Exemple #1
0
def main():
    import argparse
    global model, spect_parser, decoder, args
    parser = argparse.ArgumentParser(description='DeepSpeech transcription server')
    parser.add_argument('--host', type=str, default='0.0.0.0', help='Host to be used by the server')
    parser.add_argument('--port', type=int, default=8888, help='Port to be used by the server')
    parser = add_inference_args(parser)
    parser = add_decoder_args(parser)
    args = parser.parse_args()
    logging.getLogger().setLevel(logging.DEBUG)

    logging.info('Setting up server...')
    torch.set_grad_enabled(False)
    model = DeepSpeech.load_model(args.model_path)
    if args.cuda:
        model.cuda()
    model.eval()

    labels = DeepSpeech.get_labels(model)
    audio_conf = DeepSpeech.get_audio_conf(model)

    if args.decoder == "beam":
        from decoder import BeamCTCDecoder

        decoder = BeamCTCDecoder(labels, lm_path=args.lm_path, alpha=args.alpha, beta=args.beta,
                                 cutoff_top_n=args.cutoff_top_n, cutoff_prob=args.cutoff_prob,
                                 beam_width=args.beam_width, num_processes=args.lm_workers)
    else:
        decoder = GreedyDecoder(labels, blank_index=labels.index('_'))

    spect_parser = SpectrogramParser(audio_conf, normalize=True)
    logging.info('Server initialised')
    app.run(host=args.host, port=args.port, debug=True, use_reloader=False)
Exemple #2
0
    def __init__(self, model_path):
        """

        :param model_path:
        """
        assert os.path.exists(model_path), "Cannot find model here {}".format(
            model_path)
        self.deep_speech_model = DeepSpeech.load_model(model_path)
        self.deep_speech_model.eval()
        labels = DeepSpeech.get_labels(self.deep_speech_model)
        self.audio_conf = DeepSpeech.get_audio_conf(self.deep_speech_model)
        self.decoder = GreedyDecoder(labels)
        self.parser = SpectrogramParser(self.audio_conf, normalize=True)
Exemple #3
0
no_decoder_args.add_argument('--output-path',
                             default=None,
                             type=str,
                             help="Where to save raw acoustic output")
parser = add_decoder_args(parser)
args = parser.parse_args()

if __name__ == '__main__':
    torch.set_grad_enabled(False)
    model = DeepSpeech.load_model(args.model_path)
    device = torch.device("cuda" if args.cuda else "cpu")
    model = model.to(device)
    model.eval()

    labels = DeepSpeech.get_labels(model)
    audio_conf = DeepSpeech.get_audio_conf(model)

    if args.decoder == "beam":
        from decoder import BeamCTCDecoder

        decoder = BeamCTCDecoder(labels,
                                 lm_path=args.lm_path,
                                 alpha=args.alpha,
                                 beta=args.beta,
                                 cutoff_top_n=args.cutoff_top_n,
                                 cutoff_prob=args.cutoff_prob,
                                 beam_width=args.beam_width,
                                 num_processes=args.lm_workers)
    elif args.decoder == "greedy":
        decoder = GreedyDecoder(labels, blank_index=labels.index('_'))
    else:
        spect = spect.cuda()
    input_sizes = torch.IntTensor([spect.size(3)]).int()
    out, output_sizes = model(spect, input_sizes)
    decoded_output, decoded_offsets = decoder.decode(out, output_sizes)
    return decoded_output, decoded_offsets


if __name__ == '__main__':
    torch.set_grad_enabled(False)
    model = DeepSpeech.load_model(args.model_path)
    if args.cuda:
        model.cuda()
    model.eval()

    labels = DeepSpeech.get_labels(model)
    audio_conf = DeepSpeech.get_audio_conf(model)

    if args.decoder == "beam":
        from decoder import BeamCTCDecoder

        decoder = BeamCTCDecoder(labels, lm_path=args.lm_path, alpha=args.alpha, beta=args.beta,
                                 cutoff_top_n=args.cutoff_top_n, cutoff_prob=args.cutoff_prob,
                                 beam_width=args.beam_width, num_processes=args.lm_workers)
    else:
        decoder = GreedyDecoder(labels, blank_index=labels.index('_'))

