示例#1
0
def test(opt):
    os.environ['CUDA_VISIBLE_DEVICES'] = opt.gpus_str

    Dataset = dataset_factory[opt.dataset]
    opt = opts().update_dataset_info_and_set_heads(opt, Dataset)
    print(opt)
    Logger(opt)
    Detector = detector_factory[opt.task]

    split = 'val' if not opt.trainval else 'test'
    dataset = Dataset(opt, split)
    detector = Detector(opt)

    results = {}
    num_iters = len(dataset)
    bar = Bar('{}'.format(opt.exp_id), max=num_iters)
    time_stats = ['tot', 'load', 'pre', 'net', 'dec', 'post', 'merge']
    avg_time_stats = {t: AverageMeter() for t in time_stats}
    for ind in range(num_iters):
        img_id = dataset.images[ind]
        img_info = dataset.coco.loadImgs(ids=[img_id])[0]
        img_path = os.path.join(dataset.img_dir, img_info['file_name'])

        if opt.task == 'ddd':
            ret = detector.run(img_path, img_info['calib'])
        else:
            ret = detector.run(img_path)

        results[img_id] = ret['results']

        Bar.suffix = '[{0}/{1}]|Tot: {total:} |ETA: {eta:} '.format(
            ind, num_iters, total=bar.elapsed_td, eta=bar.eta_td)
        for t in avg_time_stats:
            avg_time_stats[t].update(ret[t])
            Bar.suffix = Bar.suffix + '|{} {:.3f} '.format(
                t, avg_time_stats[t].avg)
        bar.next()
    bar.finish()
    dataset.run_eval(results, opt.save_dir)
示例#2
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def prefetch_test(opt):
    os.environ['CUDA_VISIBLE_DEVICES'] = opt.gpus_str

    Dataset = dataset_factory[opt.dataset]
    opt = opts().update_dataset_info_and_set_heads(opt, Dataset)
    print(opt)
    Logger(opt)
    Detector = detector_factory[opt.task]

    split = 'val' if not opt.trainval else 'test'
    dataset = Dataset(opt, split)
    detector = Detector(opt)

    data_loader = torch.utils.data.DataLoader(PrefetchDataset(
        opt, dataset, detector.pre_process),
                                              batch_size=1,
                                              shuffle=False,
                                              num_workers=1,
                                              pin_memory=True)

    results = {}
    num_iters = len(dataset)
    bar = Bar('{}'.format(opt.exp_id), max=num_iters)
    time_stats = ['tot', 'load', 'pre', 'net', 'dec', 'post', 'merge']
    avg_time_stats = {t: AverageMeter() for t in time_stats}
    for ind, (img_id, pre_processed_images) in enumerate(data_loader):
        ret = detector.run(pre_processed_images)
        results[img_id.numpy().astype(np.int32)[0]] = ret['results']
        Bar.suffix = '[{0}/{1}]|Tot: {total:} |ETA: {eta:} '.format(
            ind, num_iters, total=bar.elapsed_td, eta=bar.eta_td)
        for t in avg_time_stats:
            avg_time_stats[t].update(ret[t])
            Bar.suffix = Bar.suffix + '|{} {tm.val:.3f}s ({tm.avg:.3f}s) '.format(
                t, tm=avg_time_stats[t])
        bar.next()
    bar.finish()
    dataset.run_eval(results, opt.save_dir)
示例#3
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from datasets import COCODataset

CENTERNET_TASK = "ctdet"
CENTERNET_MODEL_PATH = "/home/adrian/projects/CenterNet/models/ctdet_coco_dla_2x.pth"

import sys

sys.path.extend([
    "/home/adrian/projects/CenterNet/src",
    "/home/adrian/projects/CenterNet/src/centernet/models/networks/DCNv2",
])

from centernet.detectors.detector_factory import detector_factory
from centernet.opts import opts

opt = opts().init([CENTERNET_TASK, "--load_model", CENTERNET_MODEL_PATH])
import torch

detector = detector_factory[opt.task](opt)
opt.data_dir = "/home/adrian/data"
cocodata = COCODataset(opt, "val")

datain = "data/coconut/train"
dataout = "data/classy_coconut/train"
data_dir = "data"
data_split = "train"
annFile = f"{data_dir}/coco/annotations/instances_{data_split}2017.json"


def run(datain, dataout):
    for klass in os.listdir(datain):
示例#4
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    time_stats = ['tot', 'load', 'pre', 'net', 'dec', 'post', 'merge']
    avg_time_stats = {t: AverageMeter() for t in time_stats}
    for ind in range(num_iters):
        img_id = dataset.images[ind]
        img_info = dataset.coco.loadImgs(ids=[img_id])[0]
        img_path = os.path.join(dataset.img_dir, img_info['file_name'])

        if opt.task == 'ddd':
            ret = detector.run(img_path, img_info['calib'])
        else:
            ret = detector.run(img_path)

        results[img_id] = ret['results']

