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# -*- coding: utf-8 -*-
"""Copy of compose_glide.ipynb
Automatically generated by Colaboratory.
Original file is located at
https://colab.research.google.com/drive/19xx6Nu4FeiGj-TzTUFxBf-15IkeuFx_F
"""
# from PIL import Image
# from IPython.display import display
import torch as th
import numpy as np
from glide_text2im.download import load_checkpoint
from glide_text2im.model_creation import (
create_model_and_diffusion,
model_and_diffusion_defaults,
model_and_diffusion_defaults_upsampler
)
from composable_diffusion.download import download_model
from composable_diffusion.model_creation import create_model_and_diffusion as create_model_and_diffusion_for_clevr
from composable_diffusion.model_creation import model_and_diffusion_defaults as model_and_diffusion_defaults_for_clevr
from PIL import Image
# This notebook supports both CPU and GPU.
# On CPU, generating one sample may take on the order of 20 minutes.
# On a GPU, it should be under a minute.
has_cuda = th.cuda.is_available()
device = th.device('cpu' if not has_cuda else 'cuda')
print(device)
# Create base model.
timestep_respacing = 100 # @param{type: 'number'}
options = model_and_diffusion_defaults()
options['use_fp16'] = has_cuda
options['timestep_respacing'] = str(timestep_respacing) # use 100 diffusion steps for fast sampling
model, diffusion = create_model_and_diffusion(**options)
model.eval()
if has_cuda:
model.convert_to_fp16()
model.to(device)
model.load_state_dict(load_checkpoint('base', device))
print('total base parameters', sum(x.numel() for x in model.parameters()))
# Create upsampler model.
options_up = model_and_diffusion_defaults_upsampler()
options_up['use_fp16'] = has_cuda
options_up['timestep_respacing'] = 'fast27' # use 27 diffusion steps for very fast sampling
model_up, diffusion_up = create_model_and_diffusion(**options_up)
model_up.eval()
if has_cuda:
model_up.convert_to_fp16()
model_up.to(device)
model_up.load_state_dict(load_checkpoint('upsample', device))
print('total upsampler parameters', sum(x.numel() for x in model_up.parameters()))
def show_images(batch: th.Tensor):
""" Display a batch of images inline. """
scaled = ((batch + 1) * 127.5).round().clamp(0, 255).to(th.uint8).cpu()
reshaped = scaled.permute(2, 0, 3, 1).reshape([batch.shape[2], -1, 3])
display(Image.fromarray(reshaped.numpy()))
def compose_language_descriptions(prompt, guidance_scale):
# @markdown `prompt`: when composing multiple sentences, using `|` as the delimiter.
prompts = [x.strip() for x in prompt.split('|')]
batch_size = 1
# Tune this parameter to control the sharpness of 256x256 images.
# A value of 1.0 is sharper, but sometimes results in grainy artifacts.
upsample_temp = 0.980 # @param{type: 'number'}
masks = [True] * len(prompts) + [False]
# coefficients = th.tensor([0.5, 0.5], device=device).reshape(-1, 1, 1, 1)
masks = th.tensor(masks, dtype=th.bool, device=device)
# sampling function
def model_fn(x_t, ts, **kwargs):
half = x_t[:1]
combined = th.cat([half] * x_t.size(0), dim=0)
model_out = model(combined, ts, **kwargs)
eps, rest = model_out[:, :3], model_out[:, 3:]
cond_eps = eps[masks].mean(dim=0, keepdim=True)
# cond_eps = (coefficients * eps[masks]).sum(dim=0)[None]
uncond_eps = eps[~masks].mean(dim=0, keepdim=True)
half_eps = uncond_eps + guidance_scale * (cond_eps - uncond_eps)
eps = th.cat([half_eps] * x_t.size(0), dim=0)
return th.cat([eps, rest], dim=1)
##############################
# Sample from the base model #
##############################
# Create the text tokens to feed to the model.
def sample_64(prompts):
tokens_list = [model.tokenizer.encode(prompt) for prompt in prompts]
outputs = [model.tokenizer.padded_tokens_and_mask(
tokens, options['text_ctx']
) for tokens in tokens_list]
cond_tokens, cond_masks = zip(*outputs)
cond_tokens, cond_masks = list(cond_tokens), list(cond_masks)
full_batch_size = batch_size * (len(prompts) + 1)
uncond_tokens, uncond_mask = model.tokenizer.padded_tokens_and_mask(
[], options['text_ctx']
)
# Pack the tokens together into model kwargs.
model_kwargs = dict(
tokens=th.tensor(
cond_tokens + [uncond_tokens], device=device
),
mask=th.tensor(
cond_masks + [uncond_mask],
dtype=th.bool,
device=device,
),
)
# Sample from the base model.
model.del_cache()
samples = diffusion.p_sample_loop(
model_fn,
(full_batch_size, 3, options["image_size"], options["image_size"]),
device=device,
clip_denoised=True,
progress=True,
model_kwargs=model_kwargs,
cond_fn=None,
)[:batch_size]
model.del_cache()
# Show the output
return samples
##############################
# Upsample the 64x64 samples #
##############################
def upsampling_256(prompts, samples):
tokens = model_up.tokenizer.encode("".join(prompts))
tokens, mask = model_up.tokenizer.padded_tokens_and_mask(
tokens, options_up['text_ctx']
)
# Create the model conditioning dict.
model_kwargs = dict(
# Low-res image to upsample.
low_res=((samples + 1) * 127.5).round() / 127.5 - 1,
# Text tokens
tokens=th.tensor(
[tokens] * batch_size, device=device
),
mask=th.tensor(
[mask] * batch_size,
dtype=th.bool,
device=device,
),
)
