游雁
2023-02-08 83b515d94ae71e5d01166f5578db4280c4d42a67
Merge branch 'main' of github.com:alibaba-damo-academy/FunASR
add
1个文件已修改
112 ■■■■■ 已修改文件
funasr/bin/asr_inference_paraformer_vad_punc.py 112 ●●●●● 补丁 | 查看 | 原始文档 | blame | 历史
funasr/bin/asr_inference_paraformer_vad_punc.py
@@ -529,8 +529,9 @@
        nbest=nbest,
    )
    speech2text = Speech2Text(**speech2text_kwargs)
    text2punc = Text2Punc(punc_infer_config, punc_model_file, device=device, dtype=dtype)
    text2punc = None
    if punc_model_file is not None:
        text2punc = Text2Punc(punc_infer_config, punc_model_file, device=device, dtype=dtype)
    if output_dir is not None:
        writer = DatadirWriter(output_dir)
@@ -560,38 +561,28 @@
            allow_variable_data_keys=allow_variable_data_keys,
            inference=True,
        )
        forward_time_total = 0.0
        length_total = 0.0
        finish_count = 0
        file_count = 1
        lfr_factor = 6
        # 7 .Start for-loop
        asr_result_list = []
        output_path = output_dir_v2 if output_dir_v2 is not None else output_dir
        writer = None
        if output_path is not None:
            writer = DatadirWriter(output_path)
            ibest_writer = writer[f"1best_recog"]
            # ibest_writer["punc_dict"][""] = " ".join(punc_infer_config.punc_list)
            # ibest_writer["token_list"][""] = " ".join(asr_train_config.token_list)
        else:
            writer = None
        for keys, batch in loader:
            assert isinstance(batch, dict), type(batch)
            assert all(isinstance(s, str) for s in keys), keys
            _bs = len(next(iter(batch.values())))
            assert len(keys) == _bs, f"{len(keys)} != {_bs}"
            # batch = {k: v for k, v in batch.items() if not k.endswith("_lengths")}
            logging.info("decoding, utt_id: {}".format(keys))
            # N-best list of (text, token, token_int, hyp_object)
            time_beg = time.time()
            vad_results = speech2vadsegment(**batch)
            time_end = time.time()
            fbanks, vadsegments = vad_results[0], vad_results[1]
            for i, segments in enumerate(vadsegments):
                result_segments = [["", [], [], ]]
                result_segments = [["", [], [], []]]
                for j, segment_idx in enumerate(segments):
                    bed_idx, end_idx = int(segment_idx[0] / 10), int(segment_idx[1] / 10)
                    segment = fbanks[:, bed_idx:end_idx, :].to(device)
@@ -600,76 +591,51 @@
                             "end_time": vadsegments[i][j][1]}
                    results = speech2text(**batch)
                    if len(results) < 1:
                        hyp = Hypothesis(score=0.0, scores={}, states={}, yseq=[])
                        results = [[" ", ["sil"], [2], 0, 1, 6]] * nbest
                    time_end = time.time()
                    forward_time = time_end - time_beg
                    lfr_factor = results[0][-1]
                    length = results[0][-2]
                    forward_time_total += forward_time
                    length_total += length
                    logging.info(
                        "decoding, feature length: {}, forward_time: {:.4f}, rtf: {:.4f}".
                        format(length, forward_time, 100 * forward_time / (length * lfr_factor)))
                        continue
                    result_cur = [results[0][:-2]]
                    if j == 0:
                        result_segments = result_cur
                    else:
                        result_segments = [[result_segments[0][i] + result_cur[0][i] for i in range(len(result_cur[0]))]]
                key = keys[0]
                result = result_segments[0]
                text, token, token_int = result[0], result[1], result[2]
                time_stamp = None if len(result) < 4 else result[3]
                # Create a directory: outdir/{n}best_recog
                postprocessed_result = postprocess_utils.sentence_postprocess(token, time_stamp)
                text_postprocessed = ""
                time_stamp_postprocessed = ""
                text_postprocessed_punc = postprocessed_result
                if len(postprocessed_result) == 3:
                    text_postprocessed, time_stamp_postprocessed, word_lists = postprocessed_result[0], \
                                                                               postprocessed_result[1], \
                                                                               postprocessed_result[2]
                    text_postprocessed_punc = ""
                    if len(word_lists) > 0 and text2punc is not None:
                        text_postprocessed_punc, punc_id_list = text2punc(word_lists, 20)
                item = {'key': key, 'value': text_postprocessed_punc}
                if text_postprocessed != "":
                    item['text_postprocessed'] = text_postprocessed
                if time_stamp_postprocessed != "":
                    item['time_stamp'] = time_stamp_postprocessed
                asr_result_list.append(item)
                finish_count += 1
                # asr_utils.print_progress(finish_count / file_count)
                if writer is not None:
                    # Write the result to each file
                    ibest_writer["token"][key] = " ".join(token)
                    ibest_writer["token_int"][key] = " ".join(map(str, token_int))
                    ibest_writer["vad"][key] = "{}".format(vadsegments)
                if text is not None:
                    postprocessed_result = postprocess_utils.sentence_postprocess(token, time_stamp)
                    if len(postprocessed_result) == 3:
                        text_postprocessed, time_stamp_postprocessed, word_lists = postprocessed_result[0], \
                                                                                   postprocessed_result[1], \
                                                                                   postprocessed_result[2]
                        if len(word_lists) > 0:
                            text_postprocessed_punc, punc_id_list = text2punc(word_lists, 20)
                            text_postprocessed_punc_time_stamp = json.dumps({"predictions": text_postprocessed_punc,
                                                                             "time_stamp": time_stamp_postprocessed},
                                                                            ensure_ascii=False)
                        else:
                            text_postprocessed_punc = ""
                            punc_id_list = []
                            text_postprocessed_punc_time_stamp = ""
                    else:
                        text_postprocessed = ""
                        time_stamp_postprocessed = ""
                        word_lists = ""
                        text_postprocessed_punc_time_stamp = ""
                        punc_id_list = ""
                        text_postprocessed_punc = ""
                    item = {'key': key, 'value': text_postprocessed_punc, 'text_postprocessed': text_postprocessed,
                            'time_stamp': time_stamp_postprocessed, 'token': token}
                    asr_result_list.append(item)
                    finish_count += 1
                    # asr_utils.print_progress(finish_count / file_count)
                    if writer is not None:
                        ibest_writer["text"][key] = text_postprocessed
                        ibest_writer["punc_id"][key] = "{}".format(punc_id_list)
                        ibest_writer["text_with_punc"][key] = text_postprocessed_punc_time_stamp
                        if time_stamp_postprocessed is not None:
                            ibest_writer["time_stamp"][key] = "{}".format(time_stamp_postprocessed)
                logging.info("decoding, utt: {}, predictions: {}, time_stamp: {}".format(key, text_postprocessed_punc,
                                                                                         time_stamp_postprocessed))
        logging.info("decoding, feature length total: {}, forward_time total: {:.4f}, rtf avg: {:.4f}".
                     format(length_total, forward_time_total, 100 * forward_time_total / (length_total * lfr_factor+1e-6)))
                    ibest_writer["text"][key] = text_postprocessed
                    ibest_writer["text_with_punc"][key] = text_postprocessed_punc
                    if time_stamp_postprocessed is not None:
                        ibest_writer["time_stamp"][key] = "{}".format(time_stamp_postprocessed)
                logging.info("decoding, utt: {}, predictions: {}".format(key, text_postprocessed_punc))
        return asr_result_list
    return _forward