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translation_demo.py
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translation_demo.py
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import argparse
import io
import os
import speech_recognition as sr
import whisper
import torch
import subprocess
import nltk
from nltk.tokenize import sent_tokenize
from datetime import datetime, timedelta
from queue import Queue
from tempfile import NamedTemporaryFile
from time import sleep
from sys import platform
from faster_whisper import WhisperModel
from translatepy.translators.google import GoogleTranslate
from TranscriptionWindow import TranscriptionWindow
def main():
parser = argparse.ArgumentParser()
parser.add_argument("--model", default="medium", help="Model to use",
choices=["tiny", "base", "small", "medium", "large"])
parser.add_argument("--device", default="auto", help="device to user for CTranslate2 inference",
choices=["auto", "cuda","cpu"])
parser.add_argument("--compute_type", default="auto", help="Type of quantization to use",
choices=["auto", "int8", "int8_floatt16", "float16", "int16", "float32"])
parser.add_argument("--translation_lang", default='English',
help="Which language should we translate into." , type=str)
parser.add_argument("--non_english", action='store_true',
help="Don't use the english model.")
parser.add_argument("--threads", default=0,
help="number of threads used for CPU inference", type=int)
parser.add_argument("--energy_threshold", default=1000,
help="Energy level for mic to detect.", type=int)
parser.add_argument("--record_timeout", default=2,
help="How real time the recording is in seconds.", type=float)
parser.add_argument("--phrase_timeout", default=3,
help="How much empty space between recordings before we "
"consider it a new line in the transcription.", type=float)
if 'linux' in platform:
parser.add_argument("--default_microphone", default='pulse',
help="Default microphone name for SpeechRecognition. "
"Run this with 'list' to view available Microphones.", type=str)
args = parser.parse_args()
# The last time a recording was retreived from the queue.
phrase_time = None
# Current raw audio bytes.
last_sample = bytes()
# Thread safe Queue for passing data from the threaded recording callback.
data_queue = Queue()
# We use SpeechRecognizer to record our audio because it has a nice feauture where it can detect when speech ends.
recorder = sr.Recognizer()
recorder.energy_threshold = args.energy_threshold
# Definitely do this, dynamic energy compensation lowers the energy threshold dramtically to a point where the SpeechRecognizer never stops recording.
recorder.dynamic_energy_threshold = False
# Important for linux users.
# Prevents permanent application hang and crash by using the wrong Microphone
if 'linux' in platform:
mic_name = args.default_microphone
if not mic_name or mic_name == 'list':
print("Available microphone devices are: ")
for index, name in enumerate(sr.Microphone.list_microphone_names()):
print(f"Microphone with name \"{name}\" found")
return
else:
for index, name in enumerate(sr.Microphone.list_microphone_names()):
if mic_name in name:
source = sr.Microphone(sample_rate=16000, device_index=index)
break
else:
source = sr.Microphone(sample_rate=16000)
if args.model == "large":
args.model = "large-v2"
model = args.model
if args.model != "large-v2" and not args.non_english:
model = model + ".en"
translation_lang = args.translation_lang
device = args.device
if device == "cpu":
compute_type = "int8"
else:
compute_type = args.compute_type
cpu_threads = args.threads
nltk.download('punkt')
audio_model = WhisperModel(model, device = device, compute_type = compute_type , cpu_threads = cpu_threads)
window = TranscriptionWindow()
record_timeout = args.record_timeout
phrase_timeout = args.phrase_timeout
temp_file = NamedTemporaryFile().name
transcription = ['']
with source:
recorder.adjust_for_ambient_noise(source)
def record_callback(_, audio:sr.AudioData) -> None:
"""
Threaded callback function to recieve audio data when recordings finish.
audio: An AudioData containing the recorded bytes.
"""
# Grab the raw bytes and push it into the thread safe queue.
data = audio.get_raw_data()
data_queue.put(data)
# Create a background thread that will pass us raw audio bytes.
# We could do this manually but SpeechRecognizer provides a nice helper.
recorder.listen_in_background(source, record_callback, phrase_time_limit=record_timeout)
# Cue the user that we're ready to go.
print("Model loaded.\n")
while True:
try:
now = datetime.utcnow()
# Pull raw recorded audio from the queue.
if not data_queue.empty():
phrase_complete = False
# If enough time has passed between recordings, consider the phrase complete.
# Clear the current working audio buffer to start over with the new data.
if phrase_time and now - phrase_time > timedelta(seconds=phrase_timeout):
last_sample = bytes()
phrase_complete = True
# This is the last time we received new audio data from the queue.
phrase_time = now
# Concatenate our current audio data with the latest audio data.
while not data_queue.empty():
data = data_queue.get()
last_sample += data
# Use AudioData to convert the raw data to wav data.
audio_data = sr.AudioData(last_sample, source.SAMPLE_RATE, source.SAMPLE_WIDTH)
wav_data = io.BytesIO(audio_data.get_wav_data())
# Write wav data to the temporary file as bytes.
with open(temp_file, 'w+b') as f:
f.write(wav_data.read())
# Read the transcription.
text = ""
segments, info = audio_model.transcribe(temp_file)
for segment in segments:
text += segment.text
#text = result['text'].strip()
# If we detected a pause between recordings, add a new item to our transcripion.
# Otherwise edit the existing one.
if phrase_complete:
transcription.append(text)
else:
transcription[-1] = text
last_four_elements = transcription[-10:]
result = ''.join(last_four_elements)
sentences = sent_tokenize(result)
window.update_text(sentences, translation_lang)
# Clear the console to reprint the updated transcription.
# Infinite loops are bad for processors, must sleep.
sleep(0.25)
except KeyboardInterrupt:
break
print("\n\nTranscription:")
for line in transcription:
print(line)
if __name__ == "__main__":
main()