DL-Art-School/codes/trainer/eval/music_diffusion_fid.py
James Betker 6c8032b4be more work
2022-05-06 21:56:49 -06:00

203 lines
10 KiB
Python

import os
import os.path as osp
from glob import glob
import torch
import torchaudio
import torchvision
from pytorch_fid.fid_score import calculate_frechet_distance
from torch import distributed
from tqdm import tqdm
from transformers import Wav2Vec2ForCTC
import torch.nn.functional as F
import numpy as np
import trainer.eval.evaluator as evaluator
from data.audio.paired_voice_audio_dataset import load_tsv_aligned_codes
from data.audio.unsupervised_audio_dataset import load_audio
from data.audio.voice_tokenizer import VoiceBpeTokenizer
from models.audio.music.unet_diffusion_waveform_gen import DiffusionWaveformGen
from models.clip.contrastive_audio import ContrastiveAudio
from models.clip.mel_text_clip import MelTextCLIP
from models.audio.tts.tacotron2 import text_to_sequence
from models.diffusion.gaussian_diffusion import get_named_beta_schedule
from models.diffusion.respace import space_timesteps, SpacedDiffusion
from scripts.audio.gen.speech_synthesis_utils import load_discrete_vocoder_diffuser, wav_to_mel, load_speech_dvae, \
convert_mel_to_codes, load_univnet_vocoder, wav_to_univnet_mel
from trainer.injectors.audio_injectors import denormalize_mel, TorchMelSpectrogramInjector, pixel_shuffle_1d, \
normalize_mel
from utils.util import ceil_multiple, opt_get, load_model_from_config, pad_or_truncate
class MusicDiffusionFid(evaluator.Evaluator):
"""
Evaluator produces generate from a music diffusion model.
"""
def __init__(self, model, opt_eval, env):
super().__init__(model, opt_eval, env, uses_all_ddp=True)
self.real_path = opt_eval['path']
self.data = self.load_data(self.real_path)
if distributed.is_initialized() and distributed.get_world_size() > 1:
self.skip = distributed.get_world_size() # One batch element per GPU.
else:
self.skip = 1
diffusion_steps = opt_get(opt_eval, ['diffusion_steps'], 50)
diffusion_schedule = opt_get(env['opt'], ['steps', 'generator', 'injectors', 'diffusion', 'beta_schedule', 'schedule_name'], None)
if diffusion_schedule is None:
print("Unable to infer diffusion schedule from master options. Getting it from eval (or guessing).")
diffusion_schedule = opt_get(opt_eval, ['diffusion_schedule'], 'linear')
conditioning_free_diffusion_enabled = opt_get(opt_eval, ['conditioning_free'], False)
conditioning_free_k = opt_get(opt_eval, ['conditioning_free_k'], 1)
self.diffuser = SpacedDiffusion(use_timesteps=space_timesteps(4000, [diffusion_steps]), model_mean_type='epsilon',
model_var_type='learned_range', loss_type='mse', betas=get_named_beta_schedule(diffusion_schedule, 4000),
conditioning_free=conditioning_free_diffusion_enabled, conditioning_free_k=conditioning_free_k)
self.dev = self.env['device']
mode = opt_get(opt_eval, ['diffusion_type'], 'tts')
self.spec_decoder = DiffusionWaveformGen(model_channels=256, in_channels=16, in_mel_channels=256, out_channels=32,
channel_mult=[1,2,3,4], num_res_blocks=[3,3,3,3], token_conditioning_resolutions=[1,4],
num_heads=8,
dropout=0, kernel_size=3, scale_factor=2, time_embed_dim_multiplier=4, unconditioned_percentage=0)
self.spec_decoder.load_state_dict(torch.load('../experiments/music_waveform_gen.pth', map_location=torch.device('cpu')))
self.projector = ContrastiveAudio(model_dim=512, transformer_heads=8, dropout=0, encoder_depth=8, mel_channels=256)
#self.projector.load_state_dict(torch.load('../experiments/music_eval_projector.pth', map_location=torch.device('cpu')))
self.local_modules = {'spec_decoder': self.spec_decoder, 'projector': self.projector}
if mode == 'spec_decode':
self.diffusion_fn = self.perform_diffusion_spec_decode
elif 'gap_fill_' in mode:
self.diffusion_fn = self.perform_diffusion_gap_fill
if '_freq' in mode:
self.gap_gen_fn = self.gen_freq_gap
else:
self.gap_gen_fn = self.gen_time_gap
self.spec_fn = TorchMelSpectrogramInjector({'n_mel_channels': 256, 'mel_fmax': 22000, 'normalize': True, 'in': 'in', 'out': 'out'}, {})
def load_data(self, path):
return list(glob(f'{path}/*.wav'))
def perform_diffusion_spec_decode(self, audio, sample_rate=22050):
if sample_rate != sample_rate:
real_resampled = torchaudio.functional.resample(audio, 22050, sample_rate).unsqueeze(0)
else:
real_resampled = audio
audio = audio.unsqueeze(0)
output_shape = (1, 16, audio.shape[-1] // 16)
mel = self.spec_fn({'in': audio})['out']
gen = self.diffuser.p_sample_loop(self.model, output_shape, noise=torch.zeros(*output_shape, device=audio.device),
model_kwargs={'aligned_conditioning': mel})
gen = pixel_shuffle_1d(gen, 16)
return gen, real_resampled, sample_rate
def gen_freq_gap(self, mel, band_range=(130,150)):
gap_start, gap_end = band_range
mel[:, gap_start:gap_end] = 0
return mel
def gen_time_gap(self, mel):
mel[:, :, 22050*5:22050*6] = 0
return mel
def perform_diffusion_gap_fill(self, audio, sample_rate=22050, band_range=(130,150)):
if sample_rate != sample_rate:
real_resampled = torchaudio.functional.resample(audio, 22050, sample_rate).unsqueeze(0)
else:
real_resampled = audio
audio = audio.unsqueeze(0)
