import torch import torchaudio """ 加载模型 """ # Load FocalCodec model config = "lucadellalib/focalcodec_12_5hz" codec = torch.hub.load( "lucadellalib/focalcodec", "focalcodec", config=config, force_reload=False ) codec.eval().requires_grad_(False) """ 读取音频 """ # Load and preprocess the input audio audio_file = "/Users/kongjiaming/Documents/1721129273595_16k.wav" sig, sample_rate = torchaudio.load(audio_file) sig = torchaudio.functional.resample(sig, sample_rate, codec.sample_rate) """ 将音频的波形信号编码成semantic tokens """ # Encode audio into tokens toks = codec.sig_to_toks(sig) # Shape: (batch, time) print(f"Token tensor shape: {toks.shape}") print(f"Token tensor values:\n{toks}") import pdb; pdb.set_trace() """ 这里只是用来看semantic tokens对应码本里面的值,在我们实际训练里并不需要这些内容 """ codes = codec.toks_to_codes(toks) # Shape: (batch, time, log2 codebook_size) print(f"Code tensor shape: {codes.shape}") print(f"Code tensor values:\n{codes}") """ 使用semantic tokens重建音频。 """ # Decode tokens back into a waveform rec_sig = codec.toks_to_sig(toks) rec_sig = torchaudio.functional.resample(rec_sig, codec.sample_rate, sample_rate) torchaudio.save("reconstruction.wav", rec_sig, sample_rate)