Lengyue 2 سال پیش
والد
کامیت
e70d2c0373
1فایلهای تغییر یافته به همراه35 افزوده شده و 23 حذف شده
  1. 35 23
      tools/infer_vq.py

+ 35 - 23
tools/infer_vq.py

@@ -2,12 +2,15 @@ import librosa
 import numpy as np
 import soundfile as sf
 import torch
+import torch.nn.functional as F
 from hydra import compose, initialize
 from hydra.utils import instantiate
 from lightning import LightningModule
 from loguru import logger
 from omegaconf import OmegaConf
 
+from fish_speech.models.vqgan.utils import sequence_mask
+
 # register eval resolver
 OmegaConf.register_new_resolver("eval", eval)
 
@@ -16,12 +19,11 @@ OmegaConf.register_new_resolver("eval", eval)
 @torch.autocast(device_type="cuda", enabled=True)
 def main():
     with initialize(version_base="1.3", config_path="../fish_speech/configs"):
-        cfg = compose(config_name="vq_naive_40hz")
+        cfg = compose(config_name="vqgan")
 
     model: LightningModule = instantiate(cfg.model)
     state_dict = torch.load(
-        "results/vq_naive_40hz/checkpoints/step_000675000.ckpt",
-        # "results/vq_naive_25hz/checkpoints/step_000100000.ckpt",
+        "results/vqgan/checkpoints/step_000110000.ckpt",
         map_location=model.device,
     )["state_dict"]
     model.load_state_dict(state_dict, strict=True)
@@ -30,7 +32,7 @@ def main():
     logger.info("Restored model from checkpoint")
 
     # Load audio
-    audio = librosa.load("record1.wav", sr=model.sampling_rate, mono=True)[0]
+    audio = librosa.load("0.wav", sr=model.sampling_rate, mono=True)[0]
     audios = torch.from_numpy(audio).to(model.device)[None, None, :]
     logger.info(
         f"Loaded audio with {audios.shape[2] / model.sampling_rate:.2f} seconds"
@@ -40,30 +42,40 @@ def main():
     audio_lengths = torch.tensor(
         [audios.shape[2]], device=model.device, dtype=torch.long
     )
-    mel_masks, gt_mels, text_features, indices, loss_vq = model.vq_encode(
-        audios, audio_lengths
+
+    features = gt_mels = model.mel_transform(audios, sample_rate=model.sampling_rate)
+
+    if model.downsample is not None:
+        features = model.downsample(features)
+
+    mel_lengths = audio_lengths // model.hop_length
+    feature_lengths = (
+        audio_lengths
+        / model.hop_length
+        / (model.downsample.total_strides if model.downsample is not None else 1)
+    ).long()
+
+    feature_masks = torch.unsqueeze(
+        sequence_mask(feature_lengths, features.shape[2]), 1
+    ).to(gt_mels.dtype)
+    mel_masks = torch.unsqueeze(sequence_mask(mel_lengths, gt_mels.shape[2]), 1).to(
+        gt_mels.dtype
     )
+
+    # vq_features is 50 hz, need to convert to true mel size
+    text_features = model.mel_encoder(features, feature_masks)
+    text_features, indices, _ = model.vq_encoder(text_features, feature_masks)
+
     logger.info(
         f"VQ Encoded, indices: {indices.shape} equavilent to "
-        + f"{1/(audios.shape[2] / model.sampling_rate / indices.shape[1]):.2f} Hz"
+        + f"{1/(audios.shape[2] / model.sampling_rate / indices.shape[2]):.2f} Hz"
     )
 
-    # VQ Decoder
-    audioa = librosa.load(
-        "data/AiShell/wav/train/S0121/BAC009S0121W0125.wav",
-        sr=model.sampling_rate,
-        mono=True,
-    )[0]
-    audioa = torch.from_numpy(audioa).to(model.device)[None, None, :]
-    mel = model.mel_transform(audioa)
-    mel1_masks = torch.ones([mel.shape[0], 1, mel.shape[2]], device=model.device)
-
-    speaker_features = model.speaker_encoder(mel, mel1_masks)
-
-    speaker_features = model.speaker_encoder(gt_mels, mel_masks)
-    speaker_features = torch.zeros_like(speaker_features)
-    decoded_mels = model.vq_decode(text_features, speaker_features, gt_mels, mel_masks)
-    fake_audios = model.vocoder(decoded_mels)
+    text_features = F.interpolate(text_features, size=gt_mels.shape[2], mode="nearest")
+
+    # Sample mels
+    decoded_mels = model.decoder(text_features, mel_masks)
+    fake_audios = model.generator(decoded_mels)
 
     # Save audio
     fake_audio = fake_audios[0, 0].cpu().numpy().astype(np.float32)