Exemple #1
0
def main(args):

    # setup output paths and read configs
    c = load_config(args.config_path)
    _ = os.path.dirname(os.path.realpath(__file__))
    OUT_PATH = os.path.join(_, c.output_path)
    OUT_PATH = create_experiment_folder(OUT_PATH)
    CHECKPOINT_PATH = os.path.join(OUT_PATH, 'checkpoints')
    shutil.copyfile(args.config_path, os.path.join(OUT_PATH, 'config.json'))

    # save config to tmp place to be loaded by subsequent modules.
    file_name = str(os.getpid())
    tmp_path = os.path.join("/tmp/", file_name+'_tts')
    pickle.dump(c, open(tmp_path, "wb"))

    # setup tensorboard
    LOG_DIR = OUT_PATH
    tb = SummaryWriter(LOG_DIR)

    # Ctrl+C handler to remove empty experiment folder
    def signal_handler(signal, frame):
        print(" !! Pressed Ctrl+C !!")
        remove_experiment_folder(OUT_PATH)
        sys.exit(1)
    signal.signal(signal.SIGINT, signal_handler)

    # Setup the dataset
    dataset = LJSpeechDataset(os.path.join(c.data_path, 'metadata.csv'),
                              os.path.join(c.data_path, 'wavs'),
                              c.r,
                              c.sample_rate,
                              c.text_cleaner,
                              c.num_mels,
                              c.min_level_db,
                              c.frame_shift_ms,
                              c.frame_length_ms,
                              c.preemphasis,
                              c.ref_level_db,
                              c.num_freq,
                              c.power
                             )

    dataloader = DataLoader(dataset, batch_size=c.batch_size,
                            shuffle=True, collate_fn=dataset.collate_fn,
                            drop_last=True, num_workers=c.num_loader_workers)

    # setup the model
    model = Tacotron(c.embedding_size,
                     c.hidden_size,
                     c.num_mels,
                     c.num_freq,
                     c.r)

    # plot model on tensorboard
    dummy_input = dataset.get_dummy_data()

    ## TODO: onnx does not support RNN fully yet
    # model_proto_path = os.path.join(OUT_PATH, "model.proto")
    # onnx.export(model, dummy_input, model_proto_path, verbose=True)
    # tb.add_graph_onnx(model_proto_path)

    if use_cuda:
        model = nn.DataParallel(model.cuda())

    optimizer = optim.Adam(model.parameters(), lr=c.lr)

    if args.restore_step:
        checkpoint = torch.load(os.path.join(
            args.restore_path, 'checkpoint_%d.pth.tar' % args.restore_step))
        model.load_state_dict(checkpoint['model'])
        optimizer.load_state_dict(checkpoint['optimizer'])
        print("\n > Model restored from step %d\n" % args.restore_step)
        start_epoch = checkpoint['step'] // len(dataloader)
        best_loss = checkpoint['linear_loss']
    else:
        start_epoch = 0
        print("\n > Starting a new training")

    num_params = count_parameters(model)
    print(" | > Model has {} parameters".format(num_params))

    model = model.train()

    if not os.path.exists(CHECKPOINT_PATH):
        os.mkdir(CHECKPOINT_PATH)

    if use_cuda:
        criterion = nn.L1Loss().cuda()
    else:
        criterion = nn.L1Loss()

    n_priority_freq = int(3000 / (c.sample_rate * 0.5) * c.num_freq)

    #lr_scheduler = ReduceLROnPlateau(optimizer, factor=c.lr_decay,
    #                               patience=c.lr_patience, verbose=True)
    epoch_time = 0
    best_loss = float('inf')
    for epoch in range(0, c.epochs):

        print("\n | > Epoch {}/{}".format(epoch, c.epochs))
        progbar = Progbar(len(dataset) / c.batch_size)

        for num_iter, data in enumerate(dataloader):
            start_time = time.time()

            text_input = data[0]
            text_lengths = data[1]
            linear_input = data[2]
            mel_input = data[3]

            current_step = num_iter + args.restore_step + epoch * len(dataloader) + 1

            # setup lr
            current_lr = lr_decay(c.lr, current_step)
            for params_group in optimizer.param_groups:
                params_group['lr'] = current_lr

            optimizer.zero_grad()

