# Copyright (c) 2024 Jaerin Lee # Permission is hereby granted, free of charge, to any person obtaining a copy # of this software and associated documentation files (the "Software"), to deal # in the Software without restriction, including without limitation the rights # to use, copy, modify, merge, publish, distribute, sublicense, and/or sell # copies of the Software, and to permit persons to whom the Software is # furnished to do so, subject to the following conditions: # The above copyright notice and this permission notice shall be included in all # copies or substantial portions of the Software. # THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR # IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, # FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE # AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER # LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, # OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE # SOFTWARE. import sys sys.path.append('../../src') import argparse import random import time import json import os import glob import pathlib from functools import partial from pprint import pprint import numpy as np from PIL import Image import torch import gradio as gr from huggingface_hub import snapshot_download import spaces from model import StableMultiDiffusion3Pipeline from util import seed_everything from prompt_util import preprocess_prompts, _quality_dict, _style_dict from share_btn import share_js ### Utils def log_state(state): pprint(vars(opt)) if isinstance(state, gr.State): state = state.value pprint(vars(state)) def is_empty_image(im: Image.Image) -> bool: if im is None: return True im = np.array(im) has_alpha = (im.shape[2] == 4) if not has_alpha: return False elif im.sum() == 0: return True else: return False ### Argument passing parser = argparse.ArgumentParser(description='Semantic Palette demo powered by StreamMultiDiffusion with SD3 support.') parser.add_argument('-H', '--height', type=int, default=1024) parser.add_argument('-W', '--width', type=int, default=2560) parser.add_argument('--model', type=str, default=None, help='Hugging face model repository or local path for a SD1.5 model checkpoint to run.') parser.add_argument('--bootstrap_steps', type=int, default=2) parser.add_argument('--seed', type=int, default=-1) parser.add_argument('--device', type=int, default=0) parser.add_argument('--port', type=int, default=8000) opt = parser.parse_args() ### Global variables and data structures device = 'cuda' if torch.cuda.is_available() else 'cpu' print(device) if opt.model is None: model_dict = { 'Stable Diffusion 3': 'stabilityai/stable-diffusion-3-medium-diffusers', } else: if opt.model.endswith('.safetensors'): opt.model = os.path.abspath(os.path.join('checkpoints', opt.model)) model_dict = {os.path.splitext(os.path.basename(opt.model))[0]: opt.model} models = { k: StableMultiDiffusion3Pipeline(device, hf_key=v, has_i2t=False).cuda() for k, v in model_dict.items() } prompt_suggestions = [ '1girl, souryuu asuka langley, neon genesis evangelion, solo, upper body, v, smile, looking at viewer', '1boy, solo, portrait, looking at viewer, white t-shirt, brown hair', '1girl, arima kana, oshi no ko, solo, upper body, from behind', ] opt.max_palettes = 4 opt.default_prompt_strength = 1.0 opt.default_mask_strength = 1.0 opt.default_mask_std = 0.0 opt.default_negative_prompt = ( 'nsfw, worst quality, bad quality, normal quality, cropped, framed' ) opt.verbose = True opt.colors = [ '#000000', '#2692F3', '#F89E12', '#16C232', '#F92F6C', # '#AC6AEB', # '#92C62C', # '#92C6EC', # '#FECAC0', ] ### Event handlers def add_palette(state): old_actives = state.active_palettes state.active_palettes = min(state.active_palettes + 1, opt.max_palettes) if opt.verbose: log_state(state) if state.active_palettes != old_actives: return [state] + [ gr.update() if state.active_palettes != opt.max_palettes else gr.update(visible=False) ] + [ gr.update() if i != state.active_palettes - 1 else gr.update(value=state.prompt_names[i + 1], visible=True) for i in range(opt.max_palettes) ] else: return [state] + [gr.update() for