Beispiel #1
0
def train(args):
    assets = AssetManager(args.base_dir)
    if not args.retrain:
        model_dir = assets.recreate_model_dir(args.model_name)
        tensorboard_dir = assets.recreate_tensorboard_dir(args.model_name)
    else:
        model_dir = assets.get_model_dir(args.model_name)
        tensorboard_dir = assets.get_tensorboard_dir(args.model_name)
    data = np.load(assets.get_preprocess_file_path(args.data_name))
    imgs = data['imgs'].astype(np.float32) / 255.0

    config = dict(
        img_shape=imgs.shape[1:],
        n_imgs=imgs.shape[0],
        n_classes=data['n_classes'].item(),
    )

    config.update(base_config)

    lord = Lord(config)
    if args.retrain:
        lord.load(model_dir, latent=True, amortized=False)
    lord.config = config
    lord.train_latent(imgs=imgs,
                      classes=data['classes'],
                      model_dir=model_dir,
                      tensorboard_dir=tensorboard_dir,
                      retrain=args.retrain)

    lord.save(model_dir, latent=True, amortized=False)
def train(args):
    assets = AssetManager(args.base_dir)
    model_dir = assets.recreate_model_dir(args.model_name)
    tensorboard_dir = assets.recreate_tensorboard_dir(args.model_name)

    data = np.load(assets.get_preprocess_file_path(args.data_name))
    imgs = data['imgs'].astype(np.float32) / 255.0

    config = Config(
        img_shape=imgs.shape[1:],
        n_imgs=imgs.shape[0],
        n_classes=data['n_classes'].item(),
        content_dim=default_config['content_dim'],
        class_dim=default_config['class_dim'],
        content_std=default_config['content_std'],
        content_decay=default_config['content_decay'],
        n_adain_layers=default_config['n_adain_layers'],
        adain_dim=default_config['adain_dim'],
        perceptual_loss_layers=default_config['perceptual_loss']['layers'],
        perceptual_loss_weights=default_config['perceptual_loss']['weights'],
        perceptual_loss_scales=default_config['perceptual_loss']['scales'])

    lord = Lord.build(config)
    lord.train(imgs=imgs,
               classes=data['classes'],
               batch_size=default_config['train']['batch_size'],
               n_epochs=default_config['train']['n_epochs'],
               model_dir=model_dir,
               tensorboard_dir=tensorboard_dir)

    lord.save(model_dir)
Beispiel #3
0
def train(args):
	wandb.config.update(default_config)
	args_dict = vars(args)
	args_dict.pop('func')
	wandb.config.update(args_dict)
	assets = AssetManager(args.base_dir)
	model_dir = assets.recreate_model_dir(args.model_name)
	tensorboard_dir = assets.recreate_tensorboard_dir(args.model_name)

	data = np.load(assets.get_preprocess_file_path(args.data_name))
	imgs, classes, contents, n_classes = data['imgs'], data['classes'], data['contents'], data['n_classes']
	imgs = imgs.astype(np.float32) / 255.0

	converter = Converter.build(
		img_shape=imgs.shape[1:],
		n_imgs=imgs.shape[0],
		n_classes=n_classes,

		content_dim=args.content_dim,
		class_dim=args.class_dim,

		content_std=args.content_std,
		content_decay=args.content_decay,

		n_adain_layers=default_config['n_adain_layers'],
		adain_enabled=args.adain,
		adain_dim=default_config['adain_dim'],
		adain_normalize=args.adain_normalize,

		perceptual_loss_layers=default_config['perceptual_loss']['layers'],
		perceptual_loss_weights=default_config['perceptual_loss']['weights'],
		perceptual_loss_scales=default_config['perceptual_loss']['scales'],
	)

	converter.train(
		imgs=imgs,
		classes=classes,

		batch_size=default_config['train']['batch_size'],
		n_epochs=default_config['train']['n_epochs'],

		model_dir=model_dir,
		tensorboard_dir=tensorboard_dir
	)

	converter.save(model_dir)
Beispiel #4
0
def train(args):
    assets = AssetManager(args.base_dir)
    model_dir = assets.recreate_model_dir(args.model_name)
    tensorboard_dir = assets.recreate_tensorboard_dir(args.model_name)

    data = np.load(assets.get_preprocess_file_path(args.data_name))
    imgs = data['imgs'].astype(np.float32) / 255.0

    config = dict(
        img_shape=imgs.shape[1:],
        n_imgs=imgs.shape[0],
        n_classes=data['n_classes'].item(),
    )

    config.update(base_config)

    lord = Lord(config)
    lord.train(imgs=imgs,
               classes=data['classes'],
               model_dir=model_dir,
               tensorboard_dir=tensorboard_dir)