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train_ft_robot.py
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train_ft_robot.py
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import argparse
import torch
import torch.nn as nn
from torch.utils import data, model_zoo
import numpy as np
import pickle
from torch.autograd import Variable
import torch.optim as optim
import scipy.misc
import torch.backends.cudnn as cudnn
import torch.nn.functional as F
import sys
import os
import os.path as osp
import random
import time
import yaml
import swa_utils
import copy
from tensorboardX import SummaryWriter
from trainer_ms_variance import AD_Trainer
from utils.loss import CrossEntropy2d
from utils.tool import adjust_learning_rate, adjust_learning_rate_D, Timer
from dataset.robot_dataset import robotDataSet
from dataset.robot_pseudo_dataset import robot_pseudo_DataSet
IMG_MEAN = np.array((104.00698793, 116.66876762, 122.67891434), dtype=np.float32)
AUTOAUG = False
AUTOAUG_TARGET = False
MODEL = 'DeepLab'
BATCH_SIZE = 16
ITER_SIZE = 1
NUM_WORKERS = 2
DATA_DIRECTORY = './data/Oxford_Robot_ICCV19'
DATA_LIST_PATH = './dataset/robot_list/train.txt'
DROPRATE = 0.1
IGNORE_LABEL = 255
INPUT_SIZE = '1280,960'
DATA_DIRECTORY_TARGET = './data/Oxford_Robot_ICCV19'
DATA_LIST_PATH_TARGET = './dataset/robot_list/train.txt'
INPUT_SIZE_TARGET = '1280,960'
CROP_SIZE = '640, 360'
LEARNING_RATE = 2.5e-4
MOMENTUM = 0.9
MAX_VALUE = 2
NUM_CLASSES = 9
NUM_STEPS = 100000
NUM_STEPS_STOP = 100000 # early stopping
POWER = 0.9
RANDOM_SEED = 1234
RESTORE_FROM = 'http://vllab.ucmerced.edu/ytsai/CVPR18/DeepLab_resnet_pretrained_init-f81d91e8.pth'
SAVE_NUM_IMAGES = 2
SAVE_PRED_EVERY = 5000
SNAPSHOT_DIR = './snapshots/'
THRESHOLD = 1.0
WEIGHT_DECAY = 0.0005
WARM_UP = 0 # no warmup
LOG_DIR = './log'
LEARNING_RATE_D = 1e-4
LAMBDA_SEG = 0.1
LAMBDA_ADV_TARGET1 = 0.0002
LAMBDA_ADV_TARGET2 = 0.001
LAMBDA_ME_TARGET = 0
LAMBDA_KL_TARGET = 0
TARGET = 'robot'
SET = 'train'
NORM_STYLE = 'bn' # or in
def get_arguments():
"""Parse all the arguments provided from the CLI.
Returns:
A list of parsed arguments.
"""
parser = argparse.ArgumentParser(description="DeepLab-ResNet Network")
parser.add_argument("--autoaug", type=bool, default=AUTOAUG, help="use augmentation or not" )
parser.add_argument("--autoaug_target", type=bool, default=AUTOAUG_TARGET, help="use augmentation or not" )
parser.add_argument("--model", type=str, default=MODEL,
help="available options : DeepLab")
parser.add_argument("--target", type=str, default=TARGET,
help="available options : cityscapes")
parser.add_argument("--batch-size", type=int, default=BATCH_SIZE,
help="Number of images sent to the network in one step.")
parser.add_argument("--iter-size", type=int, default=ITER_SIZE,
help="Accumulate gradients for ITER_SIZE iterations.")
parser.add_argument("--num-workers", type=int, default=NUM_WORKERS,
help="number of workers for multithread dataloading.")
parser.add_argument("--data-dir", type=str, default=DATA_DIRECTORY,
help="Path to the directory containing the source dataset.")
parser.add_argument("--data-list", type=str, default=DATA_LIST_PATH,
help="Path to the file listing the images in the source dataset.")
parser.add_argument("--droprate", type=float, default=DROPRATE,
help="DropRate.")
parser.add_argument("--ignore-label", type=int, default=IGNORE_LABEL,
help="The index of the label to ignore during the training.")
parser.add_argument("--input-size", type=str, default=INPUT_SIZE,
help="Comma-separated string with height and width of source images.")
