QuintW's picture
Upload 1350 files
3f9c56c
raw
history blame
No virus
40.6 kB
import json
import gradio as gr
import functools
from copy import copy
from typing import List, Optional, Union, Callable
import numpy as np
from scripts.utils import svg_preprocess
from scripts import (
global_state,
external_code,
processor,
batch_hijack,
)
from scripts.processor import (
preprocessor_sliders_config,
no_control_mode_preprocessors,
flag_preprocessor_resolution,
model_free_preprocessors,
preprocessor_filters,
HWC3,
)
from scripts.logging import logger
from scripts.controlnet_ui.openpose_editor import OpenposeEditor
from scripts.controlnet_ui.preset import ControlNetPresetUI
from scripts.controlnet_ui.tool_button import ToolButton
from modules import shared
from modules.ui_components import FormRow
class UiControlNetUnit(external_code.ControlNetUnit):
"""The data class that stores all states of a ControlNetUnit."""
def __init__(
self,
input_mode: batch_hijack.InputMode = batch_hijack.InputMode.SIMPLE,
batch_images: Optional[Union[str, List[external_code.InputImage]]] = None,
output_dir: str = "",
loopback: bool = False,
use_preview_as_input: bool = False,
generated_image: Optional[np.ndarray] = None,
enabled: bool = True,
module: Optional[str] = None,
model: Optional[str] = None,
weight: float = 1.0,
image: Optional[np.ndarray] = None,
*args,
**kwargs,
):
if use_preview_as_input and generated_image is not None:
input_image = generated_image
module = "none"
else:
input_image = image
super().__init__(enabled, module, model, weight, input_image, *args, **kwargs)
self.is_ui = True
self.input_mode = input_mode
self.batch_images = batch_images
self.output_dir = output_dir
self.loopback = loopback
class ControlNetUiGroup(object):
# Note: Change symbol hints mapping in `javascript/hints.js` when you change the symbol values.
refresh_symbol = "\U0001f504" # πŸ”„
switch_values_symbol = "\U000021C5" # β‡…
camera_symbol = "\U0001F4F7" # πŸ“·
reverse_symbol = "\U000021C4" # ⇄
tossup_symbol = "\u2934"
trigger_symbol = "\U0001F4A5" # πŸ’₯
open_symbol = "\U0001F4DD" # πŸ“
global_batch_input_dir = gr.Textbox(
label="Controlnet input directory",
placeholder="Leave empty to use input directory",
**shared.hide_dirs,
elem_id="controlnet_batch_input_dir",
)
img2img_batch_input_dir = None
img2img_batch_input_dir_callbacks = []
img2img_batch_output_dir = None
img2img_batch_output_dir_callbacks = []
txt2img_submit_button = None
img2img_submit_button = None
# Slider controls from A1111 WebUI.
txt2img_w_slider = None
txt2img_h_slider = None
img2img_w_slider = None
img2img_h_slider = None
def __init__(
self,
gradio_compat: bool,
default_unit: external_code.ControlNetUnit,
preprocessors: List[Callable],
):
self.gradio_compat = gradio_compat
self.default_unit = default_unit
self.preprocessors = preprocessors
self.webcam_enabled = False
self.webcam_mirrored = False
# Note: All gradio elements declared in `render` will be defined as member variable.
self.upload_tab = None
self.image = None
self.generated_image_group = None
self.generated_image = None
self.batch_tab = None
self.batch_image_dir = None
self.create_canvas = None
self.canvas_width = None
self.canvas_height = None
self.canvas_create_button = None
self.canvas_cancel_button = None
self.open_new_canvas_button = None
self.webcam_enable = None
self.webcam_mirror = None
self.send_dimen_button = None
self.enabled = None
self.low_vram = None
self.pixel_perfect = None
self.preprocessor_preview = None
self.type_filter = None
self.module = None
self.trigger_preprocessor = None
self.model = None
self.refresh_models = None
self.weight = None
self.guidance_start = None
self.guidance_end = None
self.advanced = None
self.processor_res = None
self.threshold_a = None
self.threshold_b = None
self.control_mode = None
self.resize_mode = None
self.loopback = None
self.use_preview_as_input = None
self.openpose_editor = None
self.preset_panel = None
self.upload_independent_img_in_img2img = None
self.image_upload_panel = None
# Internal states for UI state pasting.
self.prevent_next_n_module_update = 0
self.prevent_next_n_slider_value_update = 0
def render(self, tabname: str, elem_id_tabname: str, is_img2img: bool) -> None:
"""The pure HTML structure of a single ControlNetUnit. Calling this
function will populate `self` with all gradio element declared
in local scope.