# Sample from the base model.
model_up.del_cache()
up_shape = (batch_size, 3, options_up["image_size"], options_up["image_size"])
up_samples = diffusion_up.ddim_sample_loop(
model_up,
up_shape,
noise=th.randn(up_shape, device=device) * upsample_temp,
device=device,
clip_denoised=True,
progress=True,
model_kwargs=model_kwargs,
cond_fn=None,
)[:batch_size]
model_up.del_cache()
# Show the output
return up_samples
# sampling 64x64 images
samples = sample_64(prompts)
# show_images(samples)
# upsample from 64x64 to 256x256
upsamples = upsampling_256(prompts, samples)
# show_images(upsamples)
out_img = upsamples[0].permute(1, 2, 0)
out_img = (out_img + 1) / 2
out_img = (out_img.detach().cpu() * 255.).to(th.uint8)
out_img = out_img.numpy()
return out_img
# create model for CLEVR Objects
clevr_options = model_and_diffusion_defaults_for_clevr()
flags = {
"image_size": 128,
"num_channels": 192,
"num_res_blocks": 2,
"learn_sigma": True,
"use_scale_shift_norm": False,
"raw_unet": True,
"noise_schedule": "squaredcos_cap_v2",
"rescale_learned_sigmas": False,
"rescale_timesteps": False,
"num_classes": '2',
"dataset": "clevr_pos",
"use_fp16": has_cuda,
"timestep_respacing": '100'
}
for key, val in flags.items():
clevr_options[key] = val
clevr_model, clevr_diffusion = create_model_and_diffusion_for_clevr(**clevr_options)
clevr_model.eval()
if has_cuda:
clevr_model.convert_to_fp16()
clevr_model.to(device)
clevr_model.load_state_dict(th.load(download_model('clevr_pos'), device))
print('total clevr_pos parameters', sum(x.numel() for x in clevr_model.parameters()))
def compose_clevr_objects(prompt, guidance_scale):
coordinates = [[float(x.split(',')[0].strip()), float(x.split(',')[1].strip())]
for x in prompt.split('|')]
coordinates += [[-1, -1]] # add unconditional score label
batch_size = 1
def model_fn(x_t, ts, **kwargs):
half = x_t[:1]
combined = th.cat([half] * kwargs['y'].size(0), dim=0)
model_out = clevr_model(combined, ts, **kwargs)
eps, rest = model_out[:, :3], model_out[:, 3:]
masks = kwargs.get('masks')
cond_eps = eps[masks].mean(dim=0, keepdim=True)
uncond_eps = eps[~masks].mean(dim=0, keepdim=True)
half_eps = uncond_eps + guidance_scale * (cond_eps - uncond_eps)
eps = th.cat([half_eps] * x_t.size(0), dim=0)
return th.cat([eps, rest], dim=1)
def sample(coordinates):
masks = [True] * (len(coordinates) - 1) + [False]
model_kwargs = dict(
y=th.tensor(coordinates, dtype=th.float, device=device),
masks=th.tensor(masks, dtype=th.bool, device=device)
)
samples = clevr_diffusion.p_sample_loop(
model_fn,
(len(coordinates), 3, clevr_options["image_size"], clevr_options["image_size"]),
device=device,
clip_denoised=True,
progress=True,
model_kwargs=model_kwargs,
cond_fn=None,
)[:batch_size]
return samples
samples = sample(coordinates)
out_img = samples[0].permute(1, 2, 0)
out_img = (out_img + 1) / 2
out_img = (out_img.detach().cpu() * 255.).to(th.uint8)
out_img = out_img.numpy()
Image.fromarray(out_img).convert('RGB').save('test.png')
return out_img
def compose(prompt, version, guidance_scale):
if version == 'GLIDE':
return compose_language_descriptions(prompt, guidance_scale)
else:
return compose_clevr_objects(prompt, guidance_scale)
examples_1 = 'a camel | a forest'
examples_2 = 'A cloudy blue sky | A mountain in the horizon | Cherry Blossoms in front of the mountain'
examples_3 = '0.1, 0.5 | 0.3, 0.5 | 0.5, 0.5 | 0.7, 0.5 | 0.9, 0.5'
examples = [[examples_1, 'GLIDE', 10], [examples_2, 'GLIDE', 10], [examples_3, 'CLEVR Objects', 10]]
import gradio as gr
title = 'Compositional Visual Generation with Composable Diffusion Models'
description = '<p>Demo for Composable Diffusion<ul><li>~30s per GLIDE example</li><li>~10s per CLEVR Object example</li>(<b>Note</b>: time is measured by per example if gpu is used, otherwise it will take quite a bit of time.)</ul></p><p>See more information from our <a href="https://energy-based-model.github.io/Compositional-Visual-Generation-with-Composable-Diffusion-Models/">Project Page</a>.</p><ul><li>One version is based on the released <a href="https://github.com/openai/glide-text2im">GLIDE</a> for composing natural language description.</li><li>Another is based on our pre-trained CLEVR Object Model for composing objects. <br>(<b>Note</b>: We recommend using <b><i>x</i></b> in range <b><i>[0.1, 0.9]</i></b> and <b><i>y</i></b> in range <b><i>[0.25, 0.7]</i></b>, since the training dataset labels are in given ranges.)</li></ul><p>When composing multiple sentences, use `|` as the delimiter, see given examples below.</p>'
iface = gr.Interface(compose, inputs=["text", gr.Radio(['GLIDE', 'CLEVR Objects'], type="value", label='version'), gr.Slider(1, 20)], outputs='image',
title=title, description=description, examples=examples)
iface.launch()