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main.py
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main.py
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from __future__ import absolute_import
import sys
sys.path.append('./')
import argparse
import os
os.environ["TF_CPP_MIN_LOG_LEVEL"] = "3"
import os.path as osp
import numpy as np
import math
import time
import torch
from torch import nn, optim
from torch.backends import cudnn
from torch.utils.data import DataLoader, SubsetRandomSampler
from config import get_args
from lib import datasets, evaluation_metrics, models
from lib.models.model_builder import ModelBuilder
from lib.datasets.dataset import LmdbDataset, AlignCollate
from lib.datasets.concatdataset import ConcatDataset
from lib.loss import SequenceCrossEntropyLoss
from lib.trainers import Trainer
from lib.evaluators import Evaluator
from lib.utils.logging import Logger, TFLogger
from lib.utils.serialization import load_checkpoint, save_checkpoint
from lib.utils.osutils import make_symlink_if_not_exists
global_args = get_args(sys.argv[1:])
def get_data(data_dir, voc_type, max_len, num_samples, height, width, batch_size, workers, is_train, keep_ratio):
if isinstance(data_dir, list):
dataset_list = []
for data_dir_ in data_dir:
dataset_list.append(LmdbDataset(data_dir_, voc_type, max_len, num_samples))
dataset = ConcatDataset(dataset_list)
else:
dataset = LmdbDataset(data_dir, voc_type, max_len, num_samples)
print('total image: ', len(dataset))
if is_train:
data_loader = DataLoader(dataset, batch_size=batch_size, num_workers=workers,
shuffle=True, pin_memory=True, drop_last=True,
collate_fn=AlignCollate(imgH=height, imgW=width, keep_ratio=keep_ratio))
else:
data_loader = DataLoader(dataset, batch_size=batch_size, num_workers=workers,
shuffle=False, pin_memory=True, drop_last=False,
collate_fn=AlignCollate(imgH=height, imgW=width, keep_ratio=keep_ratio))
return dataset, data_loader
def get_dataset(data_dir, voc_type, max_len, num_samples):
if isinstance(data_dir, list):
dataset_list = []
for data_dir_ in data_dir:
dataset_list.append(LmdbDataset(data_dir_, voc_type, max_len, num_samples))
dataset = ConcatDataset(dataset_list)
else:
dataset = LmdbDataset(data_dir, voc_type, max_len, num_samples)
print('total image: ', len(dataset))
return dataset
def get_dataloader(synthetic_dataset, real_dataset, height, width, batch_size, workers,
is_train, keep_ratio):
num_synthetic_dataset = len(synthetic_dataset)
num_real_dataset = len(real_dataset)
synthetic_indices = list(np.random.permutation(num_synthetic_dataset))
synthetic_indices = synthetic_indices[num_real_dataset:]
real_indices = list(np.random.permutation(num_real_dataset) + num_synthetic_dataset)
concated_indices = synthetic_indices + real_indices
assert len(concated_indices) == num_synthetic_dataset
sampler = SubsetRandomSampler(concated_indices)
concated_dataset = ConcatDataset([synthetic_dataset, real_dataset])
print('total image: ', len(concated_dataset))
data_loader = DataLoader(concated_dataset, batch_size=batch_size, num_workers=workers,
shuffle=False, pin_memory=True, drop_last=True, sampler=sampler,
collate_fn=AlignCollate(imgH=height, imgW=width, keep_ratio=keep_ratio))
return concated_dataset, data_loader
def main(args):
np.random.seed(args.seed)
torch.manual_seed(args.seed)
torch.cuda.manual_seed(args.seed)
torch.cuda.manual_seed_all(args.seed)
cudnn.benchmark = True
torch.backends.cudnn.deterministic = True
args.cuda = args.cuda and torch.cuda.is_available()
if args.cuda:
print('using cuda.')
