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Derain_ICGAN.py
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Derain_ICGAN.py
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# coding=utf-8
import os
import re
import torch
import argparse
import torch.functional as f
import urllib.request
from Utils.utils import *
from Utils.Vidsom import *
from Utils.model_init import *
from Utils.ssim_map import SSIM_MAP
from Utils.torch_ssim import SSIM
from torch import nn, optim
from torch.backends import cudnn
from torch.autograd import Variable
from torch.utils.data import DataLoader
from torchvision.utils import make_grid
from MyDataset.Datasets import derain_train_datasets_IC
from torchvision.transforms import Compose, ToTensor, Resize, Normalize, CenterCrop, RandomCrop
from net.model import w_net as net1
from net.model import u_net as net2
from net.model import res_net as net3
from net.model import Net4 as net4
from net.model import refineNet as refine
import torch.multiprocessing
torch.multiprocessing.set_sharing_strategy('file_system')
parser = argparse.ArgumentParser(description="PyTorch Derain")
#root
parser.add_argument("--train", default="/home/ws/Desktop/PL/ICGANdateset/training", type=str,
help="path to load train datasets(default: none)")
parser.add_argument("--test", default="/home/ws/Desktop/PL/ICGANdateset/test_syn", type=str,
help="path to load test datasets(default: none)")
parser.add_argument("--save_image_root", default='./result', type=str,
help="save test image root")
parser.add_argument("--save_root", default="/home/ws/Desktop/derain2020/checkpoints2", type=str,
help="path to save networks")
parser.add_argument("--pretrain_root", default="/home/ws/Desktop/derain2020/checkpoints", type=str,
help="path to pretrained net1 net2 net3 root")
#hypeparameters
parser.add_argument("--batchSize", type=int, default=16, help="training batch size")
parser.add_argument("--nEpoch", type=int, default=10000, help="number of epochs to train for")
parser.add_argument("--lr", type=float, default=1e-4, help="Learning Rate. Default=1e-4")
parser.add_argument("--lr1", type=float, default=5e-5, help="Learning Rate For pretrained net. Default=1e-5")
parser.add_argument("--train_print_fre", type=int, default=20, help="frequency of print train loss on train phase")
parser.add_argument("--test_frequency", type=int, default=3, help="frequency of test")
parser.add_argument("--test_print_fre", type=int, default=200, help="frequency of print train loss on test phase")
parser.add_argument("--cuda",type=str, default="Ture", help="Use cuda?")
parser.add_argument("--gpus", type=int, default=1, help="nums of gpu to use")
parser.add_argument("--startweights", default= 216, type=int, help="start number of net's weight , 0 is None")
parser.add_argument("--initmethod", default='xavier', type=str, help="xavier , kaiming , normal ,orthogonal ,default : xavier")
parser.add_argument("--startepoch", default=1, type=int, help="Manual epoch number (useful on restarts)")
parser.add_argument("--works", type=int, default=8, help="Number of works for data loader to use, Default: 1")
parser.add_argument("--momentum", default=0.9, type=float, help="SGD Momentum, Default: 0.9")
parser.add_argument("--report", default=False, type=bool, help="report to wechat")