i in range(opt.max_palettes + 1)] def select_palette(state, button, idx): if idx < 0 or idx > opt.max_palettes: idx = 0 old_idx = state.current_palette if old_idx == idx: return [state] + [gr.update() for _ in range(opt.max_palettes + 7)] state.current_palette = idx if opt.verbose: log_state(state) updates = [state] + [ gr.update() if i not in (idx, old_idx) else gr.update(variant='secondary') if i == old_idx else gr.update(variant='primary') for i in range(opt.max_palettes + 1) ] label = 'Background' if idx == 0 else f'Palette {idx}' updates.extend([ gr.update(value=button, interactive=(idx > 0)), gr.update(value=state.prompts[idx], label=f'Edit Prompt for {label}'), gr.update(value=state.neg_prompts[idx], label=f'Edit Negative Prompt for {label}'), ( gr.update(value=state.mask_strengths[idx - 1], interactive=True) if idx > 0 else gr.update(value=opt.default_mask_strength, interactive=False) ), ( gr.update(value=state.prompt_strengths[idx - 1], interactive=True) if idx > 0 else gr.update(value=opt.default_prompt_strength, interactive=False) ), ( gr.update(value=state.mask_stds[idx - 1], interactive=True) if idx > 0 else gr.update(value=opt.default_mask_std, interactive=False) ), ]) return updates def change_prompt_strength(state, strength): if state.current_palette == 0: return state state.prompt_strengths[state.current_palette - 1] = strength if opt.verbose: log_state(state) return state def change_std(state, std): if state.current_palette == 0: return state state.mask_stds[state.current_palette - 1] = std if opt.verbose: log_state(state) return state def change_mask_strength(state, strength): if state.current_palette == 0: return state state.mask_strengths[state.current_palette - 1] = strength if opt.verbose: log_state(state) return state def reset_seed(state, seed): state.seed = seed if opt.verbose: log_state(state) return state def rename_prompt(state, name): state.prompt_names[state.current_palette] = name if opt.verbose: log_state(state) return [state] + [ gr.update() if i != state.current_palette else gr.update(value=name) for i in range(opt.max_palettes + 1) ] def change_prompt(state, prompt): state.prompts[state.current_palette] = prompt if opt.verbose: log_state(state) return state def change_neg_prompt(state, neg_prompt): state.neg_prompts[state.current_palette] = neg_prompt if opt.verbose: log_state(state) return state def select_model(state, model_id): state.model_id = model_id if opt.verbose: log_state(state) return state def select_style(state, style_name): state.style_name = style_name if opt.verbose: log_state(state) return state def select_quality(state, quality_name): state.quality_name = quality_name if opt.verbose: log_state(state) return state def import_state(state, json_text): current_palette = state.current_palette # active_palettes = state.active_palettes state = argparse.Namespace(**json.loads(json_text)) state.active_palettes = opt.max_palettes return [state] + [ gr.update(value=v, visible=True) for v in state.prompt_names ] + [ # state.model_id, # state.style_name, # state.quality_name, state.prompts[current_palette], state.prompt_names[current_palette], state.neg_prompts[current_palette], state.prompt_strengths[current_palette - 1], state.mask_strengths[current_palette - 1], state.mask_stds[current_palette - 1], state.seed, ] ### Main worker @spaces.GPU def generate(state, *args, **kwargs): return models[state.model_id](*args, **kwargs) def run(state, drawpad): seed_everything(state.seed if state.seed >=0 else np.random.randint(2147483647)) print('Generate!') background = drawpad['background'].convert('RGBA') inpainting_mode = np.asarray(background).sum() != 0 print('Inpainting mode: ', inpainting_mode) user_input = np.asarray(drawpad['layers'][0]) # (H, W, 4) foreground_mask = torch.tensor(user_input[..., -1])[None, None] # (1, 1, H, W) user_input = torch.tensor(user_input[..., :-1]) # (H, W, 3) palette = torch.tensor([ tuple(int(s[i+1:i+3], 16) for i in (0, 2, 4)) for s in opt.colors[1:] ]) # (N, 3) masks = (palette[:, None, None, :] == user_input[None]).all(dim=-1)[:, None, ...] # (N, 1, H, W) has_masks = [i for i, m in enumerate(masks.sum(dim=(1, 2, 3)) == 0) if not m] print('Has mask: ', has_masks) masks = masks * foreground_mask masks = masks[has_masks] if inpainting_mode: prompts = [state.prompts[v + 1] for v in has_masks] negative_prompts = [state.neg_prompts[v + 1] for v in has_masks] mask_strengths = [state.mask_strengths[v] for v in has_masks] mask_stds = [state.mask_stds[v] for v in has_masks] prompt_strengths = [state.prompt_strengths[v] for v in has_masks] else: masks = torch.cat([torch.ones_like(foreground_mask), masks], dim=0) prompts = [state.prompts[0]] + [state.prompts[v + 1] for v in has_masks] negative_prompts = [state.neg_prompts[0]] + [state.neg_prompts[v + 1] for v in has_masks] mask_strengths = [1] + [state.mask_strengths[v] for v in has_masks] mask_stds = [0] + [state.mask_stds[v] for v in has_masks] prompt_strengths = [1] + [state.prompt_strengths[v] for v in has_masks] prompts, negative_prompts = preprocess_prompts( prompts, negative_prompts, style_name=state.style_name, quality_name=state.quality_name) return generate( state, prompts, negative_prompts, masks=masks, mask_strengths=mask_strengths, mask_stds=mask_stds, prompt_strengths=prompt_strengths, background=background.convert('RGB'), background_prompt=state.prompts[0], background_negative_prompt=state.neg_prompts[0], height=opt.height, width=opt.width, bootstrap_steps=2, guidance_scale=0, ) ### Load examples root = pathlib.Path(__file__).parent print(root) example_root = os.path.join(root, 'examples') example_images = glob.glob(os.path.join(example_root, '*.webp')) example_images = [Image.open(i) for i in example_images] with open(os.path.join(example_root, 'prompt_background_advanced.txt')) as f: prompts_background = [l.strip() for l in f.readlines() if l.strip() != ''] with open(os.path.join(example_root, 'prompt_girl.txt')) as f: prompts_girl = [l.strip() for l in f.readlines() if l.strip() != ''] with open(os.path.join(example_root, 'prompt_boy.txt')) as f: prompts_boy = [l.strip() for l in f.readlines() if l.strip() != ''] with open(os.path.join(example_root, 'prompt_props.txt')) as f: prompts_props = [l.strip() for l in f.readlines() if l.strip() != ''] prompts_props = {l.split(',')[0].strip(): ','.join(l.split(',')[1:]).strip() for l in prompts_props} prompt_background = lambda: random.choice(prompts_background) prompt_girl = lambda: random.choice(prompts_girl) prompt_boy = lambda: random.choice(prompts_boy) prompt_props = lambda: np.random.choice(list(prompts_props.keys()), size=(opt.max_palettes - 2), replace=False).tolist() ### Main application css = f""" #run-button {{ font-size: 30pt; background-image: linear-gradient(to right, #4338ca 0%, #26a0da 51%, #4338ca 100%); margin: 0; padding: 15px 45px; text-align: center; text-transform: uppercase; transition: 0.5s; background-size: 200% auto; color: white; box-shadow: 0 0 20px #eee; border-radius: 10px; display: block; background-position: right center; }} #run-button:hover {{ background-position: left center; color: #fff; text-decoration: none; }} #semantic-palette {{ border-style: solid; border-width: 0.2em; border-color: #eee; }} #semantic-palette:hover {{ box-shadow: 0 0 20px #eee; }} #output-screen {{ width: 100%; aspect-ratio: {opt.width} / {opt.height}; }} .layer-wrap {{ display: none; }} .rainbow {{ text-align: center; text-decoration: underline; font-size: 32px; font-family: monospace; letter-spacing: 5px; }} .rainbow_text_animated {{ background: linear-gradient(to right, #6666ff, #0099ff , #00ff00, #ff3399, #6666ff); -webkit-background-clip: text; background-clip: text; color: transparent; animation: rainbow_animation 6s ease-in-out infinite; background-size: 400% 100%; }} @keyframes rainbow_animation {{ 0%,100% {{ background-position: 0 0; }} 50% {{ background-position: 100% 0; }} }} .gallery {{ --z: 16px; /* control the zig-zag */ --s: 144px; /* control the size */ --g: 4px; /* control the gap */ display: grid; gap: var(--g); width: calc(2*var(--s) + var(--g)); grid-auto-flow: column; }} .gallery > a {{ width: 0; min-width: calc(100% + var(--z)/2); height: var(--s); object-fit: cover; -webkit-mask: var(--mask); mask: var(--mask); cursor: pointer; transition: .5s; }} .gallery > a:hover {{ width: calc(var(--s)/2); }} .gallery > a:first-child {{ place-self: start; clip-path: polygon(calc(2*var(--z)) 0,100% 0,100% 100%,0 100%); --mask: conic-gradient(from -135deg at right,#0000,#000 1deg 89deg,#0000 90deg) 50%/100% calc(2*var(--z)) repeat-y; }} .gallery > a:last-child {{ place-self: end; clip-path: polygon(0 0,100% 0,calc(100% - 2*var(--z)) 100%,0 100%); --mask: conic-gradient(from 45deg at left ,#0000,#000 1deg 89deg,#0000 90deg) 50% calc(50% - var(--z))/100% calc(2*var(--z)) repeat-y; }} #share-btn {{ color: #ffffff;font-weight: 600; background-color: #000000; font-family: 'IBM Plex Sans', sans-serif; // border-radius: 9999px !important; --border-angle: 0turn; // For animation. --main-bg: conic-gradient( from var(--border-angle), #213, #112 5%, #112 60%, #213 95% ); border: solid 5px transparent; border-radius: 2em; --gradient-border: conic-gradient(from var(--border-angle), transparent 25%, #08f, #f03 99%, transparent); background: // padding-box clip this background in to the overall element except the border. var(--main-bg) padding-box, // border-box extends this background to the border space var(--gradient-border) border-box, // Duplicate main background to fill in behind the gradient border. You can remove this if you want the border to extend "outside" the box background. var(--main-bg) border-box; background-position: center center; animation: bg-spin 3s linear infinite; @keyframes bg-spin {{ to {{ --border-angle: 1turn; }} }} }} #share-btn:hover {{ color: #ffffff;font-weight: 600; background-color: #000000; font-family: 'IBM Plex Sans', sans-serif; border-radius: 9999px !important; box-shadow: 0 0 20px #eee; animation-play-state: paused; }} """ for i in range(opt.max_palettes + 1): css = css + f""" .secondary#semantic-palette-{i} {{ background-image: linear-gradient(to right, #374151 0%, #374151 71%, {opt.colors[i]} 100%); color: white; }} .primary#semantic-palette-{i} {{ background-image: linear-gradient(to right, #4338ca 0%, #4338ca 71%, {opt.colors[i]} 100%); color: white; }} """ with gr.Blocks(theme=gr.themes.Soft(), css=css) as demo: iface = argparse.Namespace() def _define_state(): state = argparse.Namespace() # Cursor. state.current_palette = 0 # 0: Background; 1,2,3,...: Layers state.model_id = list(model_dict.keys())[0] state.style_name = '(None)' state.quality_name = '(None)' # 'Standard v3.1' # State variables (one-hot). state.active_palettes = 1 # Front-end initialized to the default values. prompt_props_ = prompt_props() state.prompt_names = [ '🌄 Background', '👧 Girl', '👦 Boy', ] + prompt_props_ + ['🎨 New Palette' for _ in range(opt.max_palettes - 5)] state.prompts = [ prompt_background(), prompt_girl(), prompt_boy(), ] + [prompts_props[k] for k in prompt_props_] + ['' for _ in range(opt.max_palettes - 5)] state.neg_prompts = [ opt.default_negative_prompt + (', humans, humans, humans' if i == 0 else '') for i in range(opt.max_palettes + 1) ] state.prompt_strengths = [opt.default_prompt_strength for _ in range(opt.max_palettes)] state.mask_strengths = [opt.default_mask_strength for _ in range(opt.max_palettes)] state.mask_stds = [opt.default_mask_std for _ in range(opt.max_palettes)] state.seed = opt.seed return state state = gr.State(value=_define_state) ### Demo user interface gr.HTML( """
1-1. Type in the background prompt. Background is not required if you paint the whole drawpad.
1-2. (Optional: Inpainting mode) Uploading a background image will make the app into inpainting mode. Removing the image returns to the creation mode. In the inpainting mode, increasing the Mask Blur STD > 8 for every colored palette is recommended for smooth boundaries.
2. Select a semantic brush by clicking onto one in the Semantic Palette above. Edit prompt for the semantic brush.
2-1. If you are willing to draw more diverse images, try Create New Semantic Brush.
3. Start drawing in the Semantic Drawpad tab. The brush color is directly linked to the semantic brushes.
4. Click [GENERATE!] button to create your (large-scale) artwork!