Files
audio-chat/engine/tts.py
noturum e2d3cbe783 Add voice activation (VAD) and audio fade
- Add webrtcvad dependency for real-time voice activity detection
- Create audio/fade.py with fade-in/fade-out utility
- Add VAD voice activation to client recording (sends audio only during speech)
- Apply 200ms fade-out to TTS output to avoid abrupt audio cuts
- Fix tts.py indentation error in except block
2026-05-01 13:14:31 +00:00

58 lines
1.7 KiB
Python

from transformers import pipeline
from config import Config
import numpy as np
from audio.fade import apply_fade
class TTSEngine:
def __init__(self):
self.tts_pipeline = None
self.config = Config()
def initialize(self):
try:
self.tts_pipeline = pipeline(
"text-to-speech",
self.config.TTS_MODEL,
device=0 if __import__("torch").cuda.is_available() else -1,
)
except Exception:
self.tts_pipeline = pipeline(
"text-to-speech",
model=self._tts_model,
device=-1,
)
self.tts_pipeline.start()
def synthesize(self, text: str, output_sample_rate: int = 24000) -> np.ndarray:
if not self.tts_pipeline:
self.initialize()
result = self.tts_pipeline(
text,
generate_kwargs={"task": "tts", "language": "ru"},
return_tensors=True,
)
audio = result["audio"]
# Convert torch tensor to numpy if needed
if hasattr(audio, 'numpy'):
audio = audio.numpy()
elif not isinstance(audio, np.ndarray):
audio = np.asarray(audio)
# Handle multi-dimensional arrays (batch or stereo)
if audio.ndim > 2:
# Batch dimension - take first item
audio = audio[0]
if audio.ndim == 2:
# Stereo - mix to mono
audio = audio.mean(axis=1)
audio = audio.astype(np.float32)
# Apply fade-out to avoid abrupt audio cuts
audio = apply_fade(audio, output_sample_rate, fade_duration_ms=200)
return audio