    parser = SpectrogramParser(audio_conf, normalize=True)

    decoded_output, decoded_offsets = transcribe(args.audio_path, parser, model, decoder, args.cuda)
    print(json.dumps(decode_results(model, decoded_output, decoded_offsets)))
Exemple #5
0
        os.makedirs(save_folder)
    except OSError as e:
        if e.errno == errno.EEXIST:
            print('Model Save directory already exists.')
        else:
            raise
    criterion = CTCLoss()

    avg_loss, start_epoch, start_iter = 0, 0, 0
    if args.continue_from:  # Starting from previous model
        print("Loading checkpoint model %s" % args.continue_from)
        package = torch.load(args.continue_from,
                             map_location=lambda storage, loc: storage)
        model_teacher = DeepSpeech.load_model_package(package)
        labels = DeepSpeech.get_labels(model_teacher)
        audio_conf = DeepSpeech.get_audio_conf(model_teacher)
        parameters_teacher = model_teacher.parameters()
        optimizer_teacher = torch.optim.SGD(parameters_teacher,
                                            lr=args.lr,
                                            momentum=args.momentum,
                                            nesterov=True)

        # load student model with pretrained model
        '''
        model_student = DeepSpeech.load_model_package(package)
        parameters_student = model_student.parameters()
        optimizer_student = torch.optim.SGD(parameters_student, lr=args.lr,
                                    momentum=args.momentum, nesterov=True)
        '''
        # restart student model from scratch
        rnn_type = args.rnn_type.lower()
Exemple #6
0
def main():
    global args, train_logger, test_logger
    args = options.parse_args()
    os.makedirs(args.log_dir)
    test_logger = Logger(os.path.join(args.log_dir, 'test.log'))
    with open(os.path.join(args.log_dir, 'config.log'), 'w') as f:
        f.write(args.config_str)
    if not args.evaluate:
        os.makedirs(args.checkpoint_dir)
        train_logger = Logger(os.path.join(args.log_dir, 'train.log'))
    loss_results, cer_results = torch.FloatTensor(
        args.epochs), torch.FloatTensor(args.epochs)

    if args.visdom:
        from visdom import Visdom
        viz = Visdom()
        opts = dict(title=args.experiment_id,
                    ylabel='',
                    xlabel='Epoch',
                    legend=['Loss', 'CER'])
        viz_windows = None
        epochs = torch.arange(0, args.epochs)

    if args.resume:
        print('Loading checkpoint model %s' % args.resume)
        checkpoint = torch.load(args.resume)
        model = DeepSpeech.load_model_checkpoint(checkpoint)
        model = torch.nn.DataParallel(model,
                                      device_ids=[i for i in range(args.nGPU)
                                                  ]).cuda()
        labels = DeepSpeech.get_labels(model)
        audio_conf = DeepSpeech.get_audio_conf(model)
        parameters = model.parameters()
        optimizer = torch.optim.SGD(parameters,
                                    lr=args.lr,
                                    momentum=args.momentum,
                                    nesterov=True)
        optimizer.load_state_dict(checkpoint['optimizer'])
        start_epoch = int(checkpoint.get('epoch',
                                         0))  # Index start at 0 for training
        loss_results, cer_results = checkpoint['loss_results'], checkpoint[
            'cer_results']
        if args.epochs > loss_results.numel():
            loss_results.resize_(args.epochs)
            cer_results.resize_(args.epochs)
            loss_results[start_epoch:].zero_()
            cer_results[start_epoch:].zero_()
        # Add previous scores to visdom graph
        if args.visdom and loss_results is not None:
            x_axis = epochs[0:start_epoch]
            y_axis = torch.stack(
                (loss_results[0:start_epoch], cer_results[0:start_epoch]),
                dim=1)
            viz_window = viz.line(
                X=x_axis,
                Y=y_axis,
                opts=opts,
            )
    else:
        start_epoch = args.start_epoch
        with open(args.labels_path) as label_file:
            labels = str(''.join(json.load(label_file)))

