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train_semisup.py
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train_semisup.py
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import torch
import torchvision.models as models
import torch.optim as optim
import argparse
from network.deeplabv3.deeplabv3 import *
from network.deeplabv2 import *
from build_data import *
from module_list import *
parser = argparse.ArgumentParser(description='Semi-supervised Segmentation with Perfect Labels')
parser.add_argument('--mode', default=None, type=str)
parser.add_argument('--port', default=None, type=int)
parser.add_argument('--gpu', default=0, type=int)
parser.add_argument('--num_labels', default=15, type=int, help='number of labelled training data, set 0 to use all training data')
parser.add_argument('--lr', default=2.5e-3, type=float)
parser.add_argument('--weight_decay', default=5e-4, type=float)
parser.add_argument('--dataset', default='cityscapes', type=str, help='pascal, cityscapes, sun')
parser.add_argument('--apply_aug', default='cutout', type=str, help='apply semi-supervised method: cutout cutmix classmix')
parser.add_argument('--id', default=1, type=int, help='number of repeated samples')
parser.add_argument('--weak_threshold', default=0.7, type=float)
parser.add_argument('--strong_threshold', default=0.97, type=float)
parser.add_argument('--apply_reco', action='store_true')
parser.add_argument('--num_negatives', default=512, type=int, help='number of negative keys')
parser.add_argument('--num_queries', default=256, type=int, help='number of queries per segment per image')
parser.add_argument('--temp', default=0.5, type=float)
parser.add_argument('--output_dim', default=256, type=int, help='output dimension from representation head')
parser.add_argument('--backbone', default='deeplabv3p', type=str, help='choose backbone: deeplabv3p, deeplabv2')
parser.add_argument('--seed', default=0, type=int)
args = parser.parse_args()
torch.manual_seed(args.seed)
np.random.seed(args.seed)
random.seed(args.seed)
data_loader = BuildDataLoader(args.dataset, args.num_labels)
train_l_loader, train_u_loader, test_loader = data_loader.build(supervised=False)
# Load Semantic Network
device = torch.device("cuda:{:d}".format(args.gpu) if torch.cuda.is_available() else "cpu")
if args.backbone == 'deeplabv3p':
model = DeepLabv3Plus(models.resnet101(pretrained=True), num_classes=data_loader.num_segments, output_dim=args.output_dim).to(device)
elif args.backbone == 'deeplabv2':
model = DeepLabv2(models.resnet101(pretrained=True), num_classes=data_loader.num_segments, output_dim=args.output_dim).to(device)
total_epoch = 200
optimizer = optim.SGD(model.parameters(), lr=args.lr, weight_decay=args.weight_decay, momentum=0.9, nesterov=True)
scheduler = PolyLR(optimizer, total_epoch, power=0.9)
ema = EMA(model, 0.99) # Mean teacher model
train_epoch = len(train_l_loader)
test_epoch = len(test_loader)
avg_cost = np.zeros((total_epoch, 10))
iteration = 0
for index in range(total_epoch):
cost = np.zeros(3)
train_l_dataset = iter(train_l_loader)
train_u_dataset = iter(train_u_loader)
model.train()
ema.model.train()
l_conf_mat = ConfMatrix(data_loader.num_segments)
u_conf_mat = ConfMatrix(data_loader.num_segments)
for i in range(train_epoch):
train_l_data, train_l_label = train_l_dataset.next()
train_l_data, train_l_label = train_l_data.to(device), train_l_label.to(device)
train_u_data, train_u_label = train_u_dataset.next()
train_u_data, train_u_label = train_u_data.to(device), train_u_label.to(device)
optimizer.zero_grad()
# generate pseudo-labels
with torch.no_grad():
pred_u, _ = ema.model(train_u_data)
pred_u_large_raw = F.interpolate(pred_u, size=train_u_label.shape[1:], mode='bilinear', align_corners=True)
pseudo_logits, pseudo_labels = torch.max(torch.softmax(pred_u_large_raw, dim=1), dim=1)
# random scale images first
train_u_aug_data, train_u_aug_label, train_u_aug_logits = \
batch_transform(train_u_data, pseudo_labels, pseudo_logits,
data_loader.crop_size, data_loader.scale_size, apply_augmentation=False)
# apply mixing strategy: cutout, cutmix or classmix
train_u_aug_data, train_u_aug_label, train_u_aug_logits = \
