From cc2c1d1d53dea5d2c45f858d1baa5bd279f47987 Mon Sep 17 00:00:00 2001
From: nichongjia-2007 <nichongjia@gmail.com>
Date: 星期三, 31 五月 2023 14:39:25 +0800
Subject: [PATCH] Merge branch 'main' of https://github.com/alibaba-damo-academy/FunASR

---
 funasr/bin/punc_infer.py |  271 ++++++++++++++++++++++++++++++++++++++++++++++++++++++
 1 files changed, 271 insertions(+), 0 deletions(-)

diff --git a/funasr/bin/punc_infer.py b/funasr/bin/punc_infer.py
new file mode 100644
index 0000000..4b6cd27
--- /dev/null
+++ b/funasr/bin/punc_infer.py
@@ -0,0 +1,271 @@
+# -*- encoding: utf-8 -*-
+#!/usr/bin/env python3
+# Copyright FunASR (https://github.com/alibaba-damo-academy/FunASR). All Rights Reserved.
+#  MIT License  (https://opensource.org/licenses/MIT)
+
+import argparse
+import logging
+from pathlib import Path
+import sys
+from typing import Optional
+from typing import Sequence
+from typing import Tuple
+from typing import Union
+from typing import Any
+from typing import List
+
+import numpy as np
+import torch
+from typeguard import check_argument_types
+
+from funasr.datasets.preprocessor import CodeMixTokenizerCommonPreprocessor
+from funasr.utils.cli_utils import get_commandline_args
+from funasr.tasks.punctuation import PunctuationTask
+from funasr.torch_utils.device_funcs import to_device
+from funasr.torch_utils.forward_adaptor import ForwardAdaptor
+from funasr.torch_utils.set_all_random_seed import set_all_random_seed
+from funasr.utils import config_argparse
+from funasr.utils.types import str2triple_str
+from funasr.utils.types import str_or_none
+from funasr.datasets.preprocessor import split_to_mini_sentence
+
+
+class Text2Punc:
+
+    def __init__(
+        self,
+        train_config: Optional[str],
+        model_file: Optional[str],
+        device: str = "cpu",
+        dtype: str = "float32",
+    ):
+        #  Build Model
+        model, train_args = PunctuationTask.build_model_from_file(train_config, model_file, device)
+        self.device = device
+        # Wrape model to make model.nll() data-parallel
+        self.wrapped_model = ForwardAdaptor(model, "inference")
+        self.wrapped_model.to(dtype=getattr(torch, dtype)).to(device=device).eval()
+        # logging.info(f"Model:\n{model}")
+        self.punc_list = train_args.punc_list
+        self.period = 0
+        for i in range(len(self.punc_list)):
+            if self.punc_list[i] == ",":
+                self.punc_list[i] = "锛�"
+            elif self.punc_list[i] == "?":
+                self.punc_list[i] = "锛�"
+            elif self.punc_list[i] == "銆�":
+                self.period = i
+        self.preprocessor = CodeMixTokenizerCommonPreprocessor(
+            train=False,
+            token_type=train_args.token_type,
+            token_list=train_args.token_list,
+            bpemodel=train_args.bpemodel,
+            text_cleaner=train_args.cleaner,
+            g2p_type=train_args.g2p,
+            text_name="text",
+            non_linguistic_symbols=train_args.non_linguistic_symbols,
+        )
+
+    @torch.no_grad()
+    def __call__(self, text: Union[list, str], split_size=20):
+        data = {"text": text}
+        result = self.preprocessor(data=data, uid="12938712838719")
+        split_text = self.preprocessor.pop_split_text_data(result)
+        mini_sentences = split_to_mini_sentence(split_text, split_size)
+        mini_sentences_id = split_to_mini_sentence(data["text"], split_size)
+        assert len(mini_sentences) == len(mini_sentences_id)
+        cache_sent = []
+        cache_sent_id = torch.from_numpy(np.array([], dtype='int32'))
+        new_mini_sentence = ""
+        new_mini_sentence_punc = []
+        cache_pop_trigger_limit = 200
+        for mini_sentence_i in range(len(mini_sentences)):
+            mini_sentence = mini_sentences[mini_sentence_i]
+            mini_sentence_id = mini_sentences_id[mini_sentence_i]
+            mini_sentence = cache_sent + mini_sentence
+            mini_sentence_id = np.concatenate((cache_sent_id, mini_sentence_id), axis=0)
+            data = {
+                "text": torch.unsqueeze(torch.from_numpy(mini_sentence_id), 0),
+                "text_lengths": torch.from_numpy(np.array([len(mini_sentence_id)], dtype='int32')),
+            }
+            data = to_device(data, self.device)
+            y, _ = self.wrapped_model(**data)
+            _, indices = y.view(-1, y.shape[-1]).topk(1, dim=1)
+            punctuations = indices
+            if indices.size()[0] != 1:
+                punctuations = torch.squeeze(indices)
+            assert punctuations.size()[0] == len(mini_sentence)
+
+            # Search for the last Period/QuestionMark as cache
+            if mini_sentence_i < len(mini_sentences) - 1:
+                sentenceEnd = -1
+                last_comma_index = -1
+                for i in range(len(punctuations) - 2, 1, -1):
+                    if self.punc_list[punctuations[i]] == "銆�" or self.punc_list[punctuations[i]] == "锛�":
+                        sentenceEnd = i
+                        break
+                    if last_comma_index < 0 and self.punc_list[punctuations[i]] == "锛�":
+                        last_comma_index = i
+
+                if sentenceEnd < 0 and len(mini_sentence) > cache_pop_trigger_limit and last_comma_index >= 0:
+                    # The sentence it too long, cut off at a comma.
