import gradio as gr import torch import numpy as np import requests import random from io import BytesIO from diffusers import StableDiffusionPipeline from diffusers import DDIMScheduler from utils import * from inversion_utils import * from modified_pipeline_semantic_stable_diffusion import SemanticStableDiffusionPipeline from torch import autocast, inference_mode import re def randomize_seed_fn(seed, randomize_seed): if randomize_seed: seed = random.randint(0, np.iinfo(np.int32).max) torch.manual_seed(seed) return seed def invert(x0, prompt_src="", num_diffusion_steps=100, cfg_scale_src = 3.5, eta = 1): # inverts a real image according to Algorihm 1 in https://arxiv.org/pdf/2304.06140.pdf, # based on the code in https://github.com/inbarhub/DDPM_inversion # returns wt, zs, wts: # wt - inverted latent # wts - intermediate inverted latents # zs - noise maps sd_pipe.scheduler.set_timesteps(num_diffusion_steps) # vae encode image with autocast("cuda"), inference_mode(): w0 = (sd_pipe.vae.encode(x0).latent_dist.mode() * 0.18215).float() # find Zs and wts - forward process wt, zs, wts = inversion_forward_process(sd_pipe, w0, etas=eta, prompt=prompt_src, cfg_scale=cfg_scale_src, prog_bar=True, num_inference_steps=num_diffusion_steps) return zs, wts def sample(zs, wts, prompt_tar="", cfg_scale_tar=15, skip=36, eta = 1): # reverse process (via Zs and wT) w0, _ = inversion_reverse_process(sd_pipe, xT=wts[skip], etas=eta, prompts=[prompt_tar], cfg_scales=[cfg_scale_tar], prog_bar=True, zs=zs[skip:]) # vae decode image with autocast("cuda"), inference_mode(): x0_dec = sd_pipe.vae.decode(1 / 0.18215 * w0).sample if x0_dec.dim()<4: x0_dec = x0_dec[None,:,:,:] img = image_grid(x0_dec) return img # load pipelines sd_model_id = "runwayml/stable-diffusion-v1-5" device = torch.device("cuda" if torch.cuda.is_available() else "cpu") sd_pipe = StableDiffusionPipeline.from_pretrained(sd_model_id).to(device) sd_pipe.scheduler = DDIMScheduler.from_config(sd_model_id, subfolder = "scheduler") sem_pipe = SemanticStableDiffusionPipeline.from_pretrained(sd_model_id).to(device) def get_example(): case = [ [ 'examples/source_a_cat_sitting_next_to_a_mirror.jpeg', 'a cat sitting next to a mirror', 'watercolor painting of a cat sitting next to a mirror', 100, 36, 15, '+Schnauzer dog, -cat', 5.5, 1, 'examples/ddpm_watercolor_painting_a_cat_sitting_next_to_a_mirror.png', 'examples/ddpm_sega_watercolor_painting_a_cat_sitting_next_to_a_mirror_plus_dog_minus_cat.png' ], [ 'examples/source_a_man_wearing_a_brown_hoodie_in_a_crowded_street.jpeg', 'a man wearing a brown hoodie in a crowded street', 'a robot wearing a brown hoodie in a crowded street', 100, 36, 15, '+painting', 10, 1, 'examples/ddpm_a_robot_wearing_a_brown_hoodie_in_a_crowded_street.png', 'examples/ddpm_sega_painting_of_a_robot_wearing_a_brown_hoodie_in_a_crowded_street.png' ], [ 'examples/source_wall_with_framed_photos.jpeg', '', '', 100, 36, 15, '+pink drawings of muffins', 10, 1, 'examples/ddpm_wall_with_framed_photos.png', 'examples/ddpm_sega_plus_pink_drawings_of_muffins.png' ], [ 'examples/source_an_empty_room_with_concrete_walls.jpg', 'an empty room with concrete walls', 'glass walls', 100, 36, 17, '+giant elephant', 10, 1, 'examples/ddpm_glass_walls.png', 'examples/ddpm_sega_glass_walls_gian_elephant.png' ]] return case def invert_and_reconstruct( input_image, do_inversion, wts, zs, src_prompt ="", tar_prompt="", steps=100, src_cfg_scale = 3.5, skip=36, tar_cfg_scale=15, # neg_guidance=False, ): x0 = load_512(input_image, device=device) if do_inversion: # invert and retrieve noise maps and latent zs_tensor, wts_tensor = invert(x0 =x0 , prompt_src=src_prompt, num_diffusion_steps=steps, cfg_scale_src=src_cfg_scale) wts = gr.State(value=wts_tensor) zs = gr.State(value=zs_tensor) do_inversion = False output = sample(zs.value, wts.value, prompt_tar=tar_prompt, skip=skip, cfg_scale_tar=tar_cfg_scale) return output, wts, zs, do_inversion def edit(input_image, do_inversion, wts, zs, seed, src_prompt ="", tar_prompt="", steps=100, skip=36, tar_cfg_scale=15, edit_concept="", sega_edit_guidance=10, warm_up=None, # neg_guidance=False, ): # SEGA # parse concepts and neg guidance edit_concepts = edit_concept.split(",") num_concepts = len(edit_concepts) neg_guidance =[] for edit_concept in edit_concepts: edit_concept=edit_concept.strip(" ") if edit_concept.startswith("-"): neg_guidance.append(True) else: neg_guidance.append(False) edit_concepts = [concept.strip("+|-") for concept in edit_concepts] # parse warm-up steps default_warm_up_steps = [1]*num_concepts if warm_up: digit_pattern = re.compile(r"^\d+$") warm_up_steps_str = warm_up.split(",") for i,num_steps in enumerate(warm_up_steps_str[:num_concepts]): if not digit_pattern.match(num_steps): raise gr.Error("Invalid value for warm-up steps, using 1 instead") else: default_warm_up_steps[i] = int(num_steps) editing_args = dict( editing_prompt = edit_concepts, reverse_editing_direction = neg_guidance, edit_warmup_steps=default_warm_up_steps, edit_guidance_scale=[sega_edit_guidance]*num_concepts, edit_threshold=[.95]*num_concepts, edit_momentum_scale=0.5, edit_mom_beta=0.6 ) latnets = wts.value[skip].expand(1, -1, -1, -1) sega_out = sem_pipe(prompt=tar_prompt,eta=1, latents=latnets, guidance_scale = tar_cfg_scale, num_images_per_prompt=1, num_inference_steps=steps, use_ddpm=True, wts=wts.value, zs=zs.value[skip:], **editing_args) return sega_out.images[0] ######## # demo # ######## intro = """
An Edit Friendly DDPM Noise Space: Inversion and Manipulations X SEGA: Instructing Diffusion using Semantic Dimensions
For faster inference without waiting in queue, you may duplicate the space and upgrade to GPU in settings.