Args:
tabname:
elem_id_tabname:
Returns:
None
"""
with gr.Group(visible=not is_img2img) as self.image_upload_panel:
with gr.Tabs():
with gr.Tab(label="Single Image") as self.upload_tab:
with gr.Row(elem_classes=["cnet-image-row"], equal_height=True):
with gr.Group(elem_classes=["cnet-input-image-group"]):
self.image = gr.Image(
source="upload",
brush_radius=20,
mirror_webcam=False,
type="numpy",
tool="sketch",
elem_id=f"{elem_id_tabname}_{tabname}_input_image",
elem_classes=["cnet-image"],
brush_color=shared.opts.img2img_inpaint_mask_brush_color
if hasattr(
shared.opts, "img2img_inpaint_mask_brush_color"
)
else None,
)
with gr.Group(
visible=False, elem_classes=["cnet-generated-image-group"]
) as self.generated_image_group:
self.generated_image = gr.Image(
value=None,
label="Preprocessor Preview",
elem_id=f"{elem_id_tabname}_{tabname}_generated_image",
elem_classes=["cnet-image"],
interactive=True,
height=242
) # Gradio's magic number. Only 242 works.
with gr.Group(
elem_classes=["cnet-generated-image-control-group"]
):
self.openpose_editor = OpenposeEditor()
preview_check_elem_id = f"{elem_id_tabname}_{tabname}_controlnet_preprocessor_preview_checkbox"
preview_close_button_js = f"document.querySelector('#{preview_check_elem_id} input[type=\\'checkbox\\']').click();"
gr.HTML(
value=f"""<a title="Close Preview" onclick="{preview_close_button_js}">Close</a>""",
visible=True,
elem_classes=["cnet-close-preview"],
)
with gr.Tab(label="Batch") as self.batch_tab:
self.batch_image_dir = gr.Textbox(
label="Input Directory",
placeholder="Leave empty to use img2img batch controlnet input directory",
elem_id=f"{elem_id_tabname}_{tabname}_batch_image_dir",
)
with gr.Accordion(
label="Open New Canvas", visible=False
) as self.create_canvas:
self.canvas_width = gr.Slider(
label="New Canvas Width",
minimum=256,
maximum=1024,
value=512,
step=64,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_canvas_width",
)
self.canvas_height = gr.Slider(
label="New Canvas Height",
minimum=256,
maximum=1024,
value=512,
step=64,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_canvas_height",
)
with gr.Row():
self.canvas_create_button = gr.Button(
value="Create New Canvas",
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_canvas_create_button",
)
self.canvas_cancel_button = gr.Button(
value="Cancel",
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_canvas_cancel_button",
)
with gr.Row(elem_classes="controlnet_image_controls"):
gr.HTML(
value="<p>Set the preprocessor to [invert] If your image has white background and black lines.</p>",
elem_classes="controlnet_invert_warning",
)
self.open_new_canvas_button = ToolButton(
value=ControlNetUiGroup.open_symbol,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_open_new_canvas_button",
)
self.webcam_enable = ToolButton(
value=ControlNetUiGroup.camera_symbol,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_webcam_enable",
)
self.webcam_mirror = ToolButton(
value=ControlNetUiGroup.reverse_symbol,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_webcam_mirror",
)
self.send_dimen_button = ToolButton(
value=ControlNetUiGroup.tossup_symbol,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_send_dimen_button",
)
with FormRow(elem_classes=["controlnet_main_options"]):
self.enabled = gr.Checkbox(
label="Enable",
value=self.default_unit.enabled,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_enable_checkbox",
elem_classes=["cnet-unit-enabled"],
)
self.low_vram = gr.Checkbox(
label="Low VRAM",
value=self.default_unit.low_vram,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_low_vram_checkbox",
)
self.pixel_perfect = gr.Checkbox(
label="Pixel Perfect",
value=self.default_unit.pixel_perfect,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_pixel_perfect_checkbox",
)
self.preprocessor_preview = gr.Checkbox(
label="Allow Preview",
value=False,
elem_id=preview_check_elem_id,
visible=not is_img2img,
)
self.use_preview_as_input = gr.Checkbox(
label="Preview as Input",
value=False,
elem_classes=["cnet-preview-as-input"],
visible=False,
)
with gr.Row(elem_classes="controlnet_img2img_options"):
if is_img2img:
self.upload_independent_img_in_img2img = gr.Checkbox(
