Files
AMD-SHARK-Studio/apps/stable_diffusion/web/ui/outpaint_ui.py
xzuyn 91ab594744 minor fix, some changes, some additions, and cleaning up (#1618)
* - fix overflowing text (a janky fix)
- add DEISMultistep scheduler as an option
- set default scheduler to DEISMultistep
- set default CFG to 3.5
- set default steps to 16
- add `xzuyn/PhotoMerge` as a model option
- add 3 new example prompts (which work nicely with PhotoMerge)
- formatting

* Set DEISMultistep in the cpu_only list instead

* formatting

* formatting

* modify prompts

* resize window to 81% & 85% monitor resolution instead of (WxH / 1.0625).

* increase steps to 32 after some testing. somewhere in between 16 and 32 is best compromise on speed/quality for DEIS, so 32 steps to play it safe.

* black line length 79

* revert settings DEIS as default scheduler.

* add more schedulers & revert accidental DDIM change
- add DPMSolverSingleStep, KDPM2AncestralDiscrete, & HeunDiscrete.
- did not add `DPMSolverMultistepInverse` or `DDIMInverse` as they only output latent noise, there are a few I did not try adding yet.
- accidentally set `upscaler_ui.py` to EulerDiscrete by default last commit while reverting DEIS changes.
- add `xzuyn/PhotoMerge-inpainting` as an in or out painting model.

* black line length 79

* add help section stuff and some other changes
- list the rest of the schedulers in argument help section.
- replace mutable default arguments.
- increased default window height to 91% to remove any scrolling for the main txt2img page (tested on a 1920x1080 monitor). width is the same as its just enough to have the image output on the side instead of the bottom.
- cleanup
2023-07-04 18:51:23 -07:00

