import pandas as pd import os import torch import torchaudio import soundfile as sf from tqdm import tqdm target_sample_rate = 16000 df = pd.read_parquet('data.parquet') # Rename columns df = df.rename(columns={ 'query_audio': 'query_audio_path', 'doc_audio': 'document_audio_path', 'query_duration': 'query_audio_duration', 'doc_duration': 'document_audio_duration', }) # Get base directory (where convert.py is located) base_dir = os.path.dirname(os.path.abspath(__file__)) if '__file__' in globals() else os.getcwd() def check_and_resample_audio(audio_path, base_dir): """ 检查音频文件的采样率,如果不是16kHz则重采样 Args: audio_path: 音频文件的相对路径(在parquet中存储的路径) base_dir: 基础目录路径 Returns: (actual_sample_rate, needs_resample): 实际采样率和是否需要重采样 """ if pd.isna(audio_path) or not audio_path or not audio_path.strip(): return None, False # 构建完整路径 full_path = os.path.join(base_dir, audio_path) if not os.path.exists(full_path): print(f"警告: 音频文件不存在: {full_path}") return None, False try: # 读取音频信息 info = sf.info(full_path) actual_sample_rate = info.samplerate # 检查是否需要重采样 if actual_sample_rate != target_sample_rate: # 需要重采样 print(f"重采样: {audio_path} ({actual_sample_rate}Hz -> {target_sample_rate}Hz)") # 加载音频 waveform, sample_rate = torchaudio.load(full_path) # 转换为单声道(如果是立体声) if waveform.shape[0] > 1: waveform = torch.mean(waveform, dim=0, keepdim=True) # 重采样 resampler = torchaudio.transforms.Resample(sample_rate, target_sample_rate) waveform_resampled = resampler(waveform) # 转换为numpy并确保在[-1, 1]范围内 waveform_np = waveform_resampled.squeeze().numpy() waveform_np = waveform_np.clip(-1.0, 1.0) # 保存为16kHz, 16-bit WAV sf.write(full_path, waveform_np, target_sample_rate, subtype='PCM_16') return target_sample_rate, True else: # 采样率正确,不需要重采样 return actual_sample_rate, False except Exception as e: print(f"错误: 处理音频文件 {full_path} 时出错: {e}") return None, False # 处理query音频文件 print("检查并重采样query音频文件...") query_sample_rates = [] query_resampled_count = 0 for idx, audio_path in enumerate(tqdm(df['query_audio_path'], desc="处理query音频")): sample_rate, was_resampled = check_and_resample_audio(audio_path, base_dir) query_sample_rates.append(sample_rate if sample_rate else target_sample_rate) if was_resampled: query_resampled_count += 1 df['query_audio_sample_rate'] = query_sample_rates # 处理document音频文件 print("检查并重采样document音频文件...") doc_sample_rates = [] doc_resampled_count = 0 for idx, audio_path in enumerate(tqdm(df['document_audio_path'], desc="处理document音频")): sample_rate, was_resampled = check_and_resample_audio(audio_path, base_dir) doc_sample_rates.append(sample_rate if sample_rate else target_sample_rate) if was_resampled: doc_resampled_count += 1 df['document_audio_sample_rate'] = doc_sample_rates # 保存更新后的parquet df.to_parquet('data.parquet', index=False) print(f'\n完成!') print(f'Query音频: 重采样了 {query_resampled_count}/{len(df)} 个文件') print(f'Document音频: 重采样了 {doc_resampled_count}/{len(df)} 个文件') print(f'新列: {df.columns.tolist()}') print(f'形状: {df.shape}') print(df.head(2))