Example #1
0
                                           batch_size=args.valid_batch_size,
                                           shuffle=True,
                                           num_workers=args.workers,
                                           worker_init_fn=set_np_randomseed)

if args.model == 'resnet_mfcc':
    model = model_.ResNet_mfcc(n_z=args.latent_size,
                               proj_size=train_dataset.n_speakers if
                               args.softmax != 'none' or args.pretrain else 0,
                               ncoef=args.ncoef,
                               sm_type=args.softmax,
                               delta=args.delta)
elif args.model == 'resnet_34':
    model = model_.ResNet_34(n_z=args.latent_size,
                             proj_size=train_dataset.n_speakers
                             if args.softmax != 'none' or args.pretrain else 0,
                             ncoef=args.ncoef,
                             sm_type=args.softmax,
                             delta=args.delta)
elif args.model == 'resnet_lstm':
    model = model_.ResNet_lstm(n_z=args.latent_size,
                               proj_size=train_dataset.n_speakers if
                               args.softmax != 'none' or args.pretrain else 0,
                               ncoef=args.ncoef,
                               sm_type=args.softmax,
                               delta=args.delta)
elif args.model == 'resnet_qrnn':
    model = model_.ResNet_qrnn(n_z=args.latent_size,
                               proj_size=train_dataset.n_speakers if
                               args.softmax != 'none' or args.pretrain else 0,
                               ncoef=args.ncoef,
                               sm_type=args.softmax,
Example #2
0
if args.model == 'resnet_mfcc' or args.model == 'all':
    batch = torch.rand(3, 3 if args.delta else 1, args.ncoef, 200)
    model = model_.ResNet_mfcc(n_z=args.latent_size,
                               ncoef=args.ncoef,
                               delta=args.delta,
                               proj_size=10,
                               sm_type='softmax')
    mu, emb = model.forward(batch)
    out = model.out_proj(mu, torch.ones(mu.size(0)))
    print('resnet_mfcc', mu.size(), emb.size(), out.size())
if args.model == 'resnet_34' or args.model == 'all':
    batch = torch.rand(3, 3 if args.delta else 1, args.ncoef, 200)
    model = model_.ResNet_34(n_z=args.latent_size,
                             ncoef=args.ncoef,
                             delta=args.delta,
                             proj_size=10,
                             sm_type='softmax')
    mu, emb = model.forward(batch)
    out = model.out_proj(mu, torch.ones(mu.size(0)))
    print('resnet_34', mu.size(), emb.size(), out.size())
if args.model == 'resnet_lstm' or args.model == 'all':
    batch = torch.rand(3, 3 if args.delta else 1, args.ncoef, 200)
    model = model_.ResNet_lstm(n_z=args.latent_size,
                               ncoef=args.ncoef,
                               delta=args.delta,
                               proj_size=10,
                               sm_type='softmax')
    mu, emb = model.forward(batch)
    out = model.out_proj(mu, torch.ones(mu.size(0)))
    print('resnet_lstm', mu.size(), emb.size(), out.size())
Example #3
0
    print('Cuda Mode is: {}'.format(args.cuda))

    if args.cuda:
        device = get_freer_gpu()
        if args.model == 'resnet_qrnn':
            import cupy
            cupy.cuda.Device(int(str(device).split(':')[-1])).use()

    if args.model == 'resnet_mfcc':
        model = model_.ResNet_mfcc(n_z=args.latent_size,
                                   proj_size=0,
                                   ncoef=args.ncoef,
                                   delta=args.delta)
    elif args.model == 'resnet_34':
        model = model_.ResNet_34(n_z=args.latent_size,
                                 proj_size=0,
                                 ncoef=args.ncoef,
                                 delta=args.delta)
    elif args.model == 'resnet_lstm':
        model = model_.ResNet_lstm(n_z=args.latent_size,
                                   proj_size=0,
                                   ncoef=args.ncoef,
                                   delta=args.delta)
    elif args.model == 'resnet_qrnn':
        model = model_.ResNet_qrnn(n_z=args.latent_size,
                                   proj_size=0,
                                   ncoef=args.ncoef,
                                   delta=args.delta)
    elif args.model == 'resnet_stats':
        model = model_.ResNet_stats(n_z=args.latent_size,
                                    proj_size=0,
                                    ncoef=args.ncoef,
Example #4
0
if args.model == 'resnet_18' or args.model == 'all':
    batch = torch.rand(3, 10000).to(device)
    model = model_.ResNet_18(pase_cfg=args.pase_cfg,
                             pase_cp=args.pase_cp,
                             n_z=args.latent_size,
                             ncoef=args.ncoef,
                             proj_size=10,
                             sm_type='softmax').to(device)
    mu = model.forward(batch)
    out = model.out_proj(mu, torch.ones(mu.size(0)))
    print('resnet_18', mu.size(), out.size())
if args.model == 'resnet_34' or args.model == 'all':
    batch = torch.rand(3, 10000).to(device)
    model = model_.ResNet_34(pase_cfg=args.pase_cfg,
                             pase_cp=args.pase_cp,
                             n_z=args.latent_size,
                             ncoef=args.ncoef,
                             proj_size=10,
                             sm_type='softmax').to(device)
    mu = model.forward(batch)
    out = model.out_proj(mu, torch.ones(mu.size(0)))
    print('resnet_34', mu.size(), out.size())
if args.model == 'resnet_50' or args.model == 'all':
    batch = torch.rand(3, 10000).to(device)
    model = model_.ResNet_50(pase_cfg=args.pase_cfg,
                             pase_cp=args.pase_cp,
                             n_z=args.latent_size,
                             ncoef=args.ncoef,
                             proj_size=10,
                             sm_type='softmax').to(device)
    mu = model.forward(batch)
    out = model.out_proj(mu, torch.ones(mu.size(0)))
Example #5
0
    if args.model == 'resnet_qrnn':
        import cupy
        cupy.cuda.Device(int(str(device).split(':')[-1])).use()
else:
    device = torch.device('cpu')

