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audio_diffusion_fork
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from math import acos, sin
from typing import Iterable, Tuple, Union, List
import torch
import numpy as np
from PIL import Image
from tqdm.auto import tqdm
from librosa.beat import beat_track
from diffusers import (DiffusionPipeline, UNet2DConditionModel, DDIMScheduler,
DDPMScheduler, AutoencoderKL)
from .mel import Mel
VERSION = "1.2.5"
class AudioDiffusion:
def __init__(self,
model_id: str = "teticio/audio-diffusion-256",
sample_rate: int = 22050,
n_fft: int = 2048,
hop_length: int = 512,
top_db: int = 80,
cuda: bool = torch.cuda.is_available(),
progress_bar: Iterable = tqdm):
"""Class for generating audio using De-noising Diffusion Probabilistic Models.
Args:
model_id (String): name of model (local directory or Hugging Face Hub)
sample_rate (int): sample rate of audio
n_fft (int): number of Fast Fourier Transforms
hop_length (int): hop length (a higher number is recommended for lower than 256 y_res)
top_db (int): loudest in decibels
cuda (bool): use CUDA?
progress_bar (iterable): iterable callback for progress updates or None
"""
self.model_id = model_id
pipeline = {
'LatentAudioDiffusionPipeline': LatentAudioDiffusionPipeline,
'AudioDiffusionPipeline': AudioDiffusionPipeline
}.get(
DiffusionPipeline.get_config_dict(self.model_id)['_class_name'],
AudioDiffusionPipeline)
self.pipe = pipeline.from_pretrained(self.model_id)
if cuda:
self.pipe.to("cuda")
self.progress_bar = progress_bar or (lambda _: _)
# For backwards compatibility
sample_size = (self.pipe.unet.sample_size,
self.pipe.unet.sample_size) if type(
self.pipe.unet.sample_size
) == int else self.pipe.unet.sample_size
self.mel = Mel(x_res=sample_size[1],
y_res=sample_size[0],
sample_rate=sample_rate,
n_fft=n_fft,
hop_length=hop_length,
top_db=top_db)
def generate_spectrogram_and_audio(
self,
steps: int = None,
generator: torch.Generator = None,
step_generator: torch.Generator = None,
eta: float = 0,
noise: torch.Tensor = None
) -> Tuple[Image.Image, Tuple[int, np.ndarray]]:
"""Generate random mel spectrogram and convert to audio.
Args:
steps (int): number of de-noising steps (defaults to 50 for DDIM, 1000 for DDPM)
generator (torch.Generator): random number generator or None
step_generator (torch.Generator): random number generator used to de-noise or None
eta (float): parameter between 0 and 1 used with DDIM scheduler
noise (torch.Tensor): noisy image or None
Returns:
PIL Image: mel spectrogram
(float, np.ndarray): sample rate and raw audio
"""
images, (sample_rate,
audios) = self.pipe(mel=self.mel,
batch_size=1,
steps=steps,
generator=generator,
step_generator=step_generator,
eta=eta,
noise=noise)
return images[0], (sample_rate, audios[0])
def generate_spectrogram_and_audio_from_audio(
self,
audio_file: str = None,
raw_audio: np.ndarray = None,
slice: int = 0,
start_step: int = 0,
steps: int = None,
generator: torch.Generator = None,
mask_start_secs: float = 0,
mask_end_secs: float = 0,
step_generator: torch.Generator = None,
eta: float = 0,
noise: torch.Tensor = None
) -> Tuple[Image.Image, Tuple[int, np.ndarray]]:
"""Generate random mel spectrogram from audio input and convert to audio.
