- 新增tencent_asr_service.py腾讯云一句话识别 - 优化asr_service.py - 更新services/__init__.py按ASR_PROVIDER切换whisper/tencent - 更新requirements.txt Co-authored-by: Cursor <cursoragent@cursor.com>
169 lines
6.5 KiB
Python
169 lines
6.5 KiB
Python
"""
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ASR 服务:语音转文字
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使用本地 faster-whisper 模型进行语音识别
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"""
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import base64
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import logging
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import os
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import tempfile
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from typing import Optional
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logger = logging.getLogger(__name__)
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# 模型配置
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# 可选模型: tiny, base, small, medium, large-v2, large-v3
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# tiny/base 适合 CPU,small/medium 需要更多资源,large 需要 GPU
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ASR_MODEL_SIZE = os.getenv("ASR_MODEL_SIZE", "small")
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ASR_DEVICE = os.getenv("ASR_DEVICE", "auto") # auto, cpu, cuda
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ASR_COMPUTE_TYPE = os.getenv("ASR_COMPUTE_TYPE", "auto") # auto, int8, float16, float32
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# 模型缓存目录:每次启动优先从该目录加载,不设置则使用默认本地路径(api/models/whisper)
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# 设置 ASR_MODEL_CACHE_DIR 时仅使用本地模型不联网(与 Dockerfile 中 download_root 一致)
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ASR_MODEL_CACHE_DIR = os.getenv("ASR_MODEL_CACHE_DIR")
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# 默认本地缓存目录(相对 api 目录),确保每次启动都先从本地加载
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_DEFAULT_ASR_CACHE_DIR = os.path.normpath(
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os.path.join(os.path.dirname(os.path.abspath(__file__)), "..", "models", "whisper")
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)
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class WhisperASRService:
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"""
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ASR 服务(语音转文字)
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使用 faster-whisper 本地模型
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"""
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def __init__(self):
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self.model = None
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self._model_loaded = False
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self._load_error = None
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def _load_model(self) -> bool:
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"""加载模型(首次调用时执行,后续直接返回)。返回是否加载成功。"""
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if self._model_loaded:
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return self.model is not None
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try:
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from faster_whisper import WhisperModel
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logger.info(f"正在加载 Whisper 模型: {ASR_MODEL_SIZE}, device={ASR_DEVICE}, compute_type={ASR_COMPUTE_TYPE}")
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# 确定设备和计算类型
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device = ASR_DEVICE
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compute_type = ASR_COMPUTE_TYPE
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if device == "auto":
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# 自动检测:优先使用 CUDA,否则使用 CPU
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try:
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import torch
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device = "cuda" if torch.cuda.is_available() else "cpu"
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except ImportError:
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device = "cpu"
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if compute_type == "auto":
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# 根据设备自动选择计算类型
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if device == "cuda":
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compute_type = "float16" # GPU 使用 float16
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else:
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compute_type = "int8" # CPU 使用 int8 量化,速度更快
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# 每次启动都先从本地目录加载:优先用环境变量,否则用默认 api/models/whisper
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download_root = ASR_MODEL_CACHE_DIR if ASR_MODEL_CACHE_DIR else _DEFAULT_ASR_CACHE_DIR
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local_files_only = bool(ASR_MODEL_CACHE_DIR) # 仅当显式设置缓存目录时禁止联网(如 Docker)
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if not os.path.isdir(download_root):
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os.makedirs(download_root, exist_ok=True)
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logger.info(f"Whisper 模型从本地加载: download_root={download_root}, local_files_only={local_files_only}")
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self.model = WhisperModel(
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ASR_MODEL_SIZE,
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device=device,
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compute_type=compute_type,
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download_root=download_root,
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local_files_only=local_files_only,
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)
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self._model_loaded = True
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logger.info(f"Whisper 模型加载成功: {ASR_MODEL_SIZE} on {device} ({compute_type})")
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return True
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except ImportError as e:
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self._load_error = "faster-whisper 未安装,请运行: pip install faster-whisper"
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logger.error(self._load_error)
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return False
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except Exception as e:
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self._load_error = f"加载 Whisper 模型失败: {str(e)}"
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logger.error(self._load_error, exc_info=True)
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return False
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def ensure_ready(self) -> bool:
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"""
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确保 ASR 模型已就绪(用于启动时预加载与检查)。
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可在应用初始化时调用;为同步阻塞调用,建议在后台线程执行。
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返回是否就绪。
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"""
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return self._load_model()
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def is_ready(self) -> bool:
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"""检查 ASR 模型是否已加载并可用。"""
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return self._model_loaded and self.model is not None
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async def transcribe(self, audio_base64: str) -> Optional[str]:
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"""
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转写音频为文字
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Args:
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audio_base64: Base64 编码的音频数据
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Returns:
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转写文本,失败时返回错误信息
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"""
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# 懒加载模型
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self._load_model()
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if not self.model:
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error_msg = self._load_error or "ASR 模型未加载"
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logger.warning(error_msg)
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return f"转写失败: {error_msg}"
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tmp_file_path = None
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try:
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# 解码 Base64 音频
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audio_bytes = base64.b64decode(audio_base64)
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# 保存临时文件
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with tempfile.NamedTemporaryFile(suffix=".m4a", delete=False) as tmp_file:
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tmp_file.write(audio_bytes)
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tmp_file_path = tmp_file.name
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# 使用 faster-whisper 转写
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# language="zh" 指定中文,可以提高识别速度
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# beam_size=5 是默认值,可以调整
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segments, info = self.model.transcribe(
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tmp_file_path,
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language="zh",
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beam_size=5,
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vad_filter=True, # 启用 VAD 过滤静音部分
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vad_parameters=dict(
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min_silence_duration_ms=500, # 最小静音时长
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)
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)
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# 合并所有转写片段
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transcript_text = "".join(segment.text for segment in segments)
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logger.info(f"ASR 转写完成: 语言={info.language}, 概率={info.language_probability:.2f}, 文本长度={len(transcript_text)}")
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return transcript_text.strip() if transcript_text else ""
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except Exception as e:
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logger.error(f"ASR 转写失败: {e}", exc_info=True)
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return f"转写失败: {str(e)}"
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finally:
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# 清理临时文件
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if tmp_file_path and os.path.exists(tmp_file_path):
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try:
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os.remove(tmp_file_path)
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except Exception:
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pass
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# 全局实例
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asr_service = WhisperASRService()
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