parser.add_argument("--save_image", default=False, type=bool, help="save test image")
parser.add_argument("--pretrain_epoch", default=[93,169,123], type=list, help="pretrained epoch for Net1 Net2 Net3")
def main():
global opt, Net1 , Net2 , Net3 , Net4 , RefineNet , criterion_mse , criterion_ssim_map,criterion_ssim
opt = parser.parse_args()
print(opt)
cuda = opt.cuda
if cuda and not torch.cuda.is_available():
raise Exception("No GPU found, please run without --cuda")
#seed = 1334
#torch.manual_seed(seed)
#if cuda:
# torch.cuda.manual_seed(seed)
cudnn.benchmark = True
print("==========> Loading datasets")
train_dataset = derain_train_datasets_IC(opt.train, transform=Compose([
Resize(size= (256, 256)),
ToTensor()
]))
test_dataset = derain_train_datasets_IC(opt.test, transform=Compose([
Resize(size= (256, 256)),
ToTensor(),
]))
training_data_loader = DataLoader(dataset=train_dataset, num_workers=opt.works, batch_size=opt.batchSize,
pin_memory=True, shuffle=True)
testing_data_loader = DataLoader(dataset=test_dataset, num_workers=opt.works, batch_size=1, pin_memory=True,
shuffle=True)
if opt.initmethod == 'orthogonal':
init_function = weights_init_orthogonal
elif opt.initmethod == 'kaiming':
init_function = weights_init_kaiming
elif opt.initmethod == 'normal':
init_function = weights_init_normal
else:
init_function = weights_init_xavier
Net1 = net1()
Net1.apply(init_function)
Net2 = net2()
Net2.apply(init_function)
Net3 = net3()
Net3.apply(init_function)
Net4 = net4()
Net4.apply(init_function)
RefineNet = refine()
RefineNet.apply(init_function)
criterion_mse = nn.MSELoss(size_average=True)
criterion_ssim_map = SSIM_MAP()
criterion_ssim = SSIM()
print("==========> Setting GPU")
#if cuda:
if opt.cuda:
Net1 = nn.DataParallel(Net1, device_ids=[i for i in range(opt.gpus)]).cuda()
Net2 = nn.DataParallel(Net2, device_ids=[i for i in range(opt.gpus)]).cuda()
Net3 = nn.DataParallel(Net3, device_ids=[i for i in range(opt.gpus)]).cuda()
Net4 = nn.DataParallel(Net4, device_ids=[i for i in range(opt.gpus)]).cuda()
RefineNet = nn.DataParallel(RefineNet, device_ids=[i for i in range(opt.gpus)]).cuda()
criterion_ssim = criterion_ssim.cuda()
criterion_ssim_map = criterion_ssim_map.cuda()
criterion_mse= criterion_mse.cuda()
else:
raise Exception("it takes a long time without cuda ")
#print(net)
if opt.pretrain_root:
if os.path.exists(opt.pretrain_root):
print("=> loading net from '{}'".format(opt.pretrain_root))
weights = torch.load(opt.pretrain_root +"/w/%s.pth"%opt.pretrain_epoch[0])
Net1.load_state_dict(weights['state_dict'] )
weights = torch.load(opt.pretrain_root + "/u/%s.pth" % opt.pretrain_epoch[1])
Net2.load_state_dict(weights['state_dict'] )
weights = torch.load(opt.pretrain_root + "/res/%s.pth" % opt.pretrain_epoch[2])
Net3.load_state_dict(weights['state_dict'])
del weights
else:
print("=> no net found at '{}'".format(opt.pretrain_root))
# weights start from early
if opt.startweights:
if os.path.exists(opt.save_root):
print("=> loading checkpoint '{}'".format(opt.save_root))
weights = torch.load(opt.save_root + '/Net1/%s.pth'%opt.startweights)
Net1.load_state_dict(weights["state_dict"] )
weights = torch.load(opt.save_root + '/Net2/%s.pth' % opt.startweights)
Net2.load_state_dict(weights["state_dict"])
weights = torch.load(opt.save_root + '/Net3/%s.pth' % opt.startweights)