        Bar.suffix = '[{0}/{1}]|Tot: {total:} |ETA: {eta:} '.format(
            ind, num_iters, total=bar.elapsed_td, eta=bar.eta_td)
        for t in avg_time_stats:
            avg_time_stats[t].update(ret[t])
            Bar.suffix = Bar.suffix + '|{} {:.3f} '.format(
                t, avg_time_stats[t].avg)
        bar.next()
    bar.finish()
    dataset.run_eval(results, opt.save_dir)


if __name__ == '__main__':
    opt = opts().parse()
    if opt.not_prefetch_test:
        test(opt)
    else:
        prefetch_test(opt)
示例#5
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def main(opt):
    torch.manual_seed(opt.seed)
    torch.backends.cudnn.benchmark = not opt.not_cuda_benchmark and not opt.test
    Dataset = get_dataset(opt.dataset, opt.task)
    opt = opts().update_dataset_info_and_set_heads(opt, Dataset)
    print(opt)

    logger = Logger(opt)

    os.environ['CUDA_VISIBLE_DEVICES'] = opt.gpus_str
    opt.device = torch.device('cuda' if opt.gpus[0] >= 0 else 'cpu')

    print('Creating model...')
    model = create_model(opt.arch, opt.heads, opt.head_conv)
    optimizer = torch.optim.Adam(model.parameters(), opt.lr)
    start_epoch = 0
    if opt.load_model != '':
        model, optimizer, start_epoch = load_model(
            model, opt.load_model, optimizer, opt.resume, opt.lr, opt.lr_step)

    Trainer = train_factory[opt.task]
    trainer = Trainer(opt, model, optimizer)
    trainer.set_device(opt.gpus, opt.chunk_sizes, opt.device)

    print('Setting up data...')
    val_loader = torch.utils.data.DataLoader(
        Dataset(opt, 'val'),
        batch_size=1,
        shuffle=False,
        num_workers=1,
        pin_memory=True
    )

    if opt.test:
        _, preds = trainer.val(0, val_loader)
        val_loader.dataset.run_eval(preds, opt.save_dir)
        return

    train_loader = torch.utils.data.DataLoader(
        Dataset(opt, 'train'),
        batch_size=opt.batch_size,
        shuffle=True,
        num_workers=opt.num_workers,
        pin_memory=True,
        drop_last=True
    )

    print('Starting training...')
    best = 1e10
    for epoch in range(start_epoch + 1, opt.num_epochs + 1):
        mark = epoch if opt.save_all else 'last'
        log_dict_train, _ = trainer.train(epoch, train_loader)
        logger.write('epoch: {} |'.format(epoch))
        for k, v in log_dict_train.items():
            logger.scalar_summary('train_{}'.format(k), v, epoch)
            logger.write('{} {:8f} | '.format(k, v))
        if opt.val_intervals > 0 and epoch % opt.val_intervals == 0:
            save_model(os.path.join(opt.save_dir, 'model_{}.pth'.format(mark)),
                       epoch, model, optimizer)
            with torch.no_grad():
                log_dict_val, preds = trainer.val(epoch, val_loader)
            for k, v in log_dict_val.items():
                logger.scalar_summary('val_{}'.format(k), v, epoch)
                logger.write('{} {:8f} | '.format(k, v))
            if log_dict_val[opt.metric] < best:
                best = log_dict_val[opt.metric]
                save_model(os.path.join(opt.save_dir, 'model_best.pth'),
                           epoch, model)
        else:
            save_model(os.path.join(opt.save_dir, 'model_last.pth'),
                       epoch, model, optimizer)
        logger.write('\n')
        if epoch in opt.lr_step:
            save_model(os.path.join(opt.save_dir, 'model_{}.pth'.format(epoch)),
                       epoch, model, optimizer)
            lr = opt.lr * (0.1 ** (opt.lr_step.index(epoch) + 1))
            print('\033[0mDrop LR to', lr)
            for param_group in optimizer.param_groups:
                param_group['lr'] = lr
    logger.close()