("Batch{},TrainLoss:{:.4f},Train ACC:{:.4f}".format(
                    batch, running_loss / batch, 100 * running_corrects / (16 * batch)))
        epocn_loss = running_loss * 16 / len(image_datasets[phase])
        epoch_acc = 100 * running_corrects / len(image_datasets[phase])
        print("{} Loss:{:.4f} Acc:{:4f}%".format(phase, epocn_loss, epoch_acc))
time_end = time.time() - time_open
print(time_end)

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转载自www.cnblogs.com/zuhaoran/p/11504378.html