        audio_conf = dict(sample_rate=args.sample_rate,
                          window_size=args.window_size,
                          window_stride=args.window_stride,
                          window=args.window,
                          noise_dir=args.noise_dir,
                          noise_prob=args.noise_prob,
                          noise_levels=(args.noise_min, args.noise_max))
        model = DeepSpeech(rnn_hidden_size=args.hidden_size,
                           nb_layers=args.hidden_layers,
                           labels=labels,
                           rnn_type=supported_rnns[args.rnn_type],
                           audio_conf=audio_conf,
                           bidirectional=not args.look_ahead)
        model = torch.nn.DataParallel(model,
                                      device_ids=[i for i in range(args.nGPU)
                                                  ]).cuda()
        parameters = model.parameters()
        optimizer = torch.optim.SGD(parameters,
                                    lr=args.lr,
                                    momentum=args.momentum,
                                    nesterov=True)

    # define loss function (criterion) and decoder
    best_cer = None
    criterion = CTCLoss()
    decoder = GreedyDecoder(labels)

    # define dataloader
    if not args.evaluate:
        train_dataset = SpectrogramDataset(
            audio_conf=audio_conf,
            manifest_filepath=args.train_manifest,
            labels=labels,
            normalize=True,
            augment=args.augment)
        train_sampler = BucketingSampler(train_dataset,
                                         batch_size=args.batch_size)
        train_loader = AudioDataLoader(train_dataset,
                                       num_workers=args.num_workers,
                                       batch_sampler=train_sampler)
        if not args.in_order and start_epoch != 0:
            print("Shuffling batches for the following epochs")
            train_sampler.shuffle()
    val_dataset = SpectrogramDataset(audio_conf=audio_conf,
                                     manifest_filepath=args.val_manifest,
                                     labels=labels,
                                     normalize=True,
                                     augment=False)
    val_loader = AudioDataLoader(val_dataset,
                                 batch_size=args.batch_size,
                                 num_workers=args.num_workers)

    print(model)
    print("Number of parameters: %d" % DeepSpeech.get_param_size(model))

    if args.evaluate:
        validate(val_loader, model, decoder, 0)
        return

    for epoch in range(start_epoch, args.epochs):
        avg_loss = train(train_loader, train_sampler, model, criterion,
                         optimizer, epoch)
        cer = validate(val_loader, model, decoder, epoch)

        loss_results[epoch] = avg_loss
        cer_results[epoch] = cer

        adjust_learning_rate(optimizer)

        is_best = False
        if best_cer is None or best_cer > cer:
            print('Found better validated model')
            best_cer = cer
            is_best = True
        save_checkpoint(
            DeepSpeech.serialize(model,
                                 optimizer=optimizer,
                                 epoch=epoch,
                                 loss_results=loss_results,
                                 cer_results=cer_results), is_best, epoch)

        if not args.in_order:
            print("Shuffling batches...")
            train_sampler.shuffle()

        if args.visdom:
            x_axis = epochs[0:epoch + 1]
            y_axis = torch.stack(
                (loss_results[0:epoch + 1], cer_results[0:epoch + 1]), dim=1)
            if viz_window is None:
                viz_window = viz.line(
                    X=x_axis,
                    Y=y_axis,
                    opts=opts,
                )
            else:
                viz.line(
                    X=x_axis.unsqueeze(0).expand(y_axis.size(1),
                                                 x_axis.size(0)).transpose(
                                                     0, 1),  # Visdom fix
                    Y=y_axis,
                    win=viz_window,
                    update='replace',
                )
def train_main(args):
    args.distributed = args.world_size > 1
    main_proc = True
    if args.distributed:
        if args.gpu_rank:
            torch.cuda.set_device(int(args.gpu_rank))
        dist.init_process_group(backend=args.dist_backend, init_method=args.dist_url,
                                world_size=args.world_size, rank=args.rank)
        main_proc = args.rank == 0  # Only the first proc should save models
    save_folder = args.save_folder

