Esempio n. 1
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if __name__ == "__main__":
    args = parse_args()
    if args.cfg_file is not None:
        cfg_from_file(args.cfg_file)
    if args.gpu_id != -1:
        cfg.GPU_ID = args.gpu_id
    print('Using config:')
    pprint.pprint(cfg)

    now = datetime.datetime.now(dateutil.tz.tzlocal())
    timestamp = now.strftime('%Y_%m_%d_%H_%M_%S')

    datadir = 'Data/%s' % cfg.DATASET_NAME
    dataset = TextDataset(datadir, cfg.EMBEDDING_TYPE, 1)
    filename_test = '%s/test' % (datadir)
    dataset.test = dataset.get_data(filename_test)
    if cfg.TRAIN.FLAG:
        filename_train = '%s/train' % (datadir)
        dataset.train = dataset.get_data(filename_train)
        ckt_logs_dir = "ckt_logs/%s/%s_%s" % (cfg.DATASET_NAME,
                                              cfg.CONFIG_NAME, timestamp)
        mkdir_p(ckt_logs_dir)
    else:
        s_tmp = cfg.TRAIN.PRETRAINED_MODEL
        ckt_logs_dir = s_tmp[:s_tmp.find('.ckpt')]

    model = CondGAN(image_shape=dataset.image_shape)
    algo = CondGANTrainer(model=model,
                          dataset=dataset,
Esempio n. 2
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if __name__ == "__main__":
    args = parse_args()
    if args.cfg_file is not None:
        cfg_from_file(args.cfg_file)
    if args.gpu_id != -1:
        cfg.GPU_ID = args.gpu_id
    print('Using config:')
    pprint.pprint(cfg)

    now = datetime.datetime.now(dateutil.tz.tzlocal())
    timestamp = now.strftime('%Y_%m_%d_%H_%M_%S')

    #    datadir = 'Data/%s' % cfg.DATASET_NAME
    datadir = cfg.DATASET_NAME
    dataset = TextDataset(datadir, cfg.EMBEDDING_TYPE, 4)
    filename_test = datadir
    #    dataset.test = dataset.get_data(filename_test)
    dataset.test = dataset.get_data(cfg.DATASET_NAME)
    if cfg.TRAIN.FLAG:
        filename_train = datadir
        #        dataset.train = dataset.get_data(filename_train)
        dataset.train = dataset.get_data(cfg.DATASET_NAME)
        ckt_logs_dir = "ckt_logs/%s/%s_%s" % \
            (cfg.DATASET_NAME, cfg.CONFIG_NAME, timestamp)
        mkdir_p(ckt_logs_dir)
    else:
        s_tmp = cfg.TRAIN.PRETRAINED_MODEL
        ckt_logs_dir = s_tmp[:s_tmp.find('.ckpt')]

    model = CondGAN(lr_imsize=int(dataset.image_shape[0] /
Esempio n. 3
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    return args

if __name__ == "__main__":
    args = parse_args()
    if args.cfg_file is not None:
        cfg_from_file(args.cfg_file)
    if args.gpu_id != -1:
        cfg.GPU_ID = args.gpu_id
    print('Using config:')
    pprint.pprint(cfg)

    now = datetime.datetime.now(dateutil.tz.tzlocal())
    timestamp = now.strftime('%Y_%m_%d_%H_%M_%S')

    datadir = 'Data/%s' % cfg.DATASET_NAME
    dataset = TextDataset(datadir, cfg.EMBEDDING_TYPE, 1)
    filename_test = '%s/test' % (datadir)
    dataset.test = dataset.get_data(filename_test)
    if cfg.TRAIN.FLAG:
        filename_train = '%s/train' % (datadir)
        dataset.train = dataset.get_data(filename_train)

        ckt_logs_dir = "ckt_logs/%s/%s_%s" % \
            (cfg.DATASET_NAME, cfg.CONFIG_NAME, timestamp)
        mkdir_p(ckt_logs_dir)
    else:
        s_tmp = cfg.TRAIN.PRETRAINED_MODEL
        ckt_logs_dir = s_tmp[:s_tmp.find('.ckpt')]

    model = CondGAN(
        image_shape=dataset.image_shape
Esempio n. 4
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        cfg_from_file(args.cfg_file)
    if args.gpu_id != -1:
        cfg.GPU_ID = args.gpu_id

