Merge remote-tracking branch 'rodrigo/main' into vad-streaming
This commit is contained in:
commit
b2e4e9f727
5 changed files with 375 additions and 1 deletions
95
mic_test_whisper_simple.py
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95
mic_test_whisper_simple.py
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from microphone_stream import MicrophoneStream
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from voice_activity_controller import VoiceActivityController
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from whisper_online import *
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import numpy as np
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import librosa
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import io
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import soundfile
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import sys
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class SimpleASRProcessor:
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def __init__(self, asr, sampling_rate = 16000):
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"""run this when starting or restarting processing"""
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self.audio_buffer = np.array([],dtype=np.float32)
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self.prompt_buffer = ""
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self.asr = asr
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self.sampling_rate = sampling_rate
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self.init_prompt = ''
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def ts_words(self, segments):
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result = ""
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for segment in segments:
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if segment.no_speech_prob > 0.9:
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continue
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for word in segment.words:
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w = word.word
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t = (word.start, word.end, w)
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result +=w
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return result
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def stream_process(self, vad_result):
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iter_in_phrase = 0
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for chunk, is_final in vad_result:
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iter_in_phrase += 1
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if chunk is not None:
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sf = soundfile.SoundFile(io.BytesIO(chunk), channels=1,endian="LITTLE",samplerate=SAMPLING_RATE, subtype="PCM_16",format="RAW")
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audio, _ = librosa.load(sf,sr=SAMPLING_RATE)
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out = []
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out.append(audio)
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a = np.concatenate(out)
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self.audio_buffer = np.append(self.audio_buffer, a)
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if is_final and len(self.audio_buffer) > 0:
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res = self.asr.transcribe(self.audio_buffer, init_prompt=self.init_prompt)
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tsw = self.ts_words(res)
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self.init_prompt = self.init_prompt + tsw
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self.init_prompt = self.init_prompt [-100:]
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self.audio_buffer.resize(0)
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iter_in_phrase =0
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yield True, tsw
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# show progress evry 50 chunks
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elif iter_in_phrase % 50 == 0 and len(self.audio_buffer) > 0:
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res = self.asr.transcribe(self.audio_buffer, init_prompt=self.init_prompt)
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# use custom ts_words
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tsw = self.ts_words(res)
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yield False, tsw
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SAMPLING_RATE = 16000
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model = "large-v2"
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src_lan = "en" # source language
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tgt_lan = "en" # target language -- same as source for ASR, "en" if translate task is used
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use_vad = False
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min_sample_length = 1 * SAMPLING_RATE
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vac = VoiceActivityController(use_vad_result = use_vad)
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asr = FasterWhisperASR(src_lan, "large-v2") # loads and wraps Whisper model
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tokenizer = create_tokenizer(tgt_lan)
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online = SimpleASRProcessor(asr)
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stream = MicrophoneStream()
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stream = vac.detect_user_speech(stream, audio_in_int16 = False)
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stream = online.stream_process(stream)
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for isFinal, text in stream:
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if isFinal:
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print( text, end="\r\n")
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else:
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print( text, end="\r")
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71
mic_test_whisper_streaming.py
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71
mic_test_whisper_streaming.py
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@ -0,0 +1,71 @@
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from microphone_stream import MicrophoneStream
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from voice_activity_controller import VoiceActivityController
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from whisper_online import *
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import numpy as np
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import librosa
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import io
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import soundfile
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import sys
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SAMPLING_RATE = 16000
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model = "large-v2"
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src_lan = "en" # source language
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tgt_lan = "en" # target language -- same as source for ASR, "en" if translate task is used
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use_vad_result = True
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min_sample_length = 1 * SAMPLING_RATE
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asr = FasterWhisperASR(src_lan, model) # loads and wraps Whisper model
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tokenizer = create_tokenizer(tgt_lan) # sentence segmenter for the target language
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online = OnlineASRProcessor(asr, tokenizer) # create processing object
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microphone_stream = MicrophoneStream()
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vad = VoiceActivityController(use_vad_result = use_vad_result)
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complete_text = ''
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final_processing_pending = False
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out = []
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out_len = 0
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for iter in vad.detect_user_speech(microphone_stream): # processing loop:
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raw_bytes= iter[0]
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is_final = iter[1]