if args.model == 'resnet_mfcc':
    model = model_.ResNet_mfcc(n_z=args.latent_size,
                               proj_size=train_dataset.n_speakers,
                               ncoef=args.ncoef,
                               sm_type=args.softmax,
                               delta=args.delta)
elif args.model == 'resnet_34':
    model = model_.ResNet_34(n_z=args.latent_size,
                             proj_size=train_dataset.n_speakers,
                             ncoef=args.ncoef,
                             sm_type=args.softmax,
                             delta=args.delta)
elif args.model == 'resnet_lstm':
    model = model_.ResNet_lstm(n_z=args.latent_size,
                               proj_size=train_dataset.n_speakers,
                               ncoef=args.ncoef,
                               sm_type=args.softmax,
                               delta=args.delta)
elif args.model == 'resnet_qrnn':
    model = model_.ResNet_qrnn(n_z=args.latent_size,
                               proj_size=train_dataset.n_speakers,
                               ncoef=args.ncoef,
                               sm_type=args.softmax,
                               delta=args.delta)
elif args.model == 'resnet_stats':
Example #6
0
			scores_dict = pickle.load(p)
			scores, labels = scores_dict['scores'], scores_dict['labels']
	else:

		if args.cp_path is None:
			raise ValueError('There is no checkpoint/model path. Use arg --cp-path to indicate the path!')

		print('Cuda Mode is: {}'.format(args.cuda))

		if args.cuda:
			device = get_freer_gpu()

		if args.model == 'resnet_18':
			model = model_.ResNet_18(pase_cfg=args.pase_cfg, n_z=args.latent_size, proj_size=None, ncoef=args.ncoef)
		elif args.model == 'resnet_34':
			model = model_.ResNet_34(pase_cfg=args.pase_cfg, n_z=args.latent_size, proj_size=None, ncoef=args.ncoef)
		elif args.model == 'resnet_50':
			model = model_.ResNet_50(pase_cfg=args.pase_cfg, n_z=args.latent_size, proj_size=None, ncoef=args.ncoef)
		elif args.model == 'TDNN':
			model = model_.TDNN(pase_cfg=args.pase_cfg, n_z=args.latent_size, proj_size=None, ncoef=args.ncoef)

		ckpt = torch.load(args.cp_path, map_location = lambda storage, loc: storage)
		model.load_state_dict(ckpt['model_state'], strict=False)

		model.eval()

		if args.cuda:
			model = model.to(device)

		enroll_utt_data = read_utt2rec(args.enroll_data+'wav.scp', args.m4a)
		test_utt_data = read_utt2rec(args.test_data+'wav.scp', args.m4a)
Example #7
0
def train(lr, l2, max_gnorm, momentum, margin, lambda_, swap, latent_size, n_frames, model, ncoef, epochs, batch_size, valid_batch_size, n_workers, cuda, train_hdf_file, valid_hdf_file, cp_path, softmax, delta, logdir):

	if cuda:
		device=get_freer_gpu()
		if args.model == 'resnet_qrnn':
			import cupy
			cupy.cuda.Device(int(str(device).split(':')[-1])).use()

	cp_name = get_file_name(cp_path)

	if args.logdir:
		from torch.utils.tensorboard import SummaryWriter
		writer = SummaryWriter(log_dir=logdir+cp_name, comment=args.model, purge_step=True)
	else:
		writer = None

	train_dataset = Loader(hdf5_name = train_hdf_file, max_nb_frames = int(n_frames), delta = delta)
	train_loader = torch.utils.data.DataLoader(train_dataset, batch_size=batch_size, shuffle=True, num_workers=n.workers, worker_init_fn=set_np_randomseed)

	valid_dataset = Loader_valid(hdf5_name = valid_hdf_file, max_nb_frames = int(n_frames), delta = delta)
	valid_loader = torch.utils.data.DataLoader(valid_dataset, batch_size=valid_batch_size, shuffle=True, num_workers=n_workers, worker_init_fn=set_np_randomseed)