+                    sentenceEnd = last_comma_index
+                    punctuations[sentenceEnd] = self.period
+                cache_sent = mini_sentence[sentenceEnd + 1:]
+                cache_sent_id = mini_sentence_id[sentenceEnd + 1:]
+                mini_sentence = mini_sentence[0:sentenceEnd + 1]
+                punctuations = punctuations[0:sentenceEnd + 1]
+
+            # if len(punctuations) == 0:
+            #    continue
+
+            punctuations_np = punctuations.cpu().numpy()
+            new_mini_sentence_punc += [int(x) for x in punctuations_np]
+            words_with_punc = []
+            for i in range(len(mini_sentence)):
+                if i > 0:
+                    if len(mini_sentence[i][0].encode()) == 1 and len(mini_sentence[i - 1][0].encode()) == 1:
+                        mini_sentence[i] = " " + mini_sentence[i]
+                words_with_punc.append(mini_sentence[i])
+                if self.punc_list[punctuations[i]] != "_":
+                    words_with_punc.append(self.punc_list[punctuations[i]])
+            new_mini_sentence += "".join(words_with_punc)
+            # Add Period for the end of the sentence
+            new_mini_sentence_out = new_mini_sentence
+            new_mini_sentence_punc_out = new_mini_sentence_punc
+            if mini_sentence_i == len(mini_sentences) - 1:
+                if new_mini_sentence[-1] == "锛�" or new_mini_sentence[-1] == "銆�":
+                    new_mini_sentence_out = new_mini_sentence[:-1] + "銆�"
+                    new_mini_sentence_punc_out = new_mini_sentence_punc[:-1] + [self.period]
+                elif new_mini_sentence[-1] != "銆�" and new_mini_sentence[-1] != "锛�":
+                    new_mini_sentence_out = new_mini_sentence + "銆�"
+                    new_mini_sentence_punc_out = new_mini_sentence_punc[:-1] + [self.period]
+        return new_mini_sentence_out, new_mini_sentence_punc_out
+
+
+class Text2PuncVADRealtime:
+    
+    def __init__(
+        self,
+        train_config: Optional[str],
+        model_file: Optional[str],
+        device: str = "cpu",
+        dtype: str = "float32",
+    ):
+        #  Build Model
+        model, train_args = PunctuationTask.build_model_from_file(train_config, model_file, device)
+        self.device = device
+        # Wrape model to make model.nll() data-parallel
+        self.wrapped_model = ForwardAdaptor(model, "inference")
+        self.wrapped_model.to(dtype=getattr(torch, dtype)).to(device=device).eval()
+        # logging.info(f"Model:\n{model}")
+        self.punc_list = train_args.punc_list
+        self.period = 0
+        for i in range(len(self.punc_list)):
+            if self.punc_list[i] == ",":
+                self.punc_list[i] = "锛�"
+            elif self.punc_list[i] == "?":
+                self.punc_list[i] = "锛�"
+            elif self.punc_list[i] == "銆�":
+                self.period = i
+        self.preprocessor = CodeMixTokenizerCommonPreprocessor(
+            train=False,
+            token_type=train_args.token_type,
+            token_list=train_args.token_list,
+            bpemodel=train_args.bpemodel,
+            text_cleaner=train_args.cleaner,
+            g2p_type=train_args.g2p,
+            text_name="text",
+            non_linguistic_symbols=train_args.non_linguistic_symbols,
+        )
+    
+    @torch.no_grad()
+    def __call__(self, text: Union[list, str], cache: list, split_size=20):
+        if cache is not None and len(cache) > 0:
+            precache = "".join(cache)
+        else:
+            precache = ""
+            cache = []
+        data = {"text": precache + " " + text}
+        result = self.preprocessor(data=data, uid="12938712838719")
+        split_text = self.preprocessor.pop_split_text_data(result)
+        mini_sentences = split_to_mini_sentence(split_text, split_size)
+        mini_sentences_id = split_to_mini_sentence(data["text"], split_size)
+        assert len(mini_sentences) == len(mini_sentences_id)