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if raw_bytes:
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sf = soundfile.SoundFile(io.BytesIO(raw_bytes), channels=1,endian="LITTLE",samplerate=SAMPLING_RATE, subtype="PCM_16",format="RAW")
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audio, _ = librosa.load(sf,sr=SAMPLING_RATE)
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out.append(audio)
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out_len += len(audio)
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if (is_final or out_len >= min_sample_length) and out_len>0:
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a = np.concatenate(out)
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online.insert_audio_chunk(a)
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if out_len > min_sample_length:
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o = online.process_iter()
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print('-----'*10)
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complete_text = complete_text + o[2]
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print('PARTIAL - '+ complete_text) # do something with current partial output
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print('-----'*10)
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out = []
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out_len = 0
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if is_final:
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o = online.finish()
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# final_processing_pending = False
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print('-----'*10)
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complete_text = complete_text + o[2]
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print('FINAL - '+ complete_text) # do something with current partial output
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print('-----'*10)
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online.init()
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out = []
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out_len = 0
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82
microphone_stream.py
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82
microphone_stream.py
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@ -0,0 +1,82 @@
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### mic stream
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import queue
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import re
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import sys
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import pyaudio
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class MicrophoneStream:
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def __init__(
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self,
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sample_rate: int = 16000,
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):
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"""
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Creates a stream of audio from the microphone.
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Args:
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chunk_size: The size of each chunk of audio to read from the microphone.
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channels: The number of channels to record audio from.
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sample_rate: The sample rate to record audio at.
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"""
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try:
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import pyaudio
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except ImportError:
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raise Exception('py audio not installed')
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self._pyaudio = pyaudio.PyAudio()
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self.sample_rate = sample_rate
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self._chunk_size = int(self.sample_rate * 40 / 1000)
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self._stream = self._pyaudio.open(
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format=pyaudio.paInt16,
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channels=1,
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rate=sample_rate,
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input=True,
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frames_per_buffer=self._chunk_size,
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)
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self._open = True
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def __iter__(self):
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"""
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Returns the iterator object.
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"""
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return self
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def __next__(self):
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"""
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Reads a chunk of audio from the microphone.
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"""
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if not self._open:
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raise StopIteration
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try:
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return self._stream.read(self._chunk_size)
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except KeyboardInterrupt:
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raise StopIteration
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def close(self):
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"""
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Closes the stream.
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"""
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self._open = False
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if self._stream.is_active():
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self._stream.stop_stream()
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self._stream.close()
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self._pyaudio.terminate()
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119
voice_activity_controller.py
Normal file
119
voice_activity_controller.py
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@ -0,0 +1,119 @@
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import torch
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import numpy as np
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# import sounddevice as sd
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import torch
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import numpy as np
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import datetime
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def int2float(sound):
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abs_max = np.abs(sound).max()
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sound = sound.astype('float32')
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if abs_max > 0:
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sound *= 1/32768
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sound = sound.squeeze() # depends on the use case
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return sound
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class VoiceActivityController:
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def __init__(
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self,
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sampling_rate = 16000,
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min_silence_to_final_ms = 500,
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min_speech_to_final_ms = 100,
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min_silence_duration_ms = 100,
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use_vad_result = True,
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activity_detected_callback=None,
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threshold =0.3
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):
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self.activity_detected_callback=activity_detected_callback
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self.model, self.utils = torch.hub.load(