            # Add a single frame of zeros to Mel Specs for better end detection
            #try:
            #    mel_input = np.concatenate((np.zeros(
            #        [c.batch_size, 1, c.num_mels], dtype=np.float32),
            #        mel_input[:, 1:, :]), axis=1)
            #except:
            #    raise TypeError("not same dimension")

            # convert inputs to variables
            text_input_var = Variable(text_input)
            mel_spec_var = Variable(mel_input)
            linear_spec_var = Variable(linear_input, volatile=True)

            # sort sequence by length.
            # TODO: might be unnecessary
            sorted_lengths, indices = torch.sort(
                     text_lengths.view(-1), dim=0, descending=True)
            sorted_lengths = sorted_lengths.long().numpy()

            text_input_var = text_input_var[indices]
            mel_spec_var = mel_spec_var[indices]
            linear_spec_var = linear_spec_var[indices]

            if use_cuda:
                text_input_var = text_input_var.cuda()
                mel_spec_var = mel_spec_var.cuda()
                linear_spec_var = linear_spec_var.cuda()

            mel_output, linear_output, alignments =\
                model.forward(text_input_var, mel_spec_var,
                              input_lengths= torch.autograd.Variable(torch.cuda.LongTensor(sorted_lengths)))

            mel_loss = criterion(mel_output, mel_spec_var)
            #linear_loss = torch.abs(linear_output - linear_spec_var)
            #linear_loss = 0.5 * \
                #torch.mean(linear_loss) + 0.5 * \
                #torch.mean(linear_loss[:, :n_priority_freq, :])
            linear_loss = 0.5 * criterion(linear_output, linear_spec_var) \
                    + 0.5 * criterion(linear_output[:, :, :n_priority_freq],
                                      linear_spec_var[: ,: ,:n_priority_freq])
            loss = mel_loss + linear_loss
            # loss = loss.cuda()

            loss.backward()
            grad_norm = nn.utils.clip_grad_norm(model.parameters(), 1.)  ## TODO: maybe no need
            optimizer.step()

            step_time = time.time() - start_time
            epoch_time += step_time

            progbar.update(num_iter+1, values=[('total_loss', loss.data[0]),
                                       ('linear_loss', linear_loss.data[0]),
                                       ('mel_loss', mel_loss.data[0]),
                                       ('grad_norm', grad_norm)])

            # Plot Learning Stats
            tb.add_scalar('Loss/TotalLoss', loss.data[0], current_step)
            tb.add_scalar('Loss/LinearLoss', linear_loss.data[0],
                          current_step)
            tb.add_scalar('Loss/MelLoss', mel_loss.data[0], current_step)
            tb.add_scalar('Params/LearningRate', optimizer.param_groups[0]['lr'],
                          current_step)
            tb.add_scalar('Params/GradNorm', grad_norm, current_step)
            tb.add_scalar('Time/StepTime', step_time, current_step)

            align_img = alignments[0].data.cpu().numpy()
            align_img = plot_alignment(align_img)
            tb.add_image('Attn/Alignment', align_img, current_step)

            if current_step % c.save_step == 0:

                if c.checkpoint:
                    # save model
                    save_checkpoint(model, optimizer, linear_loss.data[0],
                                    OUT_PATH, current_step, epoch)

                # Diagnostic visualizations
                const_spec = linear_output[0].data.cpu().numpy()
                gt_spec = linear_spec_var[0].data.cpu().numpy()

                const_spec = plot_spectrogram(const_spec, dataset.ap)
                gt_spec = plot_spectrogram(gt_spec, dataset.ap)
                tb.add_image('Spec/Reconstruction', const_spec, current_step)
                tb.add_image('Spec/GroundTruth', gt_spec, current_step)

                align_img = alignments[0].data.cpu().numpy()
                align_img = plot_alignment(align_img)
                tb.add_image('Attn/Alignment', align_img, current_step)

                # Sample audio
                audio_signal = linear_output[0].data.cpu().numpy()
                dataset.ap.griffin_lim_iters = 60
                audio_signal = dataset.ap.inv_spectrogram(audio_signal.T)
                try:
                    tb.add_audio('SampleAudio', audio_signal, current_step,
                                 sample_rate=c.sample_rate)
                except:
                    print("\n > Error at audio signal on TB!!")
                    print(audio_signal.max())
                    print(audio_signal.min())