Args:
audio_file (str): must be a file on disk due to Librosa limitation or
raw_audio (np.ndarray): audio as numpy array
slice (int): slice number of audio to convert
start_step (int): step to start from
steps (int): number of de-noising steps (defaults to 50 for DDIM, 1000 for DDPM)
generator (torch.Generator): random number generator or None
mask_start_secs (float): number of seconds of audio to mask (not generate) at start
mask_end_secs (float): number of seconds of audio to mask (not generate) at end
step_generator (torch.Generator): random number generator used to de-noise or None
eta (float): parameter between 0 and 1 used with DDIM scheduler
noise (torch.Tensor): noisy image or None
Returns:
PIL Image: mel spectrogram
(float, np.ndarray): sample rate and raw audio
"""
images, (sample_rate,
audios) = self.pipe(mel=self.mel,
batch_size=1,
audio_file=audio_file,
raw_audio=raw_audio,
slice=slice,
start_step=start_step,
steps=steps,
generator=generator,
mask_start_secs=mask_start_secs,
mask_end_secs=mask_end_secs,
step_generator=step_generator,
eta=eta,
noise=noise)
return images[0], (sample_rate, audios[0])
@staticmethod
def loop_it(audio: np.ndarray,
sample_rate: int,
loops: int = 12) -> np.ndarray:
"""Loop audio
Args:
audio (np.ndarray): audio as numpy array
sample_rate (int): sample rate of audio
loops (int): number of times to loop
Returns:
(float, np.ndarray): sample rate and raw audio or None
"""
_, beats = beat_track(y=audio, sr=sample_rate, units='samples')
for beats_in_bar in [16, 12, 8, 4]:
if len(beats) > beats_in_bar:
return np.tile(audio[beats[0]:beats[beats_in_bar]], loops)
return None
class AudioDiffusionPipeline(DiffusionPipeline):
def __init__(self, unet: UNet2DConditionModel,
scheduler: Union[DDIMScheduler, DDPMScheduler]):
super().__init__()
self.register_modules(unet=unet, scheduler=scheduler)
@torch.no_grad()
def __call__(
self,
mel: Mel,
batch_size: int = 1,
audio_file: str = None,
raw_audio: np.ndarray = None,
slice: int = 0,
start_step: int = 0,
steps: int = None,
generator: torch.Generator = None,
mask_start_secs: float = 0,
mask_end_secs: float = 0,
step_generator: torch.Generator = None,
eta: float = 0,
noise: torch.Tensor = None
) -> Tuple[List[Image.Image], Tuple[int, List[np.ndarray]]]:
"""Generate random mel spectrogram from audio input and convert to audio.
Args:
mel (Mel): instance of Mel class to perform image <-> audio
batch_size (int): number of samples to generate
audio_file (str): must be a file on disk due to Librosa limitation or
raw_audio (np.ndarray): audio as numpy array
slice (int): slice number of audio to convert
start_step (int): step to start from
steps (int): number of de-noising steps (defaults to 50 for DDIM, 1000 for DDPM)
generator (torch.Generator): random number generator or None
mask_start_secs (float): number of seconds of audio to mask (not generate) at start
mask_end_secs (float): number of seconds of audio to mask (not generate) at end
step_generator (torch.Generator): random number generator used to de-noise or None
eta (float): parameter between 0 and 1 used with DDIM scheduler
noise (torch.Tensor): noise tensor of shape (batch_size, 1, height, width) or None
Returns:
List[PIL Image]: mel spectrograms
(float, List[np.ndarray]): sample rate and raw audios
"""
steps = steps or 50 if isinstance(self.scheduler,
DDIMScheduler) else 1000
self.scheduler.set_timesteps(steps)
step_generator = step_generator or generator
# For backwards compatibility
if type(self.unet.sample_size) == int:
self.unet.sample_size = (self.unet.sample_size,
self.unet.sample_size)
if noise is None:
noise = torch.randn(
(batch_size, self.unet.in_channels, self.unet.sample_size[0],
self.unet.sample_size[1]),
generator=generator)
images = noise
mask = None
if audio_file is not None or raw_audio is not None:
mel.load_audio(audio_file, raw_audio)
input_image = mel.audio_slice_to_image(slice)
input_image = np.frombuffer(input_image.tobytes(),
dtype="uint8").reshape(
(input_image.height,
input_image.width))
input_image = ((input_image / 255) * 2 - 1)
input_images = np.tile(input_image, (batch_size, 1, 1, 1))