label="Upload independent control image",
value=False,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_same_img2img_checkbox",
elem_classes=["cnet-unit-same_img2img"],
)
else:
self.upload_independent_img_in_img2img = None
if not shared.opts.data.get("controlnet_disable_control_type", False):
with gr.Row(elem_classes=["controlnet_control_type", "controlnet_row"]):
self.type_filter = gr.Radio(
list(preprocessor_filters.keys()),
label=f"Control Type",
value="All",
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_type_filter_radio",
elem_classes="controlnet_control_type_filter_group",
)
with gr.Row(elem_classes=["controlnet_preprocessor_model", "controlnet_row"]):
self.module = gr.Dropdown(
global_state.ui_preprocessor_keys,
label=f"Preprocessor",
value=self.default_unit.module,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_preprocessor_dropdown",
)
self.trigger_preprocessor = ToolButton(
value=ControlNetUiGroup.trigger_symbol,
visible=not is_img2img,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_trigger_preprocessor",
elem_classes=["cnet-run-preprocessor"],
)
self.model = gr.Dropdown(
list(global_state.cn_models.keys()),
label=f"Model",
value=self.default_unit.model,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_model_dropdown",
)
self.refresh_models = ToolButton(
value=ControlNetUiGroup.refresh_symbol,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_refresh_models",
)
with gr.Row(elem_classes=["controlnet_weight_steps", "controlnet_row"]):
self.weight = gr.Slider(
label=f"Control Weight",
value=self.default_unit.weight,
minimum=0.0,
maximum=2.0,
step=0.05,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_control_weight_slider",
elem_classes="controlnet_control_weight_slider",
)
self.guidance_start = gr.Slider(
label="Starting Control Step",
value=self.default_unit.guidance_start,
minimum=0.0,
maximum=1.0,
interactive=True,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_start_control_step_slider",
elem_classes="controlnet_start_control_step_slider",
)
self.guidance_end = gr.Slider(
label="Ending Control Step",
value=self.default_unit.guidance_end,
minimum=0.0,
maximum=1.0,
interactive=True,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_ending_control_step_slider",
elem_classes="controlnet_ending_control_step_slider",
)
# advanced options
with gr.Column(visible=False) as self.advanced:
self.processor_res = gr.Slider(
label="Preprocessor resolution",
value=self.default_unit.processor_res,
minimum=64,
maximum=2048,
visible=False,
interactive=True,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_preprocessor_resolution_slider",
)
self.threshold_a = gr.Slider(
label="Threshold A",
value=self.default_unit.threshold_a,
minimum=64,
maximum=1024,
visible=False,
interactive=True,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_threshold_A_slider",
)
self.threshold_b = gr.Slider(
label="Threshold B",
value=self.default_unit.threshold_b,
minimum=64,
maximum=1024,
visible=False,
interactive=True,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_threshold_B_slider",
)
self.control_mode = gr.Radio(
choices=[e.value for e in external_code.ControlMode],
value=self.default_unit.control_mode.value,
label="Control Mode",
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_control_mode_radio",
elem_classes="controlnet_control_mode_radio",
)
self.resize_mode = gr.Radio(
choices=[e.value for e in external_code.ResizeMode],
value=self.default_unit.resize_mode.value,
label="Resize Mode",
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_resize_mode_radio",
elem_classes="controlnet_resize_mode_radio",
visible=not is_img2img,
)
self.loopback = gr.Checkbox(
label="[Loopback] Automatically send generated images to this ControlNet unit",
value=self.default_unit.loopback,
elem_id=f"{elem_id_tabname}_{tabname}_controlnet_automatically_send_generated_images_checkbox",
elem_classes="controlnet_loopback_checkbox",
visible=not is_img2img,
)
self.preset_panel = ControlNetPresetUI(
id_prefix=f"{elem_id_tabname}_{tabname}_"
)
def register_send_dimensions(self, is_img2img: bool):
"""Register event handler for send dimension button."""