        # average loss after the epoch
        avg_epoch_loss = np.mean(
            progbar.sum_values['linear_loss'][0] / max(1, progbar.sum_values['linear_loss'][1]))
        best_loss = save_best_model(model, optimizer, avg_epoch_loss,
                                    best_loss, OUT_PATH,
                                    current_step, epoch)

        #lr_scheduler.step(loss.data[0])
        tb.add_scalar('Time/EpochTime', epoch_time, epoch)
        epoch_time = 0
Exemple #2
0
def main(args):

    # setup output paths and read configs
    c = load_config(args.config_path)
    _ = os.path.dirname(os.path.realpath(__file__))
    OUT_PATH = os.path.join(_, c.output_path)
    OUT_PATH = create_experiment_folder(OUT_PATH)
    CHECKPOINT_PATH = os.path.join(OUT_PATH, 'checkpoints')
    shutil.copyfile(args.config_path, os.path.join(OUT_PATH, 'config.json'))

    # Ctrl+C handler to remove empty experiment folder
    def signal_handler(signal, frame):
        print(" !! Pressed Ctrl+C !!")
        remove_experiment_folder(OUT_PATH)
        sys.exit(0)

    signal.signal(signal.SIGINT, signal_handler)

    dataset = LJSpeechDataset(os.path.join(c.data_path, 'metadata.csv'),
                              os.path.join(c.data_path, 'wavs'), c.r,
                              c.sample_rate, c.text_cleaner)

    model = Tacotron(c.embedding_size, c.hidden_size, c.num_mels, c.num_freq,
                     c.r)
    if use_cuda:
        model = nn.DataParallel(model.cuda())

    optimizer = optim.Adam(model.parameters(), lr=c.lr)

    try:
        checkpoint = torch.load(
            os.path.join(CHECKPOINT_PATH,
                         'checkpoint_%d.pth.tar' % args.restore_step))
        model.load_state_dict(checkpoint['model'])
        optimizer.load_state_dict(checkpoint['optimizer'])
        print("\n > Model restored from step %d\n" % args.restore_step)

    except:
        print("\n > Starting a new training\n")

    model = model.train()

    if not os.path.exists(CHECKPOINT_PATH):
        os.mkdir(CHECKPOINT_PATH)

    if use_cuda:
        criterion = nn.L1Loss().cuda()
    else:
        criterion = nn.L1Loss()

    n_priority_freq = int(3000 / (c.sample_rate * 0.5) * c.num_freq)

    for epoch in range(c.epochs):

        dataloader = DataLoader(dataset,
                                batch_size=c.batch_size,
                                shuffle=True,
                                collate_fn=dataset.collate_fn,
                                drop_last=True,
                                num_workers=32)
        progbar = Progbar(len(dataset) / c.batch_size)

        for i, data in enumerate(dataloader):
            text_input = data[0]
            magnitude_input = data[1]
            mel_input = data[2]

            current_step = i + args.restore_step + epoch * len(dataloader) + 1

            optimizer.zero_grad()

            try:
                mel_input = np.concatenate(
                    (np.zeros([c.batch_size, 1, c.num_mels],
                              dtype=np.float32), mel_input[:, 1:, :]),
                    axis=1)
            except:
                raise TypeError("not same dimension")

            if use_cuda:
                text_input_var = Variable(torch.from_numpy(text_input).type(
                    torch.cuda.LongTensor),
                                          requires_grad=False).cuda()
                mel_input_var = Variable(torch.from_numpy(mel_input).type(
                    torch.cuda.FloatTensor),
                                         requires_grad=False).cuda()
                mel_spec_var = Variable(torch.from_numpy(mel_input).type(
                    torch.cuda.FloatTensor),
                                        requires_grad=False).cuda()
                linear_spec_var = Variable(
                    torch.from_numpy(magnitude_input).type(
                        torch.cuda.FloatTensor),
                    requires_grad=False).cuda()