624 lines
22 KiB
Python

import os
import torch
import time
import gradio as gr
from PIL import Image
import base64
from io import BytesIO
from fastapi.exceptions import HTTPException
from apps.stable_diffusion.web.ui.utils import (
available_devices,
nodlogo_loc,
get_custom_model_path,
get_custom_model_files,
scheduler_list_cpu_only,
predefined_paint_models,
cancel_sd,
)
from apps.stable_diffusion.src import (
args,
OutpaintPipeline,
get_schedulers,
set_init_device_flags,
utils,
save_output_img,
)
from apps.stable_diffusion.src.utils import (
get_generated_imgs_path,
get_generation_text_info,
)
from apps.stable_diffusion.web.utils.common_label_calc import status_label
# set initial values of iree_vulkan_target_triple, use_tuned and import_mlir.
init_iree_vulkan_target_triple = args.iree_vulkan_target_triple
init_use_tuned = args.use_tuned
init_import_mlir = args.import_mlir
# Exposed to UI.
def outpaint_inf(
prompt: str,
negative_prompt: str,
init_image,
pixels: int,
mask_blur: int,
directions: list,
noise_q: float,
color_variation: float,
height: int,
width: int,
steps: int,
guidance_scale: float,
seed: int,
batch_count: int,
batch_size: int,
scheduler: str,
custom_model: str,
hf_model_id: str,
custom_vae: str,
precision: str,
device: str,
max_length: int,
save_metadata_to_json: bool,
save_metadata_to_png: bool,
lora_weights: str,
lora_hf_id: str,
ondemand: bool,
):
from apps.stable_diffusion.web.ui.utils import (
get_custom_model_pathfile,
get_custom_vae_or_lora_weights,
Config,
)
import apps.stable_diffusion.web.utils.global_obj as global_obj
from apps.stable_diffusion.src.pipelines.pipeline_shark_stable_diffusion_utils import (
SD_STATE_CANCEL,
)
args.prompts = [prompt]
args.negative_prompts = [negative_prompt]
args.guidance_scale = guidance_scale
args.steps = steps
args.scheduler = scheduler
args.img_path = "not none"
args.ondemand = ondemand
# set ckpt_loc and hf_model_id.
args.ckpt_loc = ""
args.hf_model_id = ""
args.custom_vae = ""
if custom_model == "None":
if not hf_model_id:
return (
None,
"Please provide either custom model or huggingface model ID, "
"both must not be empty.",
)
if "civitai" in hf_model_id:
args.ckpt_loc = hf_model_id
else:
args.hf_model_id = hf_model_id
elif ".ckpt" in custom_model or ".safetensors" in custom_model:
args.ckpt_loc = get_custom_model_pathfile(custom_model)
else:
args.hf_model_id = custom_model
if custom_vae != "None":
args.custom_vae = get_custom_model_pathfile(custom_vae, model="vae")
args.use_lora = get_custom_vae_or_lora_weights(
lora_weights, lora_hf_id, "lora"
)
args.save_metadata_to_json = save_metadata_to_json
args.write_metadata_to_png = save_metadata_to_png
dtype = torch.float32 if precision == "fp32" else torch.half
cpu_scheduling = not scheduler.startswith("Shark")
new_config_obj = Config(
"outpaint",
args.hf_model_id,
args.ckpt_loc,
args.custom_vae,
precision,
batch_size,
max_length,
height,
width,
device,
use_lora=args.use_lora,
use_stencil=None,
ondemand=ondemand,
)
if (
not global_obj.get_sd_obj()
or global_obj.get_cfg_obj() != new_config_obj
):
global_obj.clear_cache()
global_obj.set_cfg_obj(new_config_obj)
args.precision = precision
args.batch_count = batch_count
args.batch_size = batch_size
args.max_length = max_length
args.height = height
args.width = width
args.device = device.split("=>", 1)[1].strip()
args.iree_vulkan_target_triple = init_iree_vulkan_target_triple
args.use_tuned = init_use_tuned
args.import_mlir = init_import_mlir
set_init_device_flags()
model_id = (
args.hf_model_id
if args.hf_model_id
else "stabilityai/stable-diffusion-2-inpainting"
)
global_obj.set_schedulers(get_schedulers(model_id))
scheduler_obj = global_obj.get_scheduler(scheduler)
global_obj.set_sd_obj(
OutpaintPipeline.from_pretrained(
scheduler_obj,
args.import_mlir,
args.hf_model_id,
args.ckpt_loc,
args.custom_vae,
args.precision,
args.max_length,
args.batch_size,
args.height,
args.width,
args.use_base_vae,
args.use_tuned,
use_lora=args.use_lora,
ondemand=args.ondemand,
)
)
global_obj.set_sd_scheduler(scheduler)
start_time = time.time()
global_obj.get_sd_obj().log = ""
generated_imgs = []
seeds = []
img_seed = utils.sanitize_seed(seed)
left = True if "left" in directions else False
right = True if "right" in directions else False
top = True if "up" in directions else False
bottom = True if "down" in directions else False
text_output = ""
for i in range(batch_count):
if i > 0:
img_seed = utils.sanitize_seed(-1)
out_imgs = global_obj.get_sd_obj().generate_images(
prompt,
negative_prompt,
init_image,
pixels,
mask_blur,
left,
right,
top,
bottom,
noise_q,