Net3.load_state_dict(weights["state_dict"])
weights = torch.load(opt.save_root + '/Net4/%s.pth' % opt.startweights)
Net4.load_state_dict(weights["state_dict"])
weights = torch.load(opt.save_root + '/refine/%s.pth' % opt.startweights)
RefineNet.load_state_dict(weights["state_dict"])
del weights
else:
raise Exception("'{}' is not a file , Check out it again".format(opt.save_root))
print("==========> Setting Optimizer")
optimizer1 = optim.Adam(filter(lambda p: p.requires_grad, Net1.parameters()), lr=opt.lr1)
optimizer2 = optim.Adam(filter(lambda p: p.requires_grad, Net2.parameters()), lr=opt.lr1)
optimizer3 = optim.Adam(filter(lambda p: p.requires_grad, Net3.parameters()), lr=opt.lr1)
optimizer4 = optim.Adam(filter(lambda p: p.requires_grad, Net4.parameters()), lr=opt.lr)
optimizer_Refine = optim.Adam(filter(lambda p: p.requires_grad, RefineNet.parameters()), lr=opt.lr)
optimizer = [ 1 , optimizer1 , optimizer2 , optimizer3 , optimizer4 , optimizer_Refine ]
print("==========> Training")
for epoch in range(opt.startepoch, opt.nEpoch + 1):
if epoch > 50000 :
opt.lr = 5e-5
opt.lr1 = 1e-6
optimizer[1] = optim.Adam(filter(lambda p: p.requires_grad, Net1.parameters()), lr=opt.lr1)
optimizer[2] = optim.Adam(filter(lambda p: p.requires_grad, Net2.parameters()), lr=opt.lr1)
optimizer[3] = optim.Adam(filter(lambda p: p.requires_grad, Net3.parameters()), lr=opt.lr1)
optimizer[4] = optim.Adam(filter(lambda p: p.requires_grad, Net4.parameters()), lr=opt.lr)
optimizer[5] = optim.Adam(filter(lambda p: p.requires_grad, RefineNet.parameters()), lr=opt.lr)
train(training_data_loader, optimizer, epoch)
if epoch % opt.test_frequency == 0 :
test(testing_data_loader ,epoch)
def train(training_data_loader, optimizer, epoch):
print("training ==========> epoch =", epoch, "lr =", opt.lr)
Net1.train()
Net2.train()
Net3.train()
Net4.train()
RefineNet.train()
t_loss = [] # save trainloss
for step, (data, label , _) in enumerate(training_data_loader, 1):
if opt.cuda and torch.cuda.is_available():
data = data.clone().detach().requires_grad_(True).cuda()
label = label.cuda()
else:
raise Exception("it takes a long time without cuda ")
data = data.cpu()
label = label.cpu()
Net1_out = Net1(data)
Net2_out = Net2(Net1_out)
Net3_out = Net3(Net2_out)
Net4_out = Net4( data - Net1_out ,data - Net2_out ,data - Net3_out )
RefineNet_out =RefineNet( Net1_out , Net2_out , Net3_out , data - Net4_out )
init_map = torch.ones(size=Net1_out.size()).cuda()
ssim_map1 = torch.mul(criterion_ssim_map(Net1_out , label) , init_map )
ssim_map2 = torch.mul(criterion_ssim_map(Net2_out , label) , ssim_map1 )
ssim_map3 = torch.mul(criterion_ssim_map(Net3_out , label) , ssim_map2 )
loss1 = torch.mul((1 - ssim_map1) , torch.abs(Net1_out - label)).mean()
loss2 = torch.mul((1 - ssim_map2) , torch.abs(Net2_out - label)).mean()
loss3 = torch.mul((1 - ssim_map3) , torch.abs(Net3_out - label)).mean()
#mse_loss = criterion_mse(RefineNet_out , label)
new_loss = torch.mul((1-criterion_ssim_map(RefineNet_out , label)) ,torch.abs(RefineNet_out-label)).mean().cuda()
ssim_loss = 1- criterion_ssim(RefineNet_out , label)
loss = new_loss + 0.0001 * (loss1 + loss2 +loss3) # + 0.001*ssim_loss
del Net1_out , Net2_out , Net3_out , Net4_out
Net1.zero_grad()
Net2.zero_grad()
Net3.zero_grad()
Net4.zero_grad()
