Latent_Diffusion / pipeline.py
HawkeyeHS's picture
Added files for stable diffusion
00454cb
raw
history blame contribute delete
No virus
6.64 kB
import torch
import numpy as np
from tqdm import tqdm
from ddpm import DDPMSampler
WIDTH = 512
HEIGHT = 512
LATENTS_WIDTH = WIDTH // 8
LATENTS_HEIGHT = HEIGHT // 8
def generate(
prompt,
uncond_prompt=None,
input_image=None,
strength=0.8,
do_cfg=True,
cfg_scale=7.5,
sampler_name="ddpm",
n_inference_steps=50,
models={},
seed=None,
device=None,
idle_device=None,
tokenizer=None,
):
with torch.no_grad():
if not 0 < strength <= 1:
raise ValueError("strength must be between 0 and 1")
if idle_device:
to_idle = lambda x: x.to(idle_device)
else:
to_idle = lambda x: x
# Initialize random number generator according to the seed specified
generator = torch.Generator(device=device)
if seed is None:
generator.seed()
else:
generator.manual_seed(seed)
clip = models["clip"]
clip.to(device)
if do_cfg:
# Convert into a list of length Seq_Len=77
cond_tokens = tokenizer.batch_encode_plus(
[prompt], padding="max_length", max_length=77
).input_ids
# (Batch_Size, Seq_Len)
cond_tokens = torch.tensor(cond_tokens, dtype=torch.long, device=device)
# (Batch_Size, Seq_Len) -> (Batch_Size, Seq_Len, Dim)
cond_context = clip(cond_tokens)
# Convert into a list of length Seq_Len=77
uncond_tokens = tokenizer.batch_encode_plus(
[uncond_prompt], padding="max_length", max_length=77
).input_ids
# (Batch_Size, Seq_Len)
uncond_tokens = torch.tensor(uncond_tokens, dtype=torch.long, device=device)
# (Batch_Size, Seq_Len) -> (Batch_Size, Seq_Len, Dim)
uncond_context = clip(uncond_tokens)
# (Batch_Size, Seq_Len, Dim) + (Batch_Size, Seq_Len, Dim) -> (2 * Batch_Size, Seq_Len, Dim)
context = torch.cat([cond_context, uncond_context])
else:
# Convert into a list of length Seq_Len=77
tokens = tokenizer.batch_encode_plus(
[prompt], padding="max_length", max_length=77
).input_ids
# (Batch_Size, Seq_Len)
tokens = torch.tensor(tokens, dtype=torch.long, device=device)
# (Batch_Size, Seq_Len) -> (Batch_Size, Seq_Len, Dim)
context = clip(tokens)
to_idle(clip)
if sampler_name == "ddpm":
sampler = DDPMSampler(generator)
sampler.set_inference_timesteps(n_inference_steps)
else:
raise ValueError("Unknown sampler value %s. ")
latents_shape = (1, 4, LATENTS_HEIGHT, LATENTS_WIDTH)
if input_image:
encoder = models["encoder"]
encoder.to(device)
input_image_tensor = input_image.resize((WIDTH, HEIGHT))
# (Height, Width, Channel)
input_image_tensor = np.array(input_image_tensor)
# (Height, Width, Channel) -> (Height, Width, Channel)
input_image_tensor = torch.tensor(input_image_tensor, dtype=torch.float32, device=device)
# (Height, Width, Channel) -> (Height, Width, Channel)
input_image_tensor = rescale(input_image_tensor, (0, 255), (-1, 1))
# (Height, Width, Channel) -> (Batch_Size, Height, Width, Channel)
input_image_tensor = input_image_tensor.unsqueeze(0)
# (Batch_Size, Height, Width, Channel) -> (Batch_Size, Channel, Height, Width)
input_image_tensor = input_image_tensor.permute(0, 3, 1, 2)
# (Batch_Size, 4, Latents_Height, Latents_Width)
encoder_noise = torch.randn(latents_shape, generator=generator, device=device)
# (Batch_Size, 4, Latents_Height, Latents_Width)
latents = encoder(input_image_tensor, encoder_noise)
# Add noise to the latents (the encoded input image)
# (Batch_Size, 4, Latents_Height, Latents_Width)
sampler.set_strength(strength=strength)
latents = sampler.add_noise(latents, sampler.timesteps[0])
to_idle(encoder)
else:
# (Batch_Size, 4, Latents_Height, Latents_Width)
latents = torch.randn(latents_shape, generator=generator, device=device)
diffusion = models["diffusion"]
diffusion.to(device)
timesteps = tqdm(sampler.timesteps)
for i, timestep in enumerate(timesteps):
# (1, 320)
time_embedding = get_time_embedding(timestep).to(device)
# (Batch_Size, 4, Latents_Height, Latents_Width)
model_input = latents
if do_cfg:
# (Batch_Size, 4, Latents_Height, Latents_Width) -> (2 * Batch_Size, 4, Latents_Height, Latents_Width)
model_input = model_input.repeat(2, 1, 1, 1)
# model_output is the predicted noise
# (Batch_Size, 4, Latents_Height, Latents_Width) -> (Batch_Size, 4, Latents_Height, Latents_Width)
model_output = diffusion(model_input, context, time_embedding)
if do_cfg:
output_cond, output_uncond = model_output.chunk(2)
model_output = cfg_scale * (output_cond - output_uncond) + output_uncond
# (Batch_Size, 4, Latents_Height, Latents_Width) -> (Batch_Size, 4, Latents_Height, Latents_Width)
latents = sampler.step(timestep, latents, model_output)
to_idle(diffusion)
decoder = models["decoder"]
decoder.to(device)
# (Batch_Size, 4, Latents_Height, Latents_Width) -> (Batch_Size, 3, Height, Width)
images = decoder(latents)
to_idle(decoder)
images = rescale(images, (-1, 1), (0, 255), clamp=True)
# (Batch_Size, Channel, Height, Width) -> (Batch_Size, Height, Width, Channel)
images = images.permute(0, 2, 3, 1)
images = images.to("cpu", torch.uint8).numpy()
return images[0]
def rescale(x, old_range, new_range, clamp=False):
old_min, old_max = old_range
new_min, new_max = new_range
x -= old_min
x *= (new_max - new_min) / (old_max - old_min)
x += new_min
if clamp:
x = x.clamp(new_min, new_max)
return x
def get_time_embedding(timestep):
# Shape: (160,)
freqs = torch.pow(10000, -torch.arange(start=0, end=160, dtype=torch.float32) / 160)
# Shape: (1, 160)
x = torch.tensor([timestep], dtype=torch.float32)[:, None] * freqs[None]
# Shape: (1, 160 * 2)
return torch.cat([torch.cos(x), torch.sin(x)], dim=-1)