generate_unsup_data(train_u_aug_data, train_u_aug_label, train_u_aug_logits, mode=args.apply_aug)
# apply augmentation: color jitter + flip + gaussian blur
train_u_aug_data, train_u_aug_label, train_u_aug_logits = \
batch_transform(train_u_aug_data, train_u_aug_label, train_u_aug_logits,
data_loader.crop_size, (1.0, 1.0), apply_augmentation=True)
# generate labelled and unlabelled data loss
pred_l, rep_l = model(train_l_data)
pred_l_large = F.interpolate(pred_l, size=train_l_label.shape[1:], mode='bilinear', align_corners=True)
pred_u, rep_u = model(train_u_aug_data)
pred_u_large = F.interpolate(pred_u, size=train_l_label.shape[1:], mode='bilinear', align_corners=True)
rep_all = torch.cat((rep_l, rep_u))
pred_all = torch.cat((pred_l, pred_u))
# supervised-learning loss
sup_loss = compute_supervised_loss(pred_l_large, train_l_label)
# unsupervised-learning loss
unsup_loss = compute_unsupervised_loss(pred_u_large, train_u_aug_label, train_u_aug_logits, args.strong_threshold)
# apply regional contrastive loss
if args.apply_reco:
with torch.no_grad():
train_u_aug_mask = train_u_aug_logits.ge(args.weak_threshold).float()
mask_all = torch.cat(((train_l_label.unsqueeze(1) >= 0).float(), train_u_aug_mask.unsqueeze(1)))
mask_all = F.interpolate(mask_all, size=pred_all.shape[2:], mode='nearest')
label_l = F.interpolate(label_onehot(train_l_label, data_loader.num_segments), size=pred_all.shape[2:], mode='nearest')
label_u = F.interpolate(label_onehot(train_u_aug_label, data_loader.num_segments), size=pred_all.shape[2:], mode='nearest')
label_all = torch.cat((label_l, label_u))
prob_l = torch.softmax(pred_l, dim=1)
prob_u = torch.softmax(pred_u, dim=1)
prob_all = torch.cat((prob_l, prob_u))
reco_loss = compute_reco_loss(rep_all, label_all, mask_all, prob_all, args.strong_threshold,
args.temp, args.num_queries, args.num_negatives)
else:
reco_loss = torch.tensor(0.0)
loss = sup_loss + unsup_loss + reco_loss
loss.backward()
optimizer.step()
ema.update(model)
l_conf_mat.update(pred_l_large.argmax(1).flatten(), train_l_label.flatten())
u_conf_mat.update(pred_u_large_raw.argmax(1).flatten(), train_u_label.flatten())
cost[0] = sup_loss.item()
cost[1] = unsup_loss.item()
cost[2] = reco_loss.item()
avg_cost[index, :3] += cost / train_epoch
iteration += 1
avg_cost[index, 3:5] = l_conf_mat.get_metrics()
avg_cost[index, 5:7] = u_conf_mat.get_metrics()
with torch.no_grad():
ema.model.eval()
test_dataset = iter(test_loader)
conf_mat = ConfMatrix(data_loader.num_segments)
for i in range(test_epoch):
test_data, test_label = test_dataset.next()
test_data, test_label = test_data.to(device), test_label.to(device)
pred, rep = ema.model(test_data)
pred = F.interpolate(pred, size=test_label.shape[1:], mode='bilinear', align_corners=True)
loss = compute_supervised_loss(pred, test_label)
conf_mat.update(pred.argmax(1).flatten(), test_label.flatten())
avg_cost[index, 7] += loss.item() / test_epoch
avg_cost[index, 8:] = conf_mat.get_metrics()
scheduler.step()
print('EPOCH: {:04d} ITER: {:04d} | TRAIN [Loss | mIoU | Acc.]: {:.4f} {:.4f} {:.4f} {:.4f} {:.4f} {:.4f} {:.4f} || Test [Loss | mIoU | Acc.]: {:.4f} {:.4f} {:.4f}'
.format(index, iteration, avg_cost[index][0], avg_cost[index][1], avg_cost[index][2],
avg_cost[index][3], avg_cost[index][4], avg_cost[index][5], avg_cost[index][6], avg_cost[index][7], avg_cost[index][8],
avg_cost[index][9]))
print('Top: mIoU {:.4f} Acc {:.4f}'.format(avg_cost[:, 8].max(), avg_cost[:, 9].max()))
if avg_cost[index][8] >= avg_cost[:, 8].max():
if args.apply_reco:
torch.save(ema.model.state_dict(), 'model_weights/{}_label{}_semi_{}_reco_{}.pth'.format(args.dataset, args.num_labels, args.apply_aug, args.seed))
else:
torch.save(ema.model.state_dict(), 'model_weights/{}_label{}_semi_{}_{}.pth'.format(args.dataset, args.num_labels, args.apply_aug, args.seed))
if args.apply_reco:
np.save('logging/{}_label{}_semi_{}_reco_{}.npy'.format(args.dataset, args.num_labels, args.apply_aug, args.seed), avg_cost)
else:
np.save('logging/{}_label{}_semi_{}_{}.npy'.format(args.dataset, args.num_labels, args.apply_aug, args.seed), avg_cost)