def send_dimensions(image):
def closesteight(num):
rem = num % 8
if rem <= 4:
return round(num - rem)
else:
return round(num + (8 - rem))
if image:
interm = np.asarray(image.get("image"))
return closesteight(interm.shape[1]), closesteight(interm.shape[0])
else:
return gr.Slider.update(), gr.Slider.update()
outputs = (
[
ControlNetUiGroup.img2img_w_slider,
ControlNetUiGroup.img2img_h_slider,
]
if is_img2img
else [
ControlNetUiGroup.txt2img_w_slider,
ControlNetUiGroup.txt2img_h_slider,
]
)
self.send_dimen_button.click(
fn=send_dimensions,
inputs=[self.image],
outputs=outputs,
show_progress=False
)
def register_webcam_toggle(self):
def webcam_toggle():
self.webcam_enabled = not self.webcam_enabled
return {
"value": None,
"source": "webcam" if self.webcam_enabled else "upload",
"__type__": "update",
}
self.webcam_enable.click(webcam_toggle, inputs=None, outputs=self.image, show_progress=False)
def register_webcam_mirror_toggle(self):
def webcam_mirror_toggle():
self.webcam_mirrored = not self.webcam_mirrored
return {"mirror_webcam": self.webcam_mirrored, "__type__": "update"}
self.webcam_mirror.click(webcam_mirror_toggle, inputs=None, outputs=self.image, show_progress=False)
def register_refresh_all_models(self):
def refresh_all_models(*inputs):
global_state.update_cn_models()
dd = inputs[0]
selected = dd if dd in global_state.cn_models else "None"
return gr.Dropdown.update(
value=selected, choices=list(global_state.cn_models.keys())
)
self.refresh_models.click(refresh_all_models, self.model, self.model, show_progress=False)
def register_build_sliders(self):
if not self.gradio_compat:
return
def build_sliders(module: str, pp: bool):
logger.debug(
f"Prevent update slider value: {self.prevent_next_n_slider_value_update}"
)
logger.debug(f"Build slider for module: {module} - {pp}")
# Clear old slider values so that they do not cause confusion in
# infotext.
clear_slider_update = gr.update(
visible=False,
interactive=True,
minimum=-1,
maximum=-1,
value=-1,
)
grs = []
module = global_state.get_module_basename(module)
if module not in preprocessor_sliders_config:
default_res_slider_config = dict(
label=flag_preprocessor_resolution,
minimum=64,
maximum=2048,
step=1,
)
if self.prevent_next_n_slider_value_update == 0:
default_res_slider_config["value"] = 512
grs += [
gr.update(
**default_res_slider_config,
visible=not pp,
interactive=True,
),
copy(clear_slider_update),
copy(clear_slider_update),
gr.update(visible=True),
]
else:
for slider_config in preprocessor_sliders_config[module]:
if isinstance(slider_config, dict):
visible = True
if slider_config["name"] == flag_preprocessor_resolution:
visible = not pp
slider_update = gr.update(
label=slider_config["name"],
minimum=slider_config["min"],
maximum=slider_config["max"],
step=slider_config["step"]
if "step" in slider_config
else 1,
visible=visible,
interactive=True,
)
if self.prevent_next_n_slider_value_update == 0:
slider_update["value"] = slider_config["value"]
grs.append(slider_update)
else:
grs.append(copy(clear_slider_update))
while len(grs) < 3:
grs.append(copy(clear_slider_update))
grs.append(gr.update(visible=True))
if module in model_free_preprocessors:
grs += [
gr.update(visible=False, value="None"),
gr.update(visible=False),
]
else:
grs += [gr.update(visible=True), gr.update(visible=True)]
self.prevent_next_n_slider_value_update = max(
0, self.prevent_next_n_slider_value_update - 1
)
grs += [gr.update(visible=module not in no_control_mode_preprocessors)]
return grs
inputs = [
self.module,
self.pixel_perfect,
]
outputs = [
self.processor_res,
self.threshold_a,
self.threshold_b,
self.advanced,
self.model,
self.refresh_models,
self.control_mode
]
self.module.change(build_sliders, inputs=inputs, outputs=outputs, show_progress=False)
self.pixel_perfect.change(build_sliders, inputs=inputs, outputs=outputs, show_progress=False)
if self.type_filter is not None:
def filter_selected(k: str):
logger.debug(f"Prevent update {self.prevent_next_n_module_update}")
logger.debug(f"Switch to control type {k}")
(
filtered_preprocessor_list,
filtered_model_list,
