Files
whisper-translation/transcribe.py
2026-02-26 21:08:08 -05:00

103 lines
3.9 KiB
Python

import mlx_whisper
import numpy as np
import sounddevice as sd
import queue
import sys
import torch
from silero_vad import load_silero_vad, get_speech_timestamps
from transformers import AutoTokenizer, AutoModelForSeq2SeqLM, pipeline
# Parameters
WHISPER_MODEL = "mlx-community/whisper-small.en-mlx"
TRANSLATE_MODEL = "facebook/nllb-200-distilled-600M"
TARGET_LANG = "spa_Latn" # Spanish (Latin America) - change as needed
CHANNELS = 1
SAMPLERATE = 16000
BLOCK_SIZE = 512
VAD_THRESHOLD = 0.5
BUFFER_LIMIT = SAMPLERATE * 30
MIN_SILENCE_DURATION_MS = 500
audio_queue = queue.Queue()
def callback(indata, frames, time, status):
if status:
print(status, file=sys.stderr)
audio_queue.put(indata.copy())
def main():
# Set device for translation model (using MPS for Mac M chips)
device = "mps" if torch.backends.mps.is_available() else "cpu"
print(f"Using device: {device}")
print(f"Loading Whisper model '{WHISPER_MODEL}'...")
# Whisper MLX runs on its own optimized path
print(f"Loading translation model '{TRANSLATE_MODEL}'...")
tokenizer = AutoTokenizer.from_pretrained(TRANSLATE_MODEL)
model = AutoModelForSeq2SeqLM.from_pretrained(TRANSLATE_MODEL).to(device)
translator = pipeline("translation", model=model, tokenizer=tokenizer,
src_lang="eng_Latn", tgt_lang=TARGET_LANG, device=device)
print("Loading Silero VAD model...")
vad_model = load_silero_vad()
print("Models loaded.")
print(f"\nStarting live transcription & translation to {TARGET_LANG}... (Press Ctrl+C to stop)")
audio_buffer = []
speech_started = False
try:
with sd.InputStream(samplerate=SAMPLERATE, channels=CHANNELS, callback=callback, blocksize=BLOCK_SIZE):
while True:
while not audio_queue.empty():
data = audio_queue.get()
audio_buffer.append(data.flatten())
if len(audio_buffer) > 0:
current_audio = np.concatenate(audio_buffer)
audio_tensor = torch.from_numpy(current_audio)
speech_timestamps = get_speech_timestamps(
audio_tensor,
vad_model,
sampling_rate=SAMPLERATE,
threshold=VAD_THRESHOLD,
min_silence_duration_ms=MIN_SILENCE_DURATION_MS
)
if len(speech_timestamps) > 0:
speech_started = True
last_end = speech_timestamps[-1]['end']
buffer_len_samples = len(current_audio)
if (buffer_len_samples - last_end) > (SAMPLERATE * MIN_SILENCE_DURATION_MS / 1000) or buffer_len_samples > BUFFER_LIMIT:
# 1. Transcribe (English)
result = mlx_whisper.transcribe(current_audio, path_or_hf_repo=WHISPER_MODEL)
original_text = result['text'].strip()
if original_text:
# 2. Translate
translation = translator(original_text)
translated_text = translation[0]['translation_text']
print(f"\nEN: {original_text}")
print(f"ES: {translated_text}")
audio_buffer = []
speech_started = False
elif not speech_started and len(current_audio) > SAMPLERATE * 2:
audio_buffer = []
except KeyboardInterrupt:
print("\nStopped by user.")
except Exception as e:
print(f"\nError: {e}")
if __name__ == "__main__":
main()