if hasattr(self, 'vqvae'):
input_images = self.vqvae.encode(
input_images).latent_dist.sample(generator=generator)
input_images = 0.18215 * input_images
if start_step > 0:
images[0, 0] = self.scheduler.add_noise(
torch.tensor(input_images[:, np.newaxis, np.newaxis, :]),
noise, torch.tensor(steps - start_step))
pixels_per_second = (self.unet.sample_size[1] *
mel.get_sample_rate() / mel.x_res /
mel.hop_length)
mask_start = int(mask_start_secs * pixels_per_second)
mask_end = int(mask_end_secs * pixels_per_second)
mask = self.scheduler.add_noise(
torch.tensor(input_images[:, np.newaxis, :]), noise,
torch.tensor(self.scheduler.timesteps[start_step:]))
images = images.to(self.device)
for step, t in enumerate(
self.progress_bar(self.scheduler.timesteps[start_step:])):
model_output = self.unet(images, t)['sample']
if isinstance(self.scheduler, DDIMScheduler):
images = self.scheduler.step(
model_output=model_output,
timestep=t,
sample=images,
eta=eta,
generator=step_generator)['prev_sample']
else:
images = self.scheduler.step(
model_output=model_output,
timestep=t,
sample=images,
generator=step_generator)['prev_sample']
if mask is not None:
if mask_start > 0:
images[:, :, :, :mask_start] = mask[
step, :, :, :, :mask_start]
if mask_end > 0:
images[:, :, :, -mask_end:] = mask[step, :, :, :,
-mask_end:]
if hasattr(self, 'vqvae'):
# 0.18215 was scaling factor used in training to ensure unit variance
images = 1 / 0.18215 * images
images = self.vqvae.decode(images)['sample']
images = (images / 2 + 0.5).clamp(0, 1)
images = images.cpu().permute(0, 2, 3, 1).numpy()
images = (images * 255).round().astype("uint8")
images = list(
map(lambda _: Image.fromarray(_[:, :, 0]), images) if images.
shape[3] == 1 else map(
lambda _: Image.fromarray(_, mode='RGB').convert('L'), images))
audios = list(map(lambda _: mel.image_to_audio(_), images))
return images, (mel.get_sample_rate(), audios)
@torch.no_grad()
def encode(self, images: List[Image.Image], steps: int = 50) -> np.ndarray:
"""Reverse step process: recover noisy image from generated image.
Args:
images (List[PIL Image]): list of images to encode
steps (int): number of encoding steps to perform (defaults to 50)
Returns:
np.ndarray: noise tensor of shape (batch_size, 1, height, width)
"""
# Only works with DDIM as this method is deterministic
assert isinstance(self.scheduler, DDIMScheduler)
self.scheduler.set_timesteps(steps)
sample = np.array([
np.frombuffer(image.tobytes(), dtype="uint8").reshape(
(1, image.height, image.width)) for image in images
])
sample = ((sample / 255) * 2 - 1)
sample = torch.Tensor(sample).to(self.device)
for t in self.progress_bar(torch.flip(self.scheduler.timesteps,
(0, ))):
prev_timestep = (t - self.scheduler.num_train_timesteps //
self.scheduler.num_inference_steps)
alpha_prod_t = self.scheduler.alphas_cumprod[t]
alpha_prod_t_prev = (self.scheduler.alphas_cumprod[prev_timestep]
if prev_timestep >= 0 else
self.scheduler.final_alpha_cumprod)
beta_prod_t = 1 - alpha_prod_t
model_output = self.unet(sample, t)['sample']
pred_sample_direction = (1 -
alpha_prod_t_prev)**(0.5) * model_output
sample = (sample -
pred_sample_direction) * alpha_prod_t_prev**(-0.5)
sample = sample * alpha_prod_t**(0.5) + beta_prod_t**(
0.5) * model_output
return sample
@staticmethod
def slerp(x0: torch.Tensor, x1: torch.Tensor,
alpha: float) -> torch.Tensor:
"""Spherical Linear intERPolation
Args:
x0 (torch.Tensor): first tensor to interpolate between
x1 (torch.Tensor): seconds tensor to interpolate between
alpha (float): interpolation between 0 and 1
Returns:
torch.Tensor: interpolated tensor
"""
theta = acos(
torch.dot(torch.flatten(x0), torch.flatten(x1)) / torch.norm(x0) /
torch.norm(x1))
return sin((1 - alpha) * theta) * x0 / sin(theta) + sin(
alpha * theta) * x1 / sin(theta)
class LatentAudioDiffusionPipeline(AudioDiffusionPipeline):
def __init__(self, unet: UNet2DConditionModel,
scheduler: Union[DDIMScheduler,
DDPMScheduler], vqvae: AutoencoderKL):
super().__init__(unet=unet, scheduler=scheduler)
self.register_modules(vqvae=vqvae)
def __call__(self, *args, **kwargs):
return super().__call__(*args, **kwargs)