RefineNet.zero_grad()
optimizer[1].zero_grad()
optimizer[2].zero_grad()
optimizer[3].zero_grad()
optimizer[4].zero_grad()
optimizer[5].zero_grad()
loss.backward()
optimizer[1].step()
optimizer[2].step()
optimizer[3].step()
optimizer[4].step()
optimizer[5].step()
if step % opt.train_print_fre == 0:
print("epoch{} step {} loss {:6f} new_loss {:6f} ssimloss {:6f} loss1 {:6f} loss2 {:6f} loss3 {:6f}".format(epoch, step,
loss.item(),
new_loss.item(),
ssim_loss.item(),
loss1.item(),
loss2.item(),
loss3.item()))
t_loss.append(loss.item())
del loss1, loss2, loss3 , loss
else:
# displaying to train loss
updata_epoch_loss_display( train_loss= t_loss , v_epoch= epoch , envr= "derain train")
def test(test_data_loader, epoch):
print("------> testing")
Net1.eval()
Net2.eval()
Net3.eval()
Net4.eval()
RefineNet.eval()
torch.cuda.empty_cache()
with torch.no_grad():
test_Psnr_sum = 0.0
test_Ssim_sum = 0.0
# showing list
test_Psnr_loss = []
test_Ssim_loss = []
dict_psnr_ssim = {}
for test_step, (data, label, data_path) in enumerate(test_data_loader, 1):
data = data.cuda()
label = label.cuda()
Net1_out = Net1(data)
Net2_out = Net2(Net1_out)
Net3_out = Net3(Net2_out)
Net4_out = Net4(data - Net1_out, data - Net2_out, data - Net3_out)
refineNet_out = RefineNet(Net1_out, Net2_out, Net3_out, data - Net4_out)
del Net1_out, Net2_out, Net3_out
loss = criterion_mse(refineNet_out, label)
Psnr, Ssim = get_psnr_ssim(refineNet_out, label)
Psnr = round(Psnr.item(), 4)
Ssim = round(Ssim.item(), 4)
# del derain , label
test_Psnr_sum += Psnr
test_Ssim_sum += Ssim
#if opt.save_image == True:
# dict_psnr_ssim["Psnr%s_Ssim%s" % (Psnr, Ssim)] = data_path
# out = refineNet_out.cpu().data[0]
# out = ToPILImage()(out)
# image_number = re.findall(r'\d+', data_path[0])[1]
# out.save( opt.save_image_root + "/%s_p:%s_s:%s.jpg" % (image_number, Psnr, Ssim))
if test_step % opt.test_print_fre == 0:
print("epoch={} Psnr={} Ssim={} loss{}".format(epoch, Psnr, Ssim, loss.item()))
test_Psnr_loss.append(test_Psnr_sum / test_step)
test_Ssim_loss.append(test_Ssim_sum / test_step)
else:
del loss
print("epoch={} avr_Psnr ={} avr_Ssim={}".format(epoch, test_Psnr_sum / test_step,
test_Ssim_sum / test_step))
write_test_perform("./perform_test.txt", test_Psnr_sum / test_step, test_Ssim_sum / test_step)
# visdom showing
print("---->testing over show in visdom")
display_Psnr_Ssim(Psnr=test_Psnr_sum / test_step, Ssim=test_Ssim_sum / test_step, v_epoch=epoch,
env="derain_test")
print("epoch {} train over-----> save net".format(epoch))
print("saving checkpoint save_root{}".format(opt.save_root))
if os.path.exists(opt.save_root):
save_checkpoint(root=opt.save_root, model=Net1, epoch=epoch, model_stage="Net1")
save_checkpoint(root=opt.save_root, model=Net2, epoch=epoch, model_stage="Net2")
save_checkpoint(root=opt.save_root, model=Net3, epoch=epoch, model_stage="Net3")
save_checkpoint(root=opt.save_root, model=Net4, epoch=epoch, model_stage="Net4")
save_checkpoint(root=opt.save_root, model=RefineNet, epoch=epoch, model_stage="refine")
print("finish save epoch{} checkporint".format({epoch}))
else:
raise Exception("saveroot :{} not found , Checkout it".format(opt.save_root))
#
print("all epoch is over ------ ")
print("show epoch and epoch_loss in visdom")
if __name__ == "__main__":
os.system('clear')
main()