    # Load text embeddings generated from the encoder
    cap_path = cfg.TEST.CAPTION_PATH
    t_file = torchfile.load(cap_path)
    captions_list = t_file.raw_txt
    print(t_file.fea_txt)
    embeddings = np.concatenate(t_file.fea_txt, axis=0)
    num_embeddings = len(captions_list)
    print('Successfully load sentences from: ', cap_path)
    print('Total number of sentences:', num_embeddings)
    print('num_embeddings:', num_embeddings, embeddings.shape)
    datadir = 'Data/%s' % cfg.DATASET_NAME
    dataset = TextDataset(datadir, cfg.EMBEDDING_TYPE, 1)

    # path to save generated samples
    save_dir = cap_path[:cap_path.find('.t7')]
    if num_embeddings > 0:
        batch_size = np.minimum(num_embeddings, cfg.TEST.BATCH_SIZE)

        # Build StackGAN and load the model
        config = tf.ConfigProto(allow_soft_placement=True)
        with tf.Session(config=config) as sess:
            with tf.device("/gpu:%d" % cfg.GPU_ID):
                embeddings_holder, fake_images_opt, fake_images_2_opt =\
                    build_model(sess, dataset.image_shape, embeddings.shape[-1], batch_size)

                count = 0
                while count < num_embeddings:
Esempio n. 5
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import argparse
import pprint

from misc.datasets import TextDataset
from model import CondGAN
from trainer import CondGANTrainer
from misc.get_configs import parse_args
from misc.utils import mkdir_p

if __name__ == "__main__":
    args = parse_args()
    print(args)
    now = datetime.datetime.now()
    timestamp = now.strftime('%Y_%m_%d_%H_%M_%S')

    dataset = TextDataset(datadir='datasets/' + args.dataset + '/')

    print("Dataset created!")
    dataset.train = dataset.get_data()

    model = CondGAN(args, image_shape=dataset.image_shape)
    print("model created!")

    # if args.for_training:
    ckt_logs_dir = "ckt_logs/%s" % \
        ("{}_logs".format(args.dataset))
    res_dir = "retrieved_res/%s" % \
        ("{}_res".format(args.dataset))
    mkdir_p(ckt_logs_dir)
    mkdir_p(res_dir)
    with open(ckt_logs_dir + '/args.txt', 'w') as fid:
Esempio n. 6
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if __name__ == "__main__":
    args = parse_args()
    if args.cfg_file is not None:
        cfg_from_file(args.cfg_file)
    if args.gpu_id != -1:
        cfg.GPU_ID = args.gpu_id
    print('Using config:')
    pprint.pprint(cfg)

    now = datetime.datetime.now(dateutil.tz.tzlocal())
    timestamp = now.strftime('%Y_%m_%d_%H_%M_%S')
    #    datadir = 'Data/%s' % cfg.DATASET_NAME
    datadir = cfg.DATASET_NAME
    dataset = TextDataset(datadir, cfg.EMBEDDING_TYPE, 1)
    filename_test = datadir
    #    dataset.test = dataset.get_data(filename_test,aug_flag=False)
    if cfg.TRAIN.FLAG:
        filename_train = datadir
        dataset.train = dataset.get_data(filename_train, aug_flag=False)

        ckt_logs_dir = "ckt_logs/%s/%s_%s" % \
            (cfg.DATASET_NAME, cfg.CONFIG_NAME, timestamp)
        mkdir_p(ckt_logs_dir)
    else:
        s_tmp = cfg.TRAIN.PRETRAINED_MODEL
        ckt_logs_dir = s_tmp[:s_tmp.find('.ckpt')]

    model = CondGAN(image_shape=dataset.image_shape)