parser.add_argument("--crop-size", type=str, default=CROP_SIZE,
help="Comma-separated string with height and width of source images.")
parser.add_argument("--data-dir-target", type=str, default=DATA_DIRECTORY_TARGET,
help="Path to the directory containing the target dataset.")
parser.add_argument("--data-list-target", type=str, default=DATA_LIST_PATH_TARGET,
help="Path to the file listing the images in the target dataset.")
parser.add_argument("--input-size-target", type=str, default=INPUT_SIZE_TARGET,
help="Comma-separated string with height and width of target images.")
parser.add_argument("--is-training", action="store_true",
help="Whether to updates the running means and variances during the training.")
parser.add_argument("--learning-rate", type=float, default=LEARNING_RATE,
help="Base learning rate for training with polynomial decay.")
parser.add_argument("--learning-rate-D", type=float, default=LEARNING_RATE_D,
help="Base learning rate for discriminator.")
parser.add_argument("--lambda-seg", type=float, default=LAMBDA_SEG,
help="lambda_seg.")
parser.add_argument("--lambda-adv-target1", type=float, default=LAMBDA_ADV_TARGET1,
help="lambda_adv for adversarial training.")
parser.add_argument("--lambda-adv-target2", type=float, default=LAMBDA_ADV_TARGET2,
help="lambda_adv for adversarial training.")
parser.add_argument("--lambda-me-target", type=float, default=LAMBDA_ME_TARGET,
help="lambda_me for minimize cross entropy loss on target.")
parser.add_argument("--lambda-kl-target", type=float, default=LAMBDA_KL_TARGET,
help="lambda_me for minimize kl loss on target.")
parser.add_argument("--lambda-long", type=float, default=0,
help="lambda_long for minimize long-term consistency loss on target.")
parser.add_argument("--momentum", type=float, default=MOMENTUM,
help="Momentum component of the optimiser.")
parser.add_argument("--max-value", type=float, default=MAX_VALUE,
help="Max Value of Class Weight.")
parser.add_argument("--norm-style", type=str, default=NORM_STYLE,
help="Norm Style in the final classifier.")
parser.add_argument("--not-restore-last", action="store_true",
help="Whether to not restore last (FC) layers.")
parser.add_argument("--num-classes", type=int, default=NUM_CLASSES,
help="Number of classes to predict (including background).")
parser.add_argument("--num-steps", type=int, default=NUM_STEPS,
help="Number of training steps.")
parser.add_argument("--num-steps-stop", type=int, default=NUM_STEPS_STOP,
help="Number of training steps for early stopping.")
parser.add_argument("--power", type=float, default=POWER,
help="Decay parameter to compute the learning rate.")
parser.add_argument("--random-mirror", action="store_true",
help="Whether to randomly mirror the inputs during the training.")
parser.add_argument("--random-scale", action="store_true",
help="Whether to randomly scale the inputs during the training.")
parser.add_argument("--fp16", action="store_true",
help="Use FP16.")
parser.add_argument("--random-seed", type=int, default=RANDOM_SEED,
help="Random seed to have reproducible results.")
parser.add_argument("--restore-from", type=str, default=RESTORE_FROM,
help="Where restore model parameters from.")
parser.add_argument("--save-num-images", type=int, default=SAVE_NUM_IMAGES,
help="How many images to save.")
parser.add_argument("--save-pred-every", type=int, default=SAVE_PRED_EVERY,
help="Save summaries and checkpoint every often.")
parser.add_argument("--snapshot-dir", type=str, default=SNAPSHOT_DIR,
help="Where to save snapshots of the model.")
parser.add_argument("--weight-decay", type=float, default=WEIGHT_DECAY,
help="Regularisation parameter for L2-loss.")
parser.add_argument("--adam", action='store_true', help="use adam optimizer.")
parser.add_argument("--vggbn", action='store_true', help="use vgg16 with bn.")
parser.add_argument("--warm-up", type=float, default=WARM_UP, help = 'warm up iteration')
parser.add_argument("--threshold", type=float, default=THRESHOLD, help = 'warm up iteration')
parser.add_argument("--cpu", action='store_true', help="choose to use cpu device.")
parser.add_argument("--swa", action='store_true', help="using moving average.")
parser.add_argument("--swa_start", type=int, default=0, help="start from iteration")
parser.add_argument("--swa_every", type=int, default=5000, help="start from iteration")
parser.add_argument("--slow_fast", action='store_true', help="using slow_fast.")
