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train.py
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train.py
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import argparse
import datetime
import random
import time
from pathlib import Path
import torch
from torch.utils.data import DataLoader, DistributedSampler
from crowd_datasets import build_dataset
from engine import *
from models import build_model
import os
from tensorboardX import SummaryWriter
import warnings
warnings.filterwarnings('ignore')
def get_args_parser():
parser = argparse.ArgumentParser('Set parameters for training P2PNet', add_help=False)
parser.add_argument('--lr', default=1e-4, type=float)
parser.add_argument('--lr_backbone', default=1e-5, type=float)
parser.add_argument('--batch_size', default=8, type=int)
parser.add_argument('--weight_decay', default=1e-4, type=float)
parser.add_argument('--epochs', default=3500, type=int)
parser.add_argument('--lr_drop', default=3500, type=int)
parser.add_argument('--clip_max_norm', default=0.1, type=float,
help='gradient clipping max norm')
# Model parameters
parser.add_argument('--frozen_weights', type=str, default=None,
help="Path to the pretrained model. If set, only the mask head will be trained")
# * Backbone
parser.add_argument('--backbone', default='vgg16_bn', type=str,
help="Name of the convolutional backbone to use")
# * Matcher
parser.add_argument('--set_cost_class', default=1, type=float,
help="Class coefficient in the matching cost")
parser.add_argument('--set_cost_point', default=0.05, type=float,
help="L1 point coefficient in the matching cost")
# * Loss coefficients
parser.add_argument('--point_loss_coef', default=0.0002, type=float)
parser.add_argument('--eos_coef', default=0.5, type=float,
help="Relative classification weight of the no-object class")
parser.add_argument('--row', default=2, type=int,
help="row number of anchor points")
parser.add_argument('--line', default=2, type=int,
help="line number of anchor points")
# dataset parameters
parser.add_argument('--dataset_file', default='SHHA')
parser.add_argument('--data_root', default='./new_public_density_data',
help='path where the dataset is')
parser.add_argument('--output_dir', default='./log',
help='path where to save, empty for no saving')
parser.add_argument('--checkpoints_dir', default='./ckpt',
help='path where to save checkpoints, empty for no saving')
parser.add_argument('--tensorboard_dir', default='./runs',
help='path where to save, empty for no saving')
parser.add_argument('--seed', default=42, type=int)
parser.add_argument('--resume', default='', help='resume from checkpoint')
parser.add_argument('--start_epoch', default=0, type=int, metavar='N',
help='start epoch')
parser.add_argument('--eval', action='store_true')
parser.add_argument('--num_workers', default=8, type=int)
parser.add_argument('--eval_freq', default=5, type=int,
help='frequency of evaluation, default setting is evaluating in every 5 epoch')
parser.add_argument('--gpu_id', default=0, type=int, help='the gpu used for training')
return parser
def main(args):
os.environ["CUDA_VISIBLE_DEVICES"] = '{}'.format(args.gpu_id)
# create the logging file
run_log_name = os.path.join(args.output_dir, 'run_log.txt')
with open(run_log_name, "w") as log_file:
log_file.write('Eval Log %s\n' % time.strftime("%c"))
#if args.frozen_weights is not None:
# assert args.masks, "Frozen training is meant for segmentation only"
# backup the arguments
print(args)
with open(run_log_name, "a") as log_file:
log_file.write("{}".format(args))
device = torch.device("cuda:0" if torch.cuda.is_available() else "cpu")
# fix the seed for reproducibility
seed = args.seed + utils.get_rank()
torch.manual_seed(seed)
np.random.seed(seed)
random.seed(seed)
# get the P2PNet model
model, criterion = build_model(args, training=True)
# move to GPU
model.to(device)
criterion.to(device)
model_without_ddp = model
n_parameters = sum(p.numel() for p in model.parameters() if p.requires_grad)
print('number of params:', n_parameters)
# use different optimation params for different parts of the model
param_dicts = [
{"params": [p for n, p in model_without_ddp.named_parameters() if "backbone" not in n and p.requires_grad]},
{
"params": [p for n, p in model_without_ddp.named_parameters() if "backbone" in n and p.requires_grad],