default_option,
default_model,
) = global_state.select_control_type(k)
if self.prevent_next_n_module_update > 0:
self.prevent_next_n_module_update -= 1
return [
gr.Dropdown.update(choices=filtered_preprocessor_list),
gr.Dropdown.update(choices=filtered_model_list),
]
else:
return [
gr.Dropdown.update(
value=default_option, choices=filtered_preprocessor_list
),
gr.Dropdown.update(
value=default_model, choices=filtered_model_list
),
]
self.type_filter.change(
filter_selected,
inputs=[self.type_filter],
outputs=[self.module, self.model],
show_progress=False
)
def register_run_annotator(self, is_img2img: bool):
def run_annotator(image, module, pres, pthr_a, pthr_b, t2i_w, t2i_h, pp, rm):
if image is None:
return (
gr.update(value=None, visible=True),
gr.update(),
*self.openpose_editor.update(""),
)
img = HWC3(image["image"])
has_mask = not (
(image["mask"][:, :, 0] <= 5).all()
or (image["mask"][:, :, 0] >= 250).all()
)
if "inpaint" in module:
color = HWC3(image["image"])
alpha = image["mask"][:, :, 0:1]
img = np.concatenate([color, alpha], axis=2)
elif has_mask and not shared.opts.data.get(
"controlnet_ignore_noninpaint_mask", False
):
img = HWC3(image["mask"][:, :, 0])
module = global_state.get_module_basename(module)
preprocessor = self.preprocessors[module]
if pp:
pres = external_code.pixel_perfect_resolution(
img,
target_H=t2i_h,
target_W=t2i_w,
resize_mode=external_code.resize_mode_from_value(rm),
)
class JsonAcceptor:
def __init__(self) -> None:
self.value = ""
def accept(self, json_dict: dict) -> None:
self.value = json.dumps(json_dict)
json_acceptor = JsonAcceptor()
logger.info(f"Preview Resolution = {pres}")
def is_openpose(module: str):
return "openpose" in module
# Only openpose preprocessor returns a JSON output, pass json_acceptor
# only when a JSON output is expected. This will make preprocessor cache
# work for all other preprocessors other than openpose ones. JSON acceptor
# instance are different every call, which means cache will never take
# effect.
# TODO: Maybe we should let `preprocessor` return a Dict to alleviate this issue?
# This requires changing all callsites though.
result, is_image = preprocessor(
img,
res=pres,
thr_a=pthr_a,
thr_b=pthr_b,
json_pose_callback=json_acceptor.accept
if is_openpose(module)
else None,
)
if not is_image:
result = img
is_image = True
result = external_code.visualize_inpaint_mask(result)
return (
# Update to `generated_image`
gr.update(value=result, visible=True, interactive=False),
# preprocessor_preview
gr.update(value=True),
# openpose editor
*self.openpose_editor.update(json_acceptor.value),
)
self.trigger_preprocessor.click(
fn=run_annotator,
inputs=[
self.image,
self.module,
self.processor_res,
self.threshold_a,
self.threshold_b,
ControlNetUiGroup.img2img_w_slider
if is_img2img
else ControlNetUiGroup.txt2img_w_slider,
ControlNetUiGroup.img2img_h_slider
if is_img2img
else ControlNetUiGroup.txt2img_h_slider,
self.pixel_perfect,
self.resize_mode,
],
outputs=[
self.generated_image,
self.preprocessor_preview,
*self.openpose_editor.outputs(),
],
)
def register_shift_preview(self):
def shift_preview(is_on):
return (
# generated_image
gr.update() if is_on else gr.update(value=None),
# generated_image_group
gr.update(visible=is_on),
# use_preview_as_input,
gr.update(visible=False), # Now this is automatically managed
# download_pose_link
gr.update() if is_on else gr.update(value=None),
# modal edit button
gr.update() if is_on else gr.update(visible=False),
)
self.preprocessor_preview.change(
fn=shift_preview,
inputs=[self.preprocessor_preview],
outputs=[
self.generated_image,
self.generated_image_group,
self.use_preview_as_input,
self.openpose_editor.download_link,
self.openpose_editor.modal,
],
show_progress=False
)
def register_create_canvas(self):
self.open_new_canvas_button.click(
lambda: gr.Accordion.update(visible=True),
inputs=None,
outputs=self.create_canvas,
show_progress=False
)
self.canvas_cancel_button.click(
lambda: gr.Accordion.update(visible=False),
inputs=None,
outputs=self.create_canvas,
show_progress=False
)