    loss_results, cer_results, wer_results = torch.Tensor(args.epochs), torch.Tensor(args.epochs), torch.Tensor(
        args.epochs)
    best_wer = None
    if args.visdom and main_proc:
        from visdom import Visdom

        viz = Visdom()
        opts = dict(title=args.id, ylabel='', xlabel='Epoch', legend=['Loss', 'WER', 'CER'])
        viz_window = None
        epochs = torch.arange(1, args.epochs + 1)
    if args.tensorboard and main_proc:
        os.makedirs(args.log_dir, exist_ok=True)
        from tensorboardX import SummaryWriter

        tensorboard_writer = SummaryWriter(args.log_dir)
    os.makedirs(save_folder, exist_ok=True)

    avg_loss, start_epoch, start_iter = 0, 0, 0
    if args.continue_from:  # Starting from previous model
        print("Loading checkpoint model %s" % args.continue_from)
        package = torch.load(args.continue_from, map_location=lambda storage, loc: storage)
        model = DeepSpeech.load_model_package(package)
        labels = DeepSpeech.get_labels(model)
        audio_conf = DeepSpeech.get_audio_conf(model)
        parameters = model.parameters()
        optimizer = torch.optim.SGD(parameters, lr=args.lr,
                                    momentum=args.momentum, nesterov=True)
        if not args.finetune:  # Don't want to restart training
            if args.cuda:
                model.cuda()
            optimizer.load_state_dict(package['optim_dict'])
            start_epoch = int(package.get('epoch', 1)) - 1  # Index start at 0 for training
            start_iter = package.get('iteration', None)
            if start_iter is None:
                start_epoch += 1  # We saved model after epoch finished, start at the next epoch.
                start_iter = 0
            else:
                start_iter += 1
            avg_loss = int(package.get('avg_loss', 0))
            loss_results, cer_results, wer_results = package['loss_results'], package[
                'cer_results'], package['wer_results']
            if main_proc and args.visdom and \
                            package[
                                'loss_results'] is not None and start_epoch > 0:  # Add previous scores to visdom graph
                x_axis = epochs[0:start_epoch]
                y_axis = torch.stack(
                    (loss_results[0:start_epoch], wer_results[0:start_epoch], cer_results[0:start_epoch]),
                    dim=1)
                viz_window = viz.line(
                    X=x_axis,
                    Y=y_axis,
                    opts=opts,
                )
            if main_proc and args.tensorboard and \
                            package[
                                'loss_results'] is not None and start_epoch > 0:  # Previous scores to tensorboard logs
                for i in range(start_epoch):
                    values = {
                        'Avg Train Loss': loss_results[i],
                        'Avg WER': wer_results[i],
                        'Avg CER': cer_results[i]
                    }
                    tensorboard_writer.add_scalars(args.id, values, i + 1)
    else:
        with open(args.labels_path) as label_file:
            labels = str(''.join(json.load(label_file)))

        audio_conf = dict(sample_rate=args.sample_rate,
                          window_size=args.window_size,
                          window_stride=args.window_stride,
                          window=args.window,
                          noise_dir=args.noise_dir,
                          noise_prob=args.noise_prob,
                          noise_levels=(args.noise_min, args.noise_max))

        rnn_type = args.rnn_type.lower()
        assert rnn_type in supported_rnns, "rnn_type should be either lstm, rnn or gru"
        model = DeepSpeech(rnn_hidden_size=args.hidden_size,
                           nb_layers=args.hidden_layers,
                           labels=labels,
                           rnn_type=supported_rnns[rnn_type],
                           audio_conf=audio_conf,
                           bidirectional=args.bidirectional)
        parameters = model.parameters()
        optimizer = torch.optim.SGD(parameters, lr=args.lr,
                                    momentum=args.momentum, nesterov=True)
    criterion = CTCLoss()
    decoder = GreedyDecoder(labels)
    train_dataset = SpectrogramDataset(audio_conf=audio_conf, manifest_filepath=args.train_manifest, labels=labels,
                                       normalize=True, augment=args.augment)
    test_dataset = SpectrogramDataset(audio_conf=audio_conf, manifest_filepath=args.val_manifest, labels=labels,
                                      normalize=True, augment=False)
    if not args.distributed:
        train_sampler = BucketingSampler(train_dataset, batch_size=args.batch_size)
    else:
        train_sampler = DistributedBucketingSampler(train_dataset, batch_size=args.batch_size,
                                                    num_replicas=args.world_size, rank=args.rank)
    train_loader = AudioDataLoader(train_dataset,
                                   num_workers=args.num_workers, batch_sampler=train_sampler)
    test_loader = AudioDataLoader(test_dataset, batch_size=args.batch_size,
                                  num_workers=args.num_workers)