# Fetch the MEL and mask out the requested bands.
mel = self.spec_fn({'in': audio})['out']
mel = normalize_mel(mel)
mel = self.gap_gen_fn(mel)
output_shape = (1, mel.shape[1], mel.shape[2])
# Repair the MEL with the given model.
spec = self.diffuser.p_sample_loop(self.model, output_shape, noise=torch.zeros(*output_shape, device=audio.device),
model_kwargs={'truth': mel})
import torchvision
torchvision.utils.save_image((spec.unsqueeze(1) + 1) / 2, 'gen.png')
torchvision.utils.save_image((mel.unsqueeze(1) + 1) / 2, 'mel.png')
spec = denormalize_mel(spec)
# Re-convert the resulting MEL back into audio using the spectrogram decoder.
output_shape = (1, 16, audio.shape[-1] // 16)
self.spec_decoder = self.spec_decoder.to(audio.device)
# Cool fact: we can re-use the diffuser for the spectrogram diffuser since it has the same parametrization.
gen = self.diffuser.p_sample_loop(self.spec_decoder, output_shape, noise=torch.zeros(*output_shape, device=audio.device),
model_kwargs={'aligned_conditioning': spec})
gen = pixel_shuffle_1d(gen, 16)
return gen, real_resampled, sample_rate
def project(self, sample, sample_rate):
sample = torchaudio.functional.resample(sample, sample_rate, 22050)
mel = self.spec_fn({'in': sample})['out']
projection = self.projector.project(mel)
return projection.squeeze(0) # Getting rid of the batch dimension means it's just [hidden_dim]
def compute_frechet_distance(self, proj1, proj2):
# I really REALLY FUCKING HATE that this is going to numpy. Why does "pytorch_fid" operate in numpy land. WHY?
proj1 = proj1.cpu().numpy()
proj2 = proj2.cpu().numpy()
mu1 = np.mean(proj1, axis=0)
mu2 = np.mean(proj2, axis=0)
sigma1 = np.cov(proj1, rowvar=False)
sigma2 = np.cov(proj2, rowvar=False)
return torch.tensor(calculate_frechet_distance(mu1, sigma1, mu2, sigma2))
def perform_eval(self):
save_path = osp.join(self.env['base_path'], "../", "audio_eval", str(self.env["step"]))
os.makedirs(save_path, exist_ok=True)
self.projector = self.projector.to(self.dev)
self.projector.eval()
# Attempt to fix the random state as much as possible. RNG state will be restored before returning.
rng_state = torch.get_rng_state()
torch.manual_seed(5)
self.model.eval()
with torch.no_grad():
gen_projections = []
real_projections = []
for i in tqdm(list(range(0, len(self.data), self.skip))):
path = self.data[i + self.env['rank']]
audio = load_audio(path, 22050).to(self.dev)
audio = audio[:, :22050*5]
sample, ref, sample_rate = self.diffusion_fn(audio)
gen_projections.append(self.project(sample, sample_rate).cpu()) # Store on CPU to avoid wasting GPU memory.
real_projections.append(self.project(ref, sample_rate).cpu())
torchaudio.save(os.path.join(save_path, f"{self.env['rank']}_{i}_gen.wav"), sample.squeeze(0).cpu(), sample_rate)
torchaudio.save(os.path.join(save_path, f"{self.env['rank']}_{i}_real.wav"), ref.cpu(), sample_rate)
gen_projections = torch.stack(gen_projections, dim=0)
real_projections = torch.stack(real_projections, dim=0)
frechet_distance = torch.tensor(self.compute_frechet_distance(gen_projections, real_projections), device=self.env['device'])
if distributed.is_initialized() and distributed.get_world_size() > 1:
distributed.all_reduce(frechet_distance)
frechet_distance = frechet_distance / distributed.get_world_size()\
self.model.train()
torch.set_rng_state(rng_state)
# Put modules used for evaluation back into CPU memory.
for k, mod in self.local_modules.items():
self.local_modules[k] = mod.cpu()
return {"frechet_distance": frechet_distance}
if __name__ == '__main__':
diffusion = load_model_from_config('X:\\dlas\\experiments\\train_music_gap_filler.yml', 'generator',
also_load_savepoint=False,
load_path='X:\\dlas\\experiments\\train_music_gap_filler\\models\\14000_generator.pth').cuda()
opt_eval = {'path': 'Y:\\split\\yt-music-eval', 'diffusion_steps': 500,
'conditioning_free': False, 'conditioning_free_k': 1,
'diffusion_schedule': 'linear', 'diffusion_type': 'gap_fill_freq'}
env = {'rank': 0, 'base_path': 'D:\\tmp\\test_eval_music', 'step': 2, 'device': 'cuda', 'opt': {}}
eval = MusicDiffusionFid(diffusion, opt_eval, env)
print(eval.perform_eval())