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CGAN的全拼是Conditional Generative Adversarial Networks,条件生成对抗网络,在初始GAN的基础上增加了图片的相应信息。
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import torch from torch.utils.data import DataLoader from torchvision.datasets import MNIST from torchvision import transforms from torch import optim import torch.nn as nn import matplotlib.pyplot as plt import numpy as np from torch.autograd import Variable import pickle import copy import matplotlib.gridspec as gridspec import os def save_model(model, filename): #保存为CPU中可以打开的模型 state = model.state_dict() x=state.copy() for key in x: x[key] = x[key].clone().cpu() torch.save(x, filename) def showimg(images,count): images=images.to('cpu') images=images.detach().numpy() images=images[[6, 12, 18, 24, 30, 36, 42, 48, 54, 60, 66, 72, 78, 84, 90, 96]] images=255*(0.5*images+0.5) images = images.astype(np.uint8) grid_length=int(np.ceil(np.sqrt(images.shape[0]))) plt.figure(figsize=(4,4)) width = images.shape[2] gs = gridspec.GridSpec(grid_length,grid_length,wspace=0,hspace=0) for i, img in enumerate(images): ax = plt.subplot(gs[i]) ax.set_xticklabels([]) ax.set_yticklabels([]) ax.set_aspect('equal') plt.imshow(img.reshape(width,width),cmap = plt.cm.gray) plt.axis('off') plt.tight_layout() # plt.tight_layout() plt.savefig(r'./CGAN/images/%d.png'% count, bbox_inches='tight') def loadMNIST(batch_size): #MNIST图片的大小是28*28 trans_img=transforms.Compose([transforms.ToTensor()]) trainset=MNIST('./data',train=True,transform=trans_img,download=True) testset=MNIST('./data',train=False,transform=trans_img,download=True) # device = torch.device("cuda:0" if torch.cuda.is_available() else "cpu") trainloader=DataLoader(trainset,batch_size=batch_size,shuffle=True,num_workers=10) testloader = DataLoader(testset, batch_size=batch_size, shuffle=False, num_workers=10) return trainset,testset,trainloader,testloader class discriminator(nn.Module): def __init__(self): super(discriminator,self).__init__() self.dis=nn.Sequential( nn.Conv2d(1,32,5,stride=1,padding=2), nn.LeakyReLU(0.2,True), nn.MaxPool2d((2,2)), nn.Conv2d(32,64,5,stride=1,padding=2), nn.LeakyReLU(0.2,True), nn.MaxPool2d((2,2)) ) self.fc=nn.Sequential( nn.Linear(7 * 7 * 64, 1024), nn.LeakyReLU(0.2, True), nn.Linear(1024, 10), nn.Sigmoid() ) def forward(self, x): x=self.dis(x) x=x.view(x.size(0),-1) x=self.fc(x) return x class generator(nn.Module): def __init__(self,input_size,num_feature): super(generator,self).__init__() self.fc=nn.Linear(input_size,num_feature) #1*56*56 self.br=nn.Sequential( nn.BatchNorm2d(1), nn.ReLU(True) ) self.gen=nn.Sequential( nn.Conv2d(1,50,3,stride=1,padding=1), nn.BatchNorm2d(50), nn.ReLU(True), nn.Conv2d(50,25,3,stride=1,padding=1), nn.BatchNorm2d(25), nn.ReLU(True), nn.Conv2d(25,1,2,stride=2), nn.Tanh() ) def forward(self, x): x=self.fc(x) x=x.view(x.size(0),1,56,56) x=self.br(x) x=self.gen(x) return x if __name__=="__main__": criterion=nn.BCELoss() num_img=100 z_dimension=110 D=discriminator() G=generator(z_dimension,3136) #1*56*56 trainset, testset, trainloader, testloader = loadMNIST(num_img) # data D=D.cuda() G=G.cuda() d_optimizer=optim.Adam(D.parameters(),lr=0.0003) g_optimizer=optim.Adam(G.parameters(),lr=0.0003) ''' 交替训练的方式训练网络 先训练判别器网络D再训练生成器网络G 不同网络的训练次数是超参数 也可以两个网络训练相同的次数, 这样就可以不用分别训练两个网络 ''' count=0 #鉴别器D的训练,固定G的参数 epoch = 119 gepoch = 1 for i in range(epoch): for (img, label) in trainloader: labels_onehot = np.zeros((num_img,10)) labels_onehot[np.arange(num_img),label.numpy()]=1 # img=img.view(num_img,-1) # img=np.concatenate((img.numpy(),labels_onehot)) # img=torch.from_numpy(img) img=Variable(img).cuda() real_label=Variable(torch.from_numpy(labels_onehot).float()).cuda()#真实label为1 fake_label=Variable(torch.zeros(num_img,10)).cuda()#假的label为0 #compute loss of real_img real_out=D(img) #真实图片送入判别器D输出0~1 d_loss_real=criterion(real_out,real_label)#得到loss real_scores=real_out#真实图片放入判别器输出越接近1越好 #compute loss of fake_img z=Variable(torch.randn(num_img,z_dimension)).cuda()#随机生成向量 fake_img=G(z)#将向量放入生成网络G生成一张图片 fake_out=D(fake_img)#判别器判断假的图片 d_loss_fake=criterion(fake_out,fake_label)#假的图片的loss fake_scores=fake_out#假的图片放入判别器输出越接近0越好 #D bp and optimize d_loss=d_loss_real+d_loss_fake d_optimizer.zero_grad() #判别器D的梯度归零 d_loss.backward() #反向传播 d_optimizer.step() #更新判别器D参数 #生成器G的训练compute loss of fake_img for j in range(gepoch): z =torch.randn(num_img, 100) # 随机生成向量 z=np.concatenate((z.numpy(),labels_onehot),axis=1) z=Variable(torch.from_numpy(z).float()).cuda() fake_img = G(z) # 将向量放入生成网络G生成一张图片 output = D(fake_img) # 经过判别器得到结果 g_loss = criterion(output, real_label)#得到假的图片与真实标签的loss #bp and optimize g_optimizer.zero_grad() #生成器G的梯度归零 g_loss.backward() #反向传播 g_optimizer.step()#更新生成器G参数 temp=real_label if (i%10==0) and (i!=0): print(i) torch.save(G.state_dict(),r'./CGAN/Generator_cuda_%d.pkl'%i) torch.save(D.state_dict(), r'./CGAN/Discriminator_cuda_%d.pkl' % i) save_model(G, r'./CGAN/Generator_cpu_%d.pkl'%i) #保存为CPU中可以打开的模型 save_model(D, r'./CGAN/Discriminator_cpu_%d.pkl'%i) #保存为CPU中可以打开的模型 print('Epoch [{}/{}], d_loss: {:.6f}, g_loss: {:.6f} ' 'D real: {:.6f}, D fake: {:.6f}'.format( i, epoch, d_loss.data[0], g_loss.data[0], real_scores.data.mean(), fake_scores.data.mean())) temp=temp.to('cpu') _,x=torch.max(temp,1) x=x.numpy() print(x[[6, 12, 18, 24, 30, 36, 42, 48, 54, 60, 66, 72, 78, 84, 90, 96]]) showimg(fake_img,count) plt.show() count += 1
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