+        cache_sent = []
+        cache_sent_id = torch.from_numpy(np.array([], dtype='int32'))
+        sentence_punc_list = []
+        sentence_words_list = []
+        cache_pop_trigger_limit = 200
+        skip_num = 0
+        for mini_sentence_i in range(len(mini_sentences)):
+            mini_sentence = mini_sentences[mini_sentence_i]
+            mini_sentence_id = mini_sentences_id[mini_sentence_i]
+            mini_sentence = cache_sent + mini_sentence
+            mini_sentence_id = np.concatenate((cache_sent_id, mini_sentence_id), axis=0)
+            data = {
+                "text": torch.unsqueeze(torch.from_numpy(mini_sentence_id), 0),
+                "text_lengths": torch.from_numpy(np.array([len(mini_sentence_id)], dtype='int32')),
+                "vad_indexes": torch.from_numpy(np.array([len(cache)], dtype='int32')),
+            }
+            data = to_device(data, self.device)
+            y, _ = self.wrapped_model(**data)
+            _, indices = y.view(-1, y.shape[-1]).topk(1, dim=1)
+            punctuations = indices
+            if indices.size()[0] != 1:
+                punctuations = torch.squeeze(indices)
+            assert punctuations.size()[0] == len(mini_sentence)
+            
+            # Search for the last Period/QuestionMark as cache
+            if mini_sentence_i < len(mini_sentences) - 1:
+                sentenceEnd = -1
+                last_comma_index = -1
+                for i in range(len(punctuations) - 2, 1, -1):
+                    if self.punc_list[punctuations[i]] == "銆�" or self.punc_list[punctuations[i]] == "锛�":
+                        sentenceEnd = i
+                        break
+                    if last_comma_index < 0 and self.punc_list[punctuations[i]] == "锛�":
+                        last_comma_index = i
+                
+                if sentenceEnd < 0 and len(mini_sentence) > cache_pop_trigger_limit and last_comma_index >= 0:
+                    # The sentence it too long, cut off at a comma.
+                    sentenceEnd = last_comma_index
+                    punctuations[sentenceEnd] = self.period
+                cache_sent = mini_sentence[sentenceEnd + 1:]
+                cache_sent_id = mini_sentence_id[sentenceEnd + 1:]
+                mini_sentence = mini_sentence[0:sentenceEnd + 1]
+                punctuations = punctuations[0:sentenceEnd + 1]
+            
+            punctuations_np = punctuations.cpu().numpy()
+            sentence_punc_list += [self.punc_list[int(x)] for x in punctuations_np]
+            sentence_words_list += mini_sentence
+        
+        assert len(sentence_punc_list) == len(sentence_words_list)
+        words_with_punc = []
+        sentence_punc_list_out = []
+        for i in range(0, len(sentence_words_list)):
+            if i > 0:
+                if len(sentence_words_list[i][0].encode()) == 1 and len(sentence_words_list[i - 1][-1].encode()) == 1:
+                    sentence_words_list[i] = " " + sentence_words_list[i]
+            if skip_num < len(cache):
+                skip_num += 1
+            else:
+                words_with_punc.append(sentence_words_list[i])
+            if skip_num >= len(cache):
+                sentence_punc_list_out.append(sentence_punc_list[i])
+                if sentence_punc_list[i] != "_":
+                    words_with_punc.append(sentence_punc_list[i])
+        sentence_out = "".join(words_with_punc)
+        
+        sentenceEnd = -1
+        for i in range(len(sentence_punc_list) - 2, 1, -1):
+            if sentence_punc_list[i] == "銆�" or sentence_punc_list[i] == "锛�":
+                sentenceEnd = i
+                break
+        cache_out = sentence_words_list[sentenceEnd + 1:]
+        if sentence_out[-1] in self.punc_list:
+            sentence_out = sentence_out[:-1]
+            sentence_punc_list_out[-1] = "_"
+        return sentence_out, sentence_punc_list_out, cache_out
+
+

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