color_variation,
batch_size,
height,
width,
steps,
guidance_scale,
img_seed,
args.max_length,
dtype,
args.use_base_vae,
cpu_scheduling,
args.max_embeddings_multiples,
)
seeds.append(img_seed)
total_time = time.time() - start_time
text_output = get_generation_text_info(seeds, device)
text_output += "\n" + global_obj.get_sd_obj().log
text_output += f"\nTotal image(s) generation time: {total_time:.4f}sec"
if global_obj.get_sd_status() == SD_STATE_CANCEL:
break
else:
save_output_img(out_imgs[0], img_seed)
generated_imgs.extend(out_imgs)
yield generated_imgs, text_output, status_label(
"Outpaint", i + 1, batch_count, batch_size
)
return generated_imgs, text_output, ""
def decode_base64_to_image(encoding):
if encoding.startswith("data:image/"):
encoding = encoding.split(";", 1)[1].split(",", 1)[1]
try:
image = Image.open(BytesIO(base64.b64decode(encoding)))
return image
except Exception as err:
print(err)
raise HTTPException(status_code=500, detail="Invalid encoded image")
def encode_pil_to_base64(images):
encoded_imgs = []
for image in images:
with BytesIO() as output_bytes:
if args.output_img_format.lower() == "png":
image.save(output_bytes, format="PNG")
elif args.output_img_format.lower() in ("jpg", "jpeg"):
image.save(output_bytes, format="JPEG")
else:
raise HTTPException(
status_code=500, detail="Invalid image format"
)
bytes_data = output_bytes.getvalue()
encoded_imgs.append(base64.b64encode(bytes_data))
return encoded_imgs
# Inpaint Rest API.
def outpaint_api(
InputData: dict,
):
print(
f'Prompt: {InputData["prompt"]}, Negative Prompt: {InputData["negative_prompt"]}, Seed: {InputData["seed"]}'
)
init_image = decode_base64_to_image(InputData["init_images"][0])
res = outpaint_inf(
InputData["prompt"],
InputData["negative_prompt"],
init_image,
InputData["pixels"],
InputData["mask_blur"],
InputData["directions"],
InputData["noise_q"],
InputData["color_variation"],
InputData["height"],
InputData["width"],
InputData["steps"],
InputData["cfg_scale"],
InputData["seed"],
batch_count=1,
batch_size=1,
scheduler="EulerDiscrete",
custom_model="None",
hf_model_id=InputData["hf_model_id"]
if "hf_model_id" in InputData.keys()
else "stabilityai/stable-diffusion-2-inpainting",
custom_vae="None",
precision="fp16",
device=available_devices[0],
max_length=64,
save_metadata_to_json=False,
save_metadata_to_png=False,
lora_weights="None",
lora_hf_id="",
ondemand=False,
)
# Convert Generator to Subscriptable
res = next(res)
return {
"images": encode_pil_to_base64(res[0]),
"parameters": {},
"info": res[1],
}
with gr.Blocks(title="Outpainting") as outpaint_web:
with gr.Row(elem_id="ui_title"):
nod_logo = Image.open(nodlogo_loc)
with gr.Row():
with gr.Column(scale=1, elem_id="demo_title_outer"):
gr.Image(
value=nod_logo,
show_label=False,
interactive=False,
elem_id="top_logo",
).style(width=150, height=50)
with gr.Row(elem_id="ui_body"):
with gr.Row():
with gr.Column(scale=1, min_width=600):
with gr.Row():
# janky fix for overflowing text
outpaint_model_info = (
str(get_custom_model_path())
).replace("\\", "\n\\")
outpaint_model_info = (
f"Custom Model Path: {outpaint_model_info}"
)
outpaint_custom_model = gr.Dropdown(
label=f"Models",
info=outpaint_model_info,
elem_id="custom_model",
value=os.path.basename(args.ckpt_loc)
if args.ckpt_loc
else "stabilityai/stable-diffusion-2-inpainting",
choices=["None"]
+ get_custom_model_files(
custom_checkpoint_type="inpainting"
)
+ predefined_paint_models,
)
outpaint_hf_model_id = gr.Textbox(
elem_id="hf_model_id",
placeholder="Select 'None' in the Models dropdown "
"on the left and enter model ID here "
"e.g: ghunkins/stable-diffusion-liberty-inpainting, "
"https://civitai.com/api/download/models/3433",
value="",
label="HuggingFace Model ID or Civitai model download URL",
lines=3,
)
# janky fix for overflowing text
outpaint_vae_info = (
str(get_custom_model_path("vae"))
).replace("\\", "\n\\")
outpaint_vae_info = f"VAE Path: {outpaint_vae_info}"
custom_vae = gr.Dropdown(
label=f"Custom VAE Models",
info=outpaint_vae_info,
elem_id="custom_model",
value=os.path.basename(args.custom_vae)
if args.custom_vae
else "None",
choices=["None"] + get_custom_model_files("vae"),
)
with gr.Group(elem_id="prompt_box_outer"):
prompt = gr.Textbox(
label="Prompt",
value=args.prompts[0],
lines=2,
elem_id="prompt_box",
)
negative_prompt = gr.Textbox(
label="Negative Prompt",
value=args.negative_prompts[0],
lines=2,
elem_id="negative_prompt_box",
)
outpaint_init_image = gr.Image(
label="Input Image", type="pil"
).style(height=300)
with gr.Accordion(label="LoRA Options", open=False):
with gr.Row():
