示例#1
0
def main(args):
    model = None
    if args.model == 'GAN':
        model = GAN(args)
    elif args.model == 'DCGAN':
        model = DCGAN_MODEL(args)
    elif args.model == 'WGAN-CP':
        model = WGAN_CP(args)
    elif args.model == 'WGAN-GP':
        model = WGAN_GP(args)
    else:
        print("Model type non-existing. Try again.")
        exit(-1)

    # Load datasets to train and test loaders
    train_loader, test_loader = get_data_loader(args)
    # feature_extraction = FeatureExtractionTest(train_loader, test_loader, args.cuda, args.batch_size)

    # Start model training
    if args.is_train == 'True':
        model.train(train_loader)

    # start evaluating on test data
    else:
        model.evaluate(test_loader, args.load_D, args.load_G)
示例#2
0
文件: main.py 项目: Anastasiia01/GANs
def main(args):
    #--------------prepare data------------------------
    dataset = args.dataset
    dataroot = args.dataroot
    if not os.path.exists(dataroot):
        os.makedirs(dataroot)
    batch_size = args.batch_size 
    epochs = args.epochs
    channels = args.channels
    model = None
    model_name = args.model
    if args.model == 'GAN':
        model = GAN(epochs, batch_size)
    elif args.model == 'DCGAN':
        model = DCGAN_MODEL(args)
    elif args.model == 'WGAN-CP':
        model = WGAN_CP(args)
    elif args.model == 'WGAN-GP':
        model = WGAN_GP(args)
    else:
        print("Model type non-existing. Try again.")
        exit(-1)
    workers = 0  # number of workers for dataloader, 2 creates problems
    utils = Utils()
    train_loader, test_loader = utils.prepare_data(dataroot, batch_size, workers, dataset, model_name, channels)
    # Start model training
    resume_training = False
    if args.resume_training == 'True':
        resume_training = True
    if args.is_train == 'True':
        model.train(train_loader, resume_training)

    # start evaluating on test data
    else:
        model.evaluate(test_loader, args.load_D, args.load_G)