	if model == 'resnet_mfcc':
		model=model_.ResNet_mfcc(n_z=int(latent_size), proj_size=train_dataset.n_speakers, ncoef=ncoef, sm_type=softmax, delta=delta)
	elif model == 'resnet_34':
		model=model_.ResNet_34(n_z=int(latent_size), proj_size=train_dataset.n_speakers, ncoef=ncoef, sm_type=softmax, delta=delta)
	elif model == 'resnet_lstm':
		model=model_.ResNet_lstm(n_z=int(latent_size), proj_size=train_dataset.n_speakers, ncoef=ncoef, sm_type=softmax, delta=delta)
	elif model == 'resnet_qrnn':
		model=model_.ResNet_qrnn(n_z=int(latent_size), proj_size=train_dataset.n_speakers, ncoef=ncoef, sm_type=softmax, delta=delta)
	elif model == 'resnet_stats':
		model=model_.ResNet_stats(n_z=int(latent_size), proj_size=train_dataset.n_speakers, ncoef=ncoef, sm_type=softmax, delta=delta)
	elif args.model == 'resnet_large':
		model = model_.ResNet_large(n_z=int(latent_size), proj_size=train_dataset.n_speakers, ncoef=args.ncoef, sm_type=softmax, delta=delta)
	elif args.model == 'resnet_small':
		model = model_.ResNet_small(n_z=int(latent_size), proj_size=train_dataset.n_speakers, ncoef=args.ncoef, sm_type=softmax, delta=delta)
	elif args.model == 'resnet_2d':
		model = model_.ResNet_2d(n_z=int(latent_size), proj_size=train_dataset.n_speakers, ncoef=args.ncoef, sm_type=softmax, delta=delta)
	elif args.model == 'TDNN':
		model = model_.TDNN(n_z=int(latent_size), proj_size=train_dataset.n_speakers, ncoef=args.ncoef, sm_type=softmax, delta=delta)
	elif args.model == 'TDNN_att':
		model = model_.TDNN_att(n_z=int(latent_size), proj_size=train_dataset.n_speakers, ncoef=args.ncoef, sm_type=softmax, delta=delta)
	elif args.model == 'TDNN_multihead':
		model = model_.TDNN_multihead(n_z=int(latent_size), proj_size=train_dataset.n_speakers, ncoef=args.ncoef, sm_type=softmax, delta=delta)
	elif args.model == 'TDNN_lstm':
		model = model_.TDNN_lstm(n_z=int(latent_size), proj_size=train_dataset.n_speakers, ncoef=args.ncoef, sm_type=softmax, delta=delta)
	elif args.model == 'TDNN_aspp':
		model = model_.TDNN_aspp(n_z=int(latent_size), proj_size=train_dataset.n_speakers, ncoef=args.ncoef, sm_type=softmax, delta=delta)
	elif args.model == 'TDNN_mod':
		model = model_.TDNN_mod(n_z=int(latent_size), proj_size=train_dataset.n_speakers, ncoef=args.ncoef, sm_type=softmax, delta=delta)
	elif args.model == 'TDNN_multipool':
		model = model_.TDNN_multipool(n_z=int(latent_size), proj_size=train_dataset.n_speakers, ncoef=args.ncoef, sm_type=softmax, delta=delta)
	elif args.model == 'transformer':
		model = model_.transformer_enc(n_z=int(latent_size), proj_size=train_dataset.n_speakers, ncoef=args.ncoef, sm_type=softmax, delta=delta)

	if cuda:
		model=model.to(device)
	else:
		device=None

	optimizer=optim.SGD(model.parameters(), lr=lr, momentum=momentum, weight_decay=l2)

	trainer=TrainLoop(model, optimizer, train_loader, valid_loader, max_gnorm=max_gnorm, margin=margin, lambda_=lambda_, verbose=-1, device=device, cp_name=cp_name, save_cp=True, checkpoint_path=cp_path, swap=swap, softmax=True, pretrain=False, mining=True, cuda=cuda, logger=writer)

	return trainer.train(n_epochs=epochs)
Example #8
0
    import cupy
    cupy.cuda.Device(int(str(device).split(':')[-1])).use()
else:
    device = None

if args.model == 'resnet_18':
    model = model_.ResNet_18(pase_cfg=args.pase_cfg,
                             pase_cp=args.pase_cp,
                             n_z=args.latent_size,
                             proj_size=train_dataset.n_speakers,
                             ncoef=args.ncoef,
                             sm_type=args.softmax)
elif args.model == 'resnet_34':
    model = model_.ResNet_34(pase_cfg=args.pase_cfg,
                             pase_cp=args.pase_cp,
                             n_z=args.latent_size,
                             proj_size=train_dataset.n_speakers,
                             ncoef=args.ncoef,
                             sm_type=args.softmax)
elif args.model == 'resnet_50':
    model = model_.ResNet_50(pase_cfg=args.pase_cfg,
                             pase_cp=args.pase_cp,
                             n_z=args.latent_size,
                             proj_size=train_dataset.n_speakers,
                             ncoef=args.ncoef,
                             sm_type=args.softmax)
elif args.model == 'TDNN':
    model = model_.TDNN(pase_cfg=args.pase_cfg,
                        pase_cp=args.pase_cp,
                        n_z=args.latent_size,
                        proj_size=train_dataset.n_speakers,
                        ncoef=args.ncoef,