torch.set_default_tensor_type('torch.cuda.FloatTensor')
else:
torch.set_default_tensor_type('torch.FloatTensor')
# Redirect print to both console and log file
if not args.evaluate:
# make symlink
make_symlink_if_not_exists(osp.join(args.real_logs_dir, args.logs_dir), osp.dirname(osp.normpath(args.logs_dir)))
sys.stdout = Logger(osp.join(args.logs_dir, 'log.txt'))
train_tfLogger = TFLogger(osp.join(args.logs_dir, 'train'))
eval_tfLogger = TFLogger(osp.join(args.logs_dir, 'eval'))
# Save the args to disk
if not args.evaluate:
cfg_save_path = osp.join(args.logs_dir, 'cfg.txt')
cfgs = vars(args)
with open(cfg_save_path, 'w') as f:
for k, v in cfgs.items():
f.write('{}: {}\n'.format(k, v))
# Create data loaders
if args.height is None or args.width is None:
args.height, args.width = (32, 100)
if not args.evaluate:
train_dataset, train_loader = \
get_data(args.synthetic_train_data_dir, args.voc_type, args.max_len, args.num_train,
args.height, args.width, args.batch_size, args.workers, True, args.keep_ratio)
test_dataset, test_loader = \
get_data(args.test_data_dir, args.voc_type, args.max_len, args.num_test,
args.height, args.width, args.batch_size, args.workers, False, args.keep_ratio)
if args.evaluate:
max_len = test_dataset.max_len
else:
max_len = max(train_dataset.max_len, test_dataset.max_len)
train_dataset.max_len = test_dataset.max_len = max_len
# Create model
model = ModelBuilder(arch=args.arch, rec_num_classes=test_dataset.rec_num_classes,
sDim=args.decoder_sdim, attDim=args.attDim, max_len_labels=max_len,
eos=test_dataset.char2id[test_dataset.EOS], STN_ON=args.STN_ON)
# Load from checkpoint
if args.evaluation_metric == 'accuracy':
best_res = 0
elif args.evaluation_metric == 'editdistance':
best_res = math.inf
else:
raise ValueError("Unsupported evaluation metric:", args.evaluation_metric)
start_epoch = 0
start_iters = 0
if args.resume:
checkpoint = load_checkpoint(args.resume)
model.load_state_dict(checkpoint['state_dict'])
# compatibility with the epoch-wise evaluation version
if 'epoch' in checkpoint.keys():
start_epoch = checkpoint['epoch']
else:
start_iters = checkpoint['iters']
start_epoch = int(start_iters // len(train_loader)) if not args.evaluate else 0
best_res = checkpoint['best_res']
print("=> Start iters {} best res {:.1%}"
.format(start_iters, best_res))
if args.cuda:
device = torch.device("cuda")
model = model.to(device)
model = nn.DataParallel(model)
# Evaluator
evaluator = Evaluator(model, args.evaluation_metric, args.cuda)
if args.evaluate:
print('Test on {0}:'.format(args.test_data_dir))
if len(args.vis_dir) > 0:
vis_dir = osp.join(args.logs_dir, args.vis_dir)
if not osp.exists(vis_dir):
os.makedirs(vis_dir)
else:
vis_dir = None
start = time.time()
evaluator.evaluate(test_loader, dataset=test_dataset, vis_dir=vis_dir)
print('it took {0} s.'.format(time.time() - start))
return
# Optimizer
param_groups = model.parameters()
param_groups = filter(lambda p: p.requires_grad, param_groups)
optimizer = optim.Adadelta(param_groups, lr=args.lr, weight_decay=args.weight_decay)
scheduler = optim.lr_scheduler.MultiStepLR(optimizer, milestones=[4,5], gamma=0.1)
# Trainer
loss_weights = {}
loss_weights['loss_rec'] = 1.
if args.debug:
args.print_freq = 1
trainer = Trainer(model, args.evaluation_metric, args.logs_dir,
iters=start_iters, best_res=best_res, grad_clip=args.grad_clip,
use_cuda=args.cuda, loss_weights=loss_weights)
# Start training
evaluator.evaluate(test_loader, step=0, tfLogger=eval_tfLogger, dataset=test_dataset)
for epoch in range(start_epoch, args.epochs):
scheduler.step(epoch)
current_lr = optimizer.param_groups[0]['lr']
trainer.train(epoch, train_loader, optimizer, current_lr,
print_freq=args.print_freq,
train_tfLogger=train_tfLogger,
is_debug=args.debug,
evaluator=evaluator,
test_loader=test_loader,
eval_tfLogger=eval_tfLogger,
test_dataset=test_dataset)
# Final test
print('Test with best model:')
checkpoint = load_checkpoint(osp.join(args.logs_dir, 'model_best.pth.tar'))
model.module.load_state_dict(checkpoint['state_dict'])
evaluator.evaluate(test_loader, dataset=test_dataset)
# Close the tensorboard logger
train_tfLogger.close()
eval_tfLogger.close()
if __name__ == '__main__':
# parse the config
args = get_args(sys.argv[1:])
main(args)