"lr": args.lr_backbone,
},
]
# Adam is used by default
optimizer = torch.optim.Adam(param_dicts, lr=args.lr)
lr_scheduler = torch.optim.lr_scheduler.StepLR(optimizer, args.lr_drop)
# create the dataset
loading_data = build_dataset(args=args)
# create the training and valiation set
train_set, val_set = loading_data(args.data_root)
# create the sampler used during training
sampler_train = torch.utils.data.RandomSampler(train_set)
sampler_val = torch.utils.data.SequentialSampler(val_set)
batch_sampler_train = torch.utils.data.BatchSampler(
sampler_train, args.batch_size, drop_last=True)
# the dataloader for training
data_loader_train = DataLoader(train_set, batch_sampler=batch_sampler_train,
collate_fn=utils.collate_fn_crowd, num_workers=args.num_workers)
data_loader_val = DataLoader(val_set, 1, sampler=sampler_val,
drop_last=False, collate_fn=utils.collate_fn_crowd, num_workers=args.num_workers)
if args.frozen_weights is not None:
checkpoint = torch.load(args.frozen_weights, map_location='cpu')
model_without_ddp.load_state_dict(checkpoint['model'])
#detr
# resume the weights and training state if exists
if args.resume:
checkpoint = torch.load(args.resume, map_location='cpu')
model_without_ddp.load_state_dict(checkpoint['model'])
if not args.eval and 'optimizer' in checkpoint and 'lr_scheduler' in checkpoint and 'epoch' in checkpoint:
optimizer.load_state_dict(checkpoint['optimizer'])
lr_scheduler.load_state_dict(checkpoint['lr_scheduler'])
args.start_epoch = checkpoint['epoch'] + 1
print("Start training")
start_time = time.time()
# save the performance during the training
mae = []
mse = []
# the logger writer
writer = SummaryWriter(args.tensorboard_dir)
step = 0
# training starts here
for epoch in range(args.start_epoch, args.epochs):
t1 = time.time()
stat = train_one_epoch(
model, criterion, data_loader_train, optimizer, device, epoch,
args.clip_max_norm)
# record the training states after every epoch
if writer is not None:
with open(run_log_name, "a") as log_file:
log_file.write("loss/loss@{}: {}".format(epoch, stat['loss']))
log_file.write("loss/loss_ce@{}: {}".format(epoch, stat['loss_ce']))
writer.add_scalar('loss/loss', stat['loss'], epoch)
writer.add_scalar('loss/loss_ce', stat['loss_ce'], epoch)
t2 = time.time()
print('[ep %d][lr %.7f][%.2fs]' % \
(epoch, optimizer.param_groups[0]['lr'], t2 - t1))
with open(run_log_name, "a") as log_file:
log_file.write('[ep %d][lr %.7f][%.2fs]' % (epoch, optimizer.param_groups[0]['lr'], t2 - t1))
# change lr according to the scheduler
lr_scheduler.step()
# save latest weights every epoch
checkpoint_latest_path = os.path.join(args.checkpoints_dir, 'latest.pth')
torch.save({
'model': model_without_ddp.state_dict(),
}, checkpoint_latest_path)
# run evaluation
if epoch % args.eval_freq == 0 and epoch != 0:
t1 = time.time()
result = evaluate_crowd_no_overlap(model, data_loader_val, device)
t2 = time.time()
mae.append(result[0])
mse.append(result[1])
# print the evaluation results
print('=======================================test=======================================')
print("mae:", result[0], "mse:", result[1], "time:", t2 - t1, "best mae:", np.min(mae), )
with open(run_log_name, "a") as log_file:
log_file.write("mae:{}, mse:{}, time:{}, best mae:{}".format(result[0],
result[1], t2 - t1, np.min(mae)))
print('=======================================test=======================================')
# recored the evaluation results
if writer is not None:
with open(run_log_name, "a") as log_file:
log_file.write("metric/mae@{}: {}".format(step, result[0]))
log_file.write("metric/mse@{}: {}".format(step, result[1]))
writer.add_scalar('metric/mae', result[0], step)
writer.add_scalar('metric/mse', result[1], step)
step += 1
# save the best model since begining
if abs(np.min(mae) - result[0]) < 0.01:
checkpoint_best_path = os.path.join(args.checkpoints_dir, 'best_mae.pth')
torch.save({
'model': model_without_ddp.state_dict(),
}, checkpoint_best_path)
# total time for training
total_time = time.time() - start_time
total_time_str = str(datetime.timedelta(seconds=int(total_time)))
print('Training time {}'.format(total_time_str))
if __name__ == '__main__':
parser = argparse.ArgumentParser('P2PNet training and evaluation script', parents=[get_args_parser()])
args = parser.parse_args()
main(args)