            else:
                text_input_var = Variable(torch.from_numpy(text_input).type(
                    torch.LongTensor),
                                          requires_grad=False)
                mel_input_var = Variable(torch.from_numpy(mel_input).type(
                    torch.FloatTensor),
                                         requires_grad=False)
                mel_spec_var = Variable(torch.from_numpy(mel_input).type(
                    torch.FloatTensor),
                                        requires_grad=False)
                linear_spec_var = Variable(
                    torch.from_numpy(magnitude_input).type(torch.FloatTensor),
                    requires_grad=False)

            mel_output, linear_output, alignments =\
                model.forward(text_input_var, mel_input_var)

            mel_loss = criterion(mel_output, mel_spec_var)
            linear_loss = torch.abs(linear_output - linear_spec_var)
            linear_loss = 0.5 * \
                torch.mean(linear_loss) + 0.5 * \
                torch.mean(linear_loss[:, :n_priority_freq, :])
            loss = mel_loss + linear_loss
            loss = loss.cuda()

            start_time = time.time()

            loss.backward()

            nn.utils.clip_grad_norm(model.parameters(), 1.)

            optimizer.step()

            time_per_step = time.time() - start_time
            progbar.update(i,
                           values=[('total_loss', loss.data[0]),
                                   ('linear_loss', linear_loss.data[0]),
                                   ('mel_loss', mel_loss.data[0])])

            if current_step % c.save_step == 0:
                checkpoint_path = 'checkpoint_{}.pth.tar'.format(current_step)
                checkpoint_path = os.path.join(OUT_PATH, checkpoint_path)
                save_checkpoint(
                    {
                        'model': model.state_dict(),
                        'optimizer': optimizer.state_dict(),
                        'step': current_step,
                        'total_loss': loss.data[0],
                        'linear_loss': linear_loss.data[0],
                        'mel_loss': mel_loss.data[0],
                        'date': datetime.date.today().strftime("%B %d, %Y")
                    }, checkpoint_path)
                print(" > Checkpoint is saved : {}".format(checkpoint_path))

            if current_step in c.decay_step:
                optimizer = adjust_learning_rate(optimizer, current_step)
Exemple #3
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def main(args):
    # Setup the dataset
    train_dataset = LJSpeechDataset(os.path.join(c.data_path, 'train_metadata.csv'),
                                    os.path.join(c.data_path, 'wavs'),
                                    c.r,
                                    c.sample_rate,
                                    c.text_cleaner,
                                    c.num_mels,
                                    c.min_level_db,
                                    c.frame_shift_ms,
                                    c.frame_length_ms,
                                    c.preemphasis,
                                    c.ref_level_db,
                                    c.num_freq,
                                    c.power,
                                    min_seq_len=c.min_seq_len
                                    )

    train_loader = DataLoader(train_dataset, batch_size=c.batch_size,
                              shuffle=False, collate_fn=train_dataset.collate_fn,
                              drop_last=False, num_workers=c.num_loader_workers,
                              pin_memory=True)
    '''   
    val_dataset = LJSpeechDataset(os.path.join(c.data_path, 'valid_metadata.csv'),
                                  os.path.join(c.data_path, 'wavs'),
                                  c.r,
                                  c.sample_rate,
                                  c.text_cleaner,
                                  c.num_mels,
                                  c.min_level_db,
                                  c.frame_shift_ms,
                                  c.frame_length_ms,
                                  c.preemphasis,
                                  c.ref_level_db,
                                  c.num_freq,
                                  c.power
                                  )

    val_loader = DataLoader(val_dataset, batch_size=c.eval_batch_size,
                            shuffle=False, collate_fn=val_dataset.collate_fn,
                            drop_last=False, num_workers=4,
                            pin_memory=True)
    
    '''
    model = Tacotron(c.embedding_size,
                     c.num_freq,
                     c.num_mels,
                     c.r)

    optimizer = optim.Adam(model.parameters(), lr=c.lr)
    optimizer_st = optim.Adam(model.decoder.stopnet.parameters(), lr=c.lr)

    criterion = L1LossMasked()
    criterion_st = nn.BCELoss()