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repo_or_dir='snakers4/silero-vad',
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model='silero_vad'
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)
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# (self.get_speech_timestamps,
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# save_audio,
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# read_audio,
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# VADIterator,
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# collect_chunks) = self.utils
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self.sampling_rate = sampling_rate
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self.final_silence_limit = min_silence_to_final_ms * self.sampling_rate / 1000
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self.final_speech_limit = min_speech_to_final_ms *self.sampling_rate / 1000
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self.min_silence_samples = sampling_rate * min_silence_duration_ms / 1000
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self.use_vad_result = use_vad_result
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self.last_marked_chunk = None
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self.threshold = threshold
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self.reset_states()
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def reset_states(self):
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self.model.reset_states()
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self.temp_end = 0
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self.current_sample = 0
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def apply_vad(self, audio):
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x = int2float(audio)
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if not torch.is_tensor(x):
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try:
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x = torch.Tensor(x)
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except:
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raise TypeError("Audio cannot be casted to tensor. Cast it manually")
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speech_prob = self.model(x, self.sampling_rate).item()
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window_size_samples = len(x[0]) if x.dim() == 2 else len(x)
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self.current_sample += window_size_samples
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if (speech_prob >= self.threshold):
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self.temp_end = 0
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return audio, window_size_samples, 0
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else :
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if not self.temp_end:
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self.temp_end = self.current_sample
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if self.current_sample - self.temp_end < self.min_silence_samples:
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return audio, 0, window_size_samples
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else:
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return np.array([], dtype=np.float16) if self.use_vad_result else audio, 0, window_size_samples
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def detect_user_speech(self, audio_stream, audio_in_int16 = False):
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last_silence_len= 0
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speech_len = 0
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for data in audio_stream: # replace with your condition of choice
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audio_block = np.frombuffer(data, dtype=np.int16) if not audio_in_int16 else data
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wav = audio_block
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is_final = False
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voice_audio, speech_in_wav, last_silent_in_wav = self.apply_vad(wav)
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if speech_in_wav > 0 :
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last_silence_len= 0
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speech_len += speech_in_wav
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if self.activity_detected_callback is not None:
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self.activity_detected_callback()
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last_silence_len += last_silent_in_wav
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if last_silence_len>= self.final_silence_limit and speech_len >= self.final_speech_limit:
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is_final = True
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last_silence_len= 0
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speech_len = 0
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yield voice_audio.tobytes(), is_final
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@ -4,7 +4,7 @@ import numpy as np
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import librosa
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import librosa
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from functools import lru_cache
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from functools import lru_cache
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import time
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import time
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import datetime
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@lru_cache
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@lru_cache
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@ -118,14 +118,21 @@ class FasterWhisperASR(ASRBase):
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return model
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return model
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def transcribe(self, audio, init_prompt=""):
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def transcribe(self, audio, init_prompt=""):
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# tiempo_inicio = datetime.datetime.now()
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# tested: beam_size=5 is faster and better than 1 (on one 200 second document from En ESIC, min chunk 0.01)
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# tested: beam_size=5 is faster and better than 1 (on one 200 second document from En ESIC, min chunk 0.01)
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segments, info = self.model.transcribe(audio, language=self.original_language, initial_prompt=init_prompt, beam_size=5, word_timestamps=True, condition_on_previous_text=True, **self.transcribe_kargs)
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segments, info = self.model.transcribe(audio, language=self.original_language, initial_prompt=init_prompt, beam_size=5, word_timestamps=True, condition_on_previous_text=True, **self.transcribe_kargs)
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# print(f'({datetime.datetime.now().strftime("%Y-%m-%d %H:%M:%S.%f")})----------r> whisper transcribe take { (datetime.datetime.now() -tiempo_inicio) } ms.')
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return list(segments)
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return list(segments)
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|
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def ts_words(self, segments):
|
def ts_words(self, segments):
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o = []
|
o = []
|
||||||
for segment in segments:
|
for segment in segments:
|
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for word in segment.words:
|
for word in segment.words:
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if segment.no_speech_prob > 0.9:
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continue
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||||||
# not stripping the spaces -- should not be merged with them!
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# not stripping the spaces -- should not be merged with them!
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w = word.word
|
w = word.word
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t = (word.start, word.end, w)
|
t = (word.start, word.end, w)
|
||||||
|
|
|
||||||
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Reference in a new issue