# janky fix for overflowing text
outpaint_lora_info = (
str(get_custom_model_path("lora"))
).replace("\\", "\n\\")
outpaint_lora_info = f"LoRA Path: {outpaint_lora_info}"
lora_weights = gr.Dropdown(
label=f"Standalone LoRA Weights",
info=outpaint_lora_info,
elem_id="lora_weights",
value="None",
choices=["None"] + get_custom_model_files("lora"),
)
lora_hf_id = gr.Textbox(
elem_id="lora_hf_id",
placeholder="Select 'None' in the Standalone LoRA weights dropdown "
"on the left if you want to use a "
"standalone HuggingFace model ID for LoRA here "
"e.g: sayakpaul/sd-model-finetuned-lora-t4",
value="",
label="HuggingFace Model ID",
lines=3,
)
with gr.Accordion(label="Advanced Options", open=False):
with gr.Row():
scheduler = gr.Dropdown(
elem_id="scheduler",
label="Scheduler",
value="EulerDiscrete",
choices=scheduler_list_cpu_only,
)
with gr.Group():
save_metadata_to_png = gr.Checkbox(
label="Save prompt information to PNG",
value=args.write_metadata_to_png,
interactive=True,
)
save_metadata_to_json = gr.Checkbox(
label="Save prompt information to JSON file",
value=args.save_metadata_to_json,
interactive=True,
)
with gr.Row():
pixels = gr.Slider(
8,
256,
value=args.pixels,
step=8,
label="Pixels to expand",
)
mask_blur = gr.Slider(
0,
64,
value=args.mask_blur,
step=1,
label="Mask blur",
)
with gr.Row():
directions = gr.CheckboxGroup(
label="Outpainting direction",
choices=["left", "right", "up", "down"],
value=["left", "right", "up", "down"],
)
with gr.Row():
noise_q = gr.Slider(
0.0,
4.0,
value=1.0,
step=0.01,
label="Fall-off exponent (lower=higher detail)",
)
color_variation = gr.Slider(
0.0,
1.0,
value=0.05,
step=0.01,
label="Color variation",
)
with gr.Row():
height = gr.Slider(
384, 768, value=args.height, step=8, label="Height"
)
width = gr.Slider(
384, 768, value=args.width, step=8, label="Width"
)
precision = gr.Radio(
label="Precision",
value=args.precision,
choices=[
"fp16",
"fp32",
],
visible=False,
)
max_length = gr.Radio(
label="Max Length",
value=args.max_length,
choices=[
64,
77,
],
visible=False,
)
with gr.Row():
steps = gr.Slider(
1, 100, value=20, step=1, label="Steps"
)
ondemand = gr.Checkbox(
value=args.ondemand,
label="Low VRAM",
interactive=True,
)
with gr.Row():
with gr.Column(scale=3):
guidance_scale = gr.Slider(
0,
50,
value=args.guidance_scale,
step=0.1,
label="CFG Scale",
)
with gr.Column(scale=3):
batch_count = gr.Slider(
1,
100,
value=args.batch_count,
step=1,
label="Batch Count",
interactive=True,
)
batch_size = gr.Slider(
1,
4,
value=args.batch_size,
step=1,
label="Batch Size",
interactive=False,
visible=False,
)
stop_batch = gr.Button("Stop Batch")
with gr.Row():
seed = gr.Number(
value=args.seed, precision=0, label="Seed"
)
device = gr.Dropdown(
elem_id="device",
label="Device",
value=available_devices[0],
choices=available_devices,
)
with gr.Row():
with gr.Column(scale=2):
random_seed = gr.Button("Randomize Seed")
random_seed.click(
lambda: -1,
inputs=[],
outputs=[seed],
queue=False,
)
with gr.Column(scale=6):
stable_diffusion = gr.Button("Generate Image(s)")
with gr.Column(scale=1, min_width=600):
with gr.Group():
outpaint_gallery = gr.Gallery(
label="Generated images",
show_label=False,
elem_id="gallery",
).style(columns=[2], object_fit="contain")
std_output = gr.Textbox(
value=f"Images will be saved at {get_generated_imgs_path()}",
lines=1,
elem_id="std_output",
show_label=False,
)
outpaint_status = gr.Textbox(visible=False)
with gr.Row():
outpaint_sendto_img2img = gr.Button(value="SendTo Img2Img")
outpaint_sendto_inpaint = gr.Button(value="SendTo Inpaint")
outpaint_sendto_upscaler = gr.Button(
value="SendTo Upscaler"
)
kwargs = dict(
fn=outpaint_inf,
inputs=[
prompt,
negative_prompt,
outpaint_init_image,
pixels,
mask_blur,
directions,
noise_q,
color_variation,
height,
width,
steps,
guidance_scale,
seed,
batch_count,
batch_size,
scheduler,
outpaint_custom_model,
outpaint_hf_model_id,
custom_vae,
precision,
device,
max_length,
save_metadata_to_json,
save_metadata_to_png,
lora_weights,
lora_hf_id,
ondemand,
],
outputs=[outpaint_gallery, std_output, outpaint_status],
show_progress="minimal" if args.progress_bar else "none",
)
status_kwargs = dict(
fn=lambda bc, bs: status_label("Outpaint", 0, bc, bs),
inputs=[batch_count, batch_size],
outputs=outpaint_status,
)
prompt_submit = prompt.submit(**status_kwargs).then(**kwargs)
neg_prompt_submit = negative_prompt.submit(**status_kwargs).then(
**kwargs
)
generate_click = stable_diffusion.click(**status_kwargs).then(**kwargs)
stop_batch.click(
fn=cancel_sd,
cancels=[prompt_submit, neg_prompt_submit, generate_click],
)