ecoute/AudioTranscriber.py

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4.4 KiB
Python
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import whisper
import torch
import wave
import os
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import threading
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from tempfile import NamedTemporaryFile
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import custom_speech_recognition as sr
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import io
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from datetime import timedelta
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import pyaudiowpatch as pyaudio
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from heapq import merge
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PHRASE_TIMEOUT = 3.05
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MAX_PHRASES = 10
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class AudioTranscriber:
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def __init__(self, mic_source, speaker_source, model):
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self.transcript_data = {"You": [], "Speaker": []}
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self.transcript_changed_event = threading.Event()
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self.audio_model = model
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self.audio_sources = {
"You": {
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"sample_rate": mic_source.SAMPLE_RATE,
"sample_width": mic_source.SAMPLE_WIDTH,
"channels": mic_source.channels,
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"last_sample": bytes(),
"last_spoken": None,
"new_phrase": True,
"process_data_func": self.process_mic_data
},
"Speaker": {
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"sample_rate": speaker_source.SAMPLE_RATE,
"sample_width": speaker_source.SAMPLE_WIDTH,
"channels": speaker_source.channels,
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"last_sample": bytes(),
"last_spoken": None,
"new_phrase": True,
"process_data_func": self.process_speaker_data
}
}
def transcribe_audio_queue(self, audio_queue):
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while True:
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who_spoke, data, time_spoken = audio_queue.get()
self.update_last_sample_and_phrase_status(who_spoke, data, time_spoken)
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source_info = self.audio_sources[who_spoke]
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text = ''
temp_file = NamedTemporaryFile(delete=False, suffix=".wav")
source_info["process_data_func"](source_info["last_sample"], temp_file.name)
text = self.audio_model.get_transcription(temp_file.name)
temp_file.close()
os.unlink(temp_file.name)
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if text != '' and text.lower() != 'you':
self.update_transcript(who_spoke, text, time_spoken)
self.transcript_changed_event.set()
def update_last_sample_and_phrase_status(self, who_spoke, data, time_spoken):
source_info = self.audio_sources[who_spoke]
if source_info["last_spoken"] and time_spoken - source_info["last_spoken"] > timedelta(seconds=PHRASE_TIMEOUT):
source_info["last_sample"] = bytes()
source_info["new_phrase"] = True
else:
source_info["new_phrase"] = False
source_info["last_sample"] += data
source_info["last_spoken"] = time_spoken
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def process_mic_data(self, data, temp_file_name):
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audio_data = sr.AudioData(data, self.audio_sources["You"]["sample_rate"], self.audio_sources["You"]["sample_width"])
wav_data = io.BytesIO(audio_data.get_wav_data())
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with open(temp_file_name, 'w+b') as f:
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f.write(wav_data.read())
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def process_speaker_data(self, data, temp_file_name):
with wave.open(temp_file_name, 'wb') as wf:
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wf.setnchannels(self.audio_sources["Speaker"]["channels"])
p = pyaudio.PyAudio()
wf.setsampwidth(p.get_sample_size(pyaudio.paInt16))
wf.setframerate(self.audio_sources["Speaker"]["sample_rate"])
wf.writeframes(data)
def update_transcript(self, who_spoke, text, time_spoken):
source_info = self.audio_sources[who_spoke]
transcript = self.transcript_data[who_spoke]
if source_info["new_phrase"] or len(transcript) == 0:
if len(transcript) > MAX_PHRASES:
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transcript.pop(-1)
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transcript.insert(0, (f"{who_spoke}: [{text}]\n\n", time_spoken))
else:
transcript[0] = (f"{who_spoke}: [{text}]\n\n", time_spoken)
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def get_transcript(self):
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combined_transcript = list(merge(
self.transcript_data["You"], self.transcript_data["Speaker"],
key=lambda x: x[1], reverse=True))
combined_transcript = combined_transcript[:MAX_PHRASES]
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return "".join([t[0] for t in combined_transcript])
def clear_transcript_data(self):
self.transcript_data["You"].clear()
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self.transcript_data["Speaker"].clear()
self.audio_sources["You"]["last_sample"] = bytes()
self.audio_sources["Speaker"]["last_sample"] = bytes()
self.audio_sources["You"]["new_phrase"] = True
self.audio_sources["Speaker"]["new_phrase"] = True