    if args.restore_path:
        checkpoint = torch.load(args.restore_path)
        model.load_state_dict(checkpoint['model'])
        optimizer = optim.Adam(model.parameters(), lr=c.lr)
        optimizer.load_state_dict(checkpoint['optimizer'])
        for state in optimizer.state.values():
            for k, v in state.items():
                if torch.is_tensor(v):
                    state[k] = v.cuda()
        print(" > Model restored from step %d" % checkpoint['step'])
        start_epoch = checkpoint['step'] // len(train_loader)
        best_loss = checkpoint['linear_loss']
        start_epoch = 0
        args.restore_step = checkpoint['step']
        optimizer_st = optim.Adam(model.decoder.stopnet.parameters(), lr=c.lr)
    else:
        args.restore_step = 0
        print("\n > Starting a new training")

    if use_cuda:
        model = nn.DataParallel(model.cuda())
        criterion.cuda()
        criterion_st.cuda()

    num_params = count_parameters(model)
    print(" | > Model has {} parameters".format(num_params))

    if not os.path.exists(CHECKPOINT_PATH):
        os.mkdir(CHECKPOINT_PATH)

    if 'best_loss' not in locals():
        best_loss = float('inf')

    for epoch in range(0, c.epochs):
        train_loss, current_step = train(
            model, criterion, criterion_st, train_loader, optimizer, optimizer_st, epoch)
        #val_loss = evaluate(model, criterion, criterion_st, val_loader, current_step)
        best_loss = save_best_model(model, optimizer, train_loss, best_loss, OUT_PATH, current_step, epoch)
Exemple #4
0
def main(args):

    # Setup the dataset
    train_dataset = LJSpeechDataset(os.path.join(c.data_path, 'metadata_train.csv'),
                              os.path.join(c.data_path, 'wavs'),
                              c.r,
                              c.sample_rate,
                              c.text_cleaner,
                              c.num_mels,
                              c.min_level_db,
                              c.frame_shift_ms,
                              c.frame_length_ms,
                              c.preemphasis,
                              c.ref_level_db,
                              c.num_freq,
                              c.power
                             )

    train_loader = DataLoader(train_dataset, batch_size=c.batch_size,
                            shuffle=False, collate_fn=train_dataset.collate_fn,
                            drop_last=False, num_workers=c.num_loader_workers,
                            pin_memory=True)
    
    val_dataset = LJSpeechDataset(os.path.join(c.data_path, 'metadata_val.csv'),
                              os.path.join(c.data_path, 'wavs'),
                              c.r,
                              c.sample_rate,
                              c.text_cleaner,
                              c.num_mels,
                              c.min_level_db,
                              c.frame_shift_ms,
                              c.frame_length_ms,
                              c.preemphasis,
                              c.ref_level_db,
                              c.num_freq,
                              c.power
                             )

    val_loader = DataLoader(val_dataset, batch_size=c.batch_size,
                            shuffle=False, collate_fn=val_dataset.collate_fn,
                            drop_last=False, num_workers= 4,
                            pin_memory=True)

    model = Tacotron(c.embedding_size,
                     c.hidden_size,
                     c.num_mels,
                     c.num_freq,
                     c.r,
                     use_atten_mask=True)

    optimizer = optim.Adam(model.parameters(), lr=c.lr)
    
    if use_cuda:
        criterion = nn.L1Loss().cuda()
    else:
        criterion = nn.L1Loss()

    if args.restore_path:
        checkpoint = torch.load(args.restore_path)
        model.load_state_dict(checkpoint['model'])
        optimizer.load_state_dict(checkpoint['optimizer'])
        print("\n > Model restored from step %d\n" % checkpoint['step'])
        start_epoch = checkpoint['step'] // len(train_loader)
        best_loss = checkpoint['linear_loss']
        start_epoch = 0
        args.restore_step = checkpoint['step']
    else:
        args.restore_step = 0
        print("\n > Starting a new training")

    if use_cuda:
        model = nn.DataParallel(model.cuda())

    num_params = count_parameters(model)
    print(" | > Model has {} parameters".format(num_params))
    
    if not os.path.exists(CHECKPOINT_PATH):
        os.mkdir(CHECKPOINT_PATH)
    
    if 'best_loss' not in locals():
        best_loss = float('inf')
    
    for epoch in range(0, c.epochs):
        train_loss, current_step = train(model, criterion, train_loader, optimizer, epoch)
        val_loss = evaluate(model, criterion, val_loader, current_step)
        best_loss = save_best_model(model, optimizer, val_loss,
                                    best_loss, OUT_PATH,
                                    current_step, epoch)