Пример #1
0
if args.sample_strategy == 'sequential':
    sample_strategy = sampler.SequentialSampler(dataset)
elif args.sample_strategy == 'random':
    sample_strategy = sampler.RandomSampler(dataset)

dataloader = DataLoader(dataset,
                            batch_size=params['batch_size'],
                            num_workers=params['num_workers'],
                            sampler=sample_strategy)

dummy_input, _, _, _, _, dummy_one_hot = dataset[0]

params['num_attractors'] = dummy_one_hot.shape[-1]
params['num_sources'] = params['num_attractors']
params['sample_rate'] = dataset.sr
dataset.reorder_sources = args.reorder_sources
val_dataset.reorder_sources = args.reorder_sources

pp.pprint(params)

class_func = MaskEstimation if args.baseline else DeepAttractor
model = utils.load_class_from_params(params, class_func).to(device)

if not params['compute_training_stats']:
    mean, std = utils.compute_statistics_on_dataset(dataloader, device)
    params['training_stats'] = {'mean': mean, 'std': std + 1e-7}
    dataset.stats = params['training_stats']
    val_dataset.stats = params['training_stats']

dataset.whiten_data = True
val_dataset.whiten_data = True