    if (not args.no_shuffle and start_epoch != 0) or args.no_sorta_grad:
        print("Shuffling batches for the following epochs")
        train_sampler.shuffle(start_epoch)

    if args.cuda:
        model.cuda()
        if args.distributed:
            model = torch.nn.parallel.DistributedDataParallel(model,
                                                              device_ids=(int(args.gpu_rank),) if args.rank else None)

    print(model)
    print("Number of parameters: %d" % DeepSpeech.get_param_size(model))

    batch_time = AverageMeter()
    data_time = AverageMeter()
    losses = AverageMeter()

    for epoch in range(start_epoch, args.epochs):
        model.train()
        end = time.time()
        start_epoch_time = time.time()
        for i, (data) in enumerate(train_loader, start=start_iter):
            if i == len(train_sampler):
                break
            inputs, targets, input_percentages, target_sizes = data
            input_sizes = input_percentages.mul_(int(inputs.size(3))).int()
            # measure data loading time
            data_time.update(time.time() - end)

            if args.cuda:
                inputs = inputs.cuda()

            out, output_sizes = model(inputs, input_sizes)
            out = out.transpose(0, 1)  # TxNxH

            loss = criterion(out, targets, output_sizes, target_sizes)
            loss = loss / inputs.size(0)  # average the loss by minibatch

            inf = float("inf")
            if args.distributed:
                loss_value = reduce_tensor(loss, args.world_size)[0]
            else:
                loss_value = loss.item()
            if loss_value == inf or loss_value == -inf:
                print("WARNING: received an inf loss, setting loss value to 0")
                loss_value = 0

            avg_loss += loss_value
            losses.update(loss_value, inputs.size(0))

            # compute gradient
            optimizer.zero_grad()
            loss.backward()

            torch.nn.utils.clip_grad_norm_(model.parameters(), args.max_norm)
            # SGD step
            optimizer.step()

            # measure elapsed time
            batch_time.update(time.time() - end)
            end = time.time()
            if not args.silent:
                print('Epoch: [{0}][{1}/{2}]\t'
                      'Time {batch_time.val:.3f} ({batch_time.avg:.3f})\t'
                      'Data {data_time.val:.3f} ({data_time.avg:.3f})\t'
                      'Loss {loss.val:.4f} ({loss.avg:.4f})\t'.format(
                    (epoch + 1), (i + 1), len(train_sampler), batch_time=batch_time, data_time=data_time, loss=losses))
            if args.checkpoint_per_batch > 0 and i > 0 and (i + 1) % args.checkpoint_per_batch == 0 and main_proc:
                file_path = '%s/deepspeech_checkpoint_epoch_%d_iter_%d.pth' % (save_folder, epoch + 1, i + 1)
                print("Saving checkpoint model to %s" % file_path)
                torch.save(DeepSpeech.serialize(model, optimizer=optimizer, epoch=epoch, iteration=i,
                                                loss_results=loss_results,
                                                wer_results=wer_results, cer_results=cer_results, avg_loss=avg_loss),
                           file_path)
            del loss
            del out
        avg_loss /= len(train_sampler)

        epoch_time = time.time() - start_epoch_time
        print('Training Summary Epoch: [{0}]\t'
              'Time taken (s): {epoch_time:.0f}\t'
              'Average Loss {loss:.3f}\t'.format(epoch + 1, epoch_time=epoch_time, loss=avg_loss))

        start_iter = 0  # Reset start iteration for next epoch
        total_cer, total_wer = 0, 0
        model.eval()
        with torch.no_grad():
            for i, (data) in tqdm(enumerate(test_loader), total=len(test_loader)):
                inputs, targets, input_percentages, target_sizes = data
                input_sizes = input_percentages.mul_(int(inputs.size(3))).int()