parser.add_argument("--ema", type=float, default=0, help="start from iteration")
parser.add_argument("--class-balance", action='store_true', help="class balance.")
parser.add_argument("--use-blur", action='store_true', help="use se block.")
parser.add_argument("--use-se", action='store_true', help="use se block.")
parser.add_argument("--cosine", action='store_true', help="use cosine learning rate after swa_start.")
parser.add_argument("--mse", action='store_true', help="use se block.")
parser.add_argument("--rkl", action='store_true', help="use se block.")
parser.add_argument("--only-hard-label",type=float, default=0,
help="class balance.")
parser.add_argument("--train_bn", action='store_true', help="train batch normalization.")
parser.add_argument("--adaboost", action='store_true', help="enable adaboost.")
parser.add_argument("--adatype", type=str, default='variance', choices=['variance','entropy'], help="adaboost type." )
parser.add_argument("--sam", action='store_true', help="enable sam.")
parser.add_argument("--sync_bn", action='store_true', help="sync batch normalization.")
parser.add_argument("--often-balance", action='store_true', help="balance the apperance times.")
parser.add_argument("--gpu-ids", type=str, default='0', help = 'choose gpus')
parser.add_argument("--tensorboard", action='store_false', help="choose whether to use tensorboard.")
parser.add_argument("--log-dir", type=str, default=LOG_DIR,
help="Path to the directory of log.")
parser.add_argument("--set", type=str, default=SET,
help="choose adaptation set.")
return parser.parse_args()
args = get_arguments()
# save opts
if not os.path.exists(args.snapshot_dir):
os.makedirs(args.snapshot_dir)
with open('%s/opts.yaml'%args.snapshot_dir, 'w') as fp:
yaml.dump(vars(args), fp, default_flow_style=False)
def main():
"""Create the model and start the training."""
w, h = map(int, args.input_size.split(','))
args.input_size = (w, h)
w, h = map(int, args.crop_size.split(','))
args.crop_size = (h, w)
w, h = map(int, args.input_size_target.split(','))
args.input_size_target = (w, h)
cudnn.enabled = True
cudnn.benchmark = True
str_ids = args.gpu_ids.split(',')
gpu_ids = []
for str_id in str_ids:
gid = int(str_id)
if gid >=0:
gpu_ids.append(gid)
num_gpu = len(gpu_ids)
args.multi_gpu = False
if num_gpu>1:
args.multi_gpu = True
Trainer = AD_Trainer(args)
Trainer.G = torch.nn.DataParallel( Trainer.G, gpu_ids)
Trainer.D1 = torch.nn.DataParallel( Trainer.D1, gpu_ids)
Trainer.D2 = torch.nn.DataParallel( Trainer.D2, gpu_ids)
else:
Trainer = AD_Trainer(args)
print(Trainer)
train_dataset = robot_pseudo_DataSet(args.data_dir, args.data_list,
max_iters=None,
resize_size=args.input_size,
crop_size=args.crop_size,
scale=True, mirror=True, mean=IMG_MEAN,
set='train', autoaug = args.autoaug, threshold = args.threshold)
train_number = len(train_dataset.img_ids)
trainloader = data.DataLoader(train_dataset,
batch_size=args.batch_size, shuffle=True, num_workers=args.num_workers, pin_memory=True, drop_last=True)
trainloader_iter = enumerate(trainloader)
# init adaboost loader
AD_trainloader = trainloader
target_dataset = robotDataSet(args.data_dir_target, args.data_list_target,
max_iters=None,
resize_size=args.input_size_target,
crop_size=args.crop_size,
scale=False, mirror=args.random_mirror, mean=IMG_MEAN,
set=args.set, autoaug = args.autoaug_target)
target_number = len(target_dataset.img_ids)
print(target_number)
previous_weights = torch.FloatTensor( [1/target_number]*target_number )
targetloader = data.DataLoader(target_dataset,
batch_size=args.batch_size, shuffle=True, num_workers=args.num_workers,
pin_memory=True, drop_last=True)
targetloader_iter = enumerate(targetloader)
targetloader2 = data.DataLoader( robotDataSet(args.data_dir_target, args.data_list_target, crop_size=(960, 1280), resize_size=(1280, 960), mean=IMG_MEAN, scale=False, mirror=False, set='train'),
batch_size=8, shuffle=False, pin_memory=True, num_workers=4)
targetloader2_shuffle = data.DataLoader( robotDataSet(args.data_dir_target, args.data_list_target, max_iters=target_number*3, crop_size=(480, 960), resize_size=(1280, 960), mean=IMG_MEAN, scale=False, mirror=False, set='train'),
batch_size=18, shuffle=True, pin_memory=True, num_workers=4)
# set up tensor board
if args.tensorboard:
args.log_dir += '/'+ os.path.basename(args.snapshot_dir)
if not os.path.exists(args.log_dir):
os.makedirs(args.log_dir)
writer = SummaryWriter(args.log_dir)
swa_flag = args.swa
swa_start = args.swa_start
for i_iter in range(args.num_steps):
loss_seg_value1 = 0
loss_adv_target_value1 = 0
loss_D_value1 = 0
loss_seg_value2 = 0
loss_adv_target_value2 = 0
loss_D_value2 = 0
# moving average
if args.swa and swa_flag and i_iter >= swa_start:
swa_flag = False
if args.ema>0:
#ema policy
ema_avg = lambda averaged_model_parameter, model_parameter, num_averaged:\
args.ema * averaged_model_parameter + (1-args.ema) * model_parameter
swa_model = swa_utils.AveragedModel(Trainer.G, avg_fn=ema_avg)
else:
swa_model = swa_utils.AveragedModel(Trainer.G)
#print('start weight avg. Update Batchnorm. Taking a while')
#with torch.no_grad():
# swa_utils.update_bn(targetloader2_bn, swa_model, device ='cuda' )
Trainer.swa_model = swa_model.cpu()
adjust_learning_rate(Trainer.gen_opt , i_iter, args)
#adjust_learning_rate_D(Trainer.dis1_opt, i_iter, args)
#adjust_learning_rate_D(Trainer.dis2_opt, i_iter, args)
for sub_i in range(args.iter_size):
# train G
# train with source
try:
_, batch = trainloader_iter.__next__()
except:
if args.adaboost:
trainloader_iter = enumerate(AD_trainloader)
else:
trainloader_iter = enumerate(trainloader)
_, batch = trainloader_iter.__next__()
try:
_, batch_t = targetloader_iter.__next__()
except:
targetloader_iter = enumerate(targetloader)
_, batch_t = targetloader_iter.__next__()
images, labels, _, _ = batch
images = images.cuda()
labels = labels.long().cuda()
images_t, labels_t, _, _ = batch_t
images_t = images_t.cuda()
labels_t = labels_t.long().cuda()
with Timer("Elapsed time in update: %f"):
loss, loss_seg1, loss_seg2, loss_adv_target1, loss_adv_target2, loss_me, loss_kl, pred1, pred2, pred_target1, pred_target2, val_loss = Trainer.gen_update(images, images_t, labels, labels_t, i_iter)
loss_seg_value1 += loss_seg1.item() / args.iter_size
loss_seg_value2 += loss_seg2.item() / args.iter_size
loss_adv_target_value1 += loss_adv_target1 / args.iter_size
loss_adv_target_value2 += loss_adv_target2 / args.iter_size
loss_me_value = loss_me
if args.fp16:
with amp.scale_loss(loss, self.gen_opt) as scaled_loss:
scaled_loss.backward()
else:
loss.backward()
if args.sam: # second forward-backward pass
Trainer.gen_opt.first_step(zero_grad=True)
loss, loss_seg1, loss_seg2, loss_adv_target1, loss_adv_target2, loss_me, loss_kl, pred1, pred2, pred_target1, pred_target2, val_loss = Trainer.gen_update(images, images_t, labels, labels_t, i_iter)
loss.backward() # make sure to do a full forward pass
Trainer.gen_opt.second_step(zero_grad=True)
else:
Trainer.gen_opt.step()
if args.lambda_adv_target1 > 0 and args.lambda_adv_target2 > 0:
loss_D1, loss_D2 = Trainer.dis_update(pred1, pred2, pred_target1, pred_target2)
loss_D_value1 += loss_D1.item()
loss_D_value2 += loss_D2.item()
else:
loss_D_value1 = 0
loss_D_value2 = 0
del pred1, pred2, pred_target1, pred_target2, images, images_t, labels, labels_t
if args.tensorboard:
scalar_info = {
'loss_seg1': loss_seg_value1,
'loss_seg2': loss_seg_value2,
'loss_adv_target1': loss_adv_target_value1,
'loss_adv_target2': loss_adv_target_value2,
'loss_me_target': loss_me_value,
'loss_kl_target': loss_kl,
'loss_D1': loss_D_value1,
'loss_D2': loss_D_value2,
'val_loss': val_loss,
}
if i_iter % 100 == 0:
for key, val in scalar_info.items():
writer.add_scalar(key, val, i_iter)
print('exp = {}'.format(args.snapshot_dir))
print('epoch = %d'% (i_iter* args.batch_size//target_number))
print(
'\033[1m iter = %8d/%8d \033[0m loss_seg1 = %.3f loss_seg2 = %.3f loss_me = %.3f loss_kl = %.3f loss_adv1 = %.3f, loss_adv2 = %.3f loss_D1 = %.3f loss_D2 = %.3f, val_loss=%.3f'%(i_iter, args.num_steps, loss_seg_value1, loss_seg_value2, loss_me_value, loss_kl, loss_adv_target_value1, loss_adv_target_value2, loss_D_value1, loss_D_value2, val_loss))
# clear loss
del loss, loss_seg1, loss_seg2, loss_adv_target1, loss_adv_target2, loss_me, loss_kl, val_loss
if i_iter >= args.num_steps_stop - 1:
print('save model ...')
torch.save(Trainer.G.state_dict(), osp.join(args.snapshot_dir, 'GTA5_' + str(args.num_steps_stop) + '.pth'))
#torch.save(Trainer.D1.state_dict(), osp.join(args.snapshot_dir, 'GTA5_' + str(args.num_steps_stop) + '_D1.pth'))
#torch.save(Trainer.D2.state_dict(), osp.join(args.snapshot_dir, 'GTA5_' + str(args.num_steps_stop) + '_D2.pth'))
if args.swa and i_iter >= swa_start:
Trainer.swa_model.cuda()
Trainer.swa_model.update_parameters(Trainer.G)
with torch.no_grad():
swa_utils.update_bn( targetloader2_shuffle, Trainer.swa_model, device = 'cuda')
torch.save(Trainer.swa_model.module.state_dict(), osp.join(args.snapshot_dir, 'GTA5_' + str(i_iter) + '_average.pth'))
break
if i_iter % args.save_pred_every == 0 and i_iter != 0:
print('taking snapshot ...')
torch.save(Trainer.G.state_dict(), osp.join(args.snapshot_dir, 'GTA5_' + str(i_iter) + '.pth'))
#torch.save(Trainer.D1.state_dict(), osp.join(args.snapshot_dir, 'GTA5_' + str(i_iter) + '_D1.pth'))
#torch.save(Trainer.D2.state_dict(), osp.join(args.snapshot_dir, 'GTA5_' + str(i_iter) + '_D2.pth'))
# update model every 5000 iteration, saving moving average model
if i_iter % args.swa_every == 0 and i_iter >= swa_start:
if args.swa:
Trainer.swa_model.cuda()
Trainer.swa_model.update_parameters(Trainer.G)
Trainer.G.cpu() # save memory
with torch.no_grad():
swa_utils.update_bn( targetloader2_shuffle, Trainer.swa_model, device = 'cuda')
torch.save(Trainer.swa_model.module.state_dict(), osp.join(args.snapshot_dir, 'GTA5_' + str(i_iter) + '_average.pth'))
if args.slow_fast:
# Trainer.G = copy.deepcopy(Trainer.swa_model.module) #Optimizer will not update it.
Trainer.G.load_state_dict(Trainer.swa_model.module.state_dict())
Trainer.swa_model.cpu()
Trainer.G.train().cuda()
if args.adaboost:
with torch.no_grad():
weights = Trainer.make_sample_weights(targetloader2, previous_weights)
previous_weights = weights
print(torch.sum(weights))
sampler = torch.utils.data.sampler.WeightedRandomSampler(weights, len(weights))
AD_targetloader = data.DataLoader(target_dataset, sampler = sampler, batch_size=args.batch_size, num_workers=args.num_workers, pin_memory=True, drop_last=True)
targetloader_iter = enumerate(AD_targetloader)
if args.tensorboard:
writer.close()
if __name__ == '__main__':
main()