                # unflatten targets
                split_targets = []
                offset = 0
                for size in target_sizes:
                    split_targets.append(targets[offset:offset + size])
                    offset += size

                if args.cuda:
                    inputs = inputs.cuda()

                out, output_sizes = model(inputs, input_sizes)

                decoded_output, _ = decoder.decode(out.data, output_sizes)
                target_strings = decoder.convert_to_strings(split_targets)
                wer, cer = 0, 0
                for x in range(len(target_strings)):
                    transcript, reference = decoded_output[x][0], target_strings[x][0]
                    wer += decoder.wer(transcript, reference) / float(len(reference.split()))
                    cer += decoder.cer(transcript, reference) / float(len(reference))
                total_cer += cer
                total_wer += wer
                del out
            wer = total_wer / len(test_loader.dataset)
            cer = total_cer / len(test_loader.dataset)
            wer *= 100
            cer *= 100
            loss_results[epoch] = avg_loss
            wer_results[epoch] = wer
            cer_results[epoch] = cer
            print('Validation Summary Epoch: [{0}]\t'
                  'Average WER {wer:.3f}\t'
                  'Average CER {cer:.3f}\t'.format(epoch + 1, wer=wer, cer=cer))

            if args.visdom and main_proc:
                x_axis = epochs[0:epoch + 1]
                y_axis = torch.stack(
                    (loss_results[0:epoch + 1], wer_results[0:epoch + 1], cer_results[0:epoch + 1]), dim=1)
                if viz_window is None:
                    viz_window = viz.line(
                        X=x_axis,
                        Y=y_axis,
                        opts=opts,
                    )
                else:
                    viz.line(
                        X=x_axis.unsqueeze(0).expand(y_axis.size(1), x_axis.size(0)).transpose(0, 1),  # Visdom fix
                        Y=y_axis,
                        win=viz_window,
                        update='replace',
                    )
            if args.tensorboard and main_proc:
                values = {
                    'Avg Train Loss': avg_loss,
                    'Avg WER': wer,
                    'Avg CER': cer
                }
                tensorboard_writer.add_scalars(args.id, values, epoch + 1)
                if args.log_params:
                    for tag, value in model.named_parameters():
                        tag = tag.replace('.', '/')
                        tensorboard_writer.add_histogram(tag, to_np(value), epoch + 1)
                        tensorboard_writer.add_histogram(tag + '/grad', to_np(value.grad), epoch + 1)
            if args.checkpoint and main_proc:
                file_path = '%s/deepspeech_%d.pth' % (save_folder, epoch + 1)
                torch.save(DeepSpeech.serialize(model, optimizer=optimizer, epoch=epoch, loss_results=loss_results,
                                                wer_results=wer_results, cer_results=cer_results),
                           file_path)
                # anneal lr
                optim_state = optimizer.state_dict()
                optim_state['param_groups'][0]['lr'] = optim_state['param_groups'][0]['lr'] / args.learning_anneal
                optimizer.load_state_dict(optim_state)
                print('Learning rate annealed to: {lr:.6f}'.format(lr=optim_state['param_groups'][0]['lr']))

            if (best_wer is None or best_wer > wer) and main_proc:
                print("Found better validated model, saving to %s" % args.model_path)
                torch.save(DeepSpeech.serialize(model, optimizer=optimizer, epoch=epoch, loss_results=loss_results,
                                                wer_results=wer_results, cer_results=cer_results), args.model_path)
                best_wer = wer

                avg_loss = 0
            if not args.no_shuffle:
                print("Shuffling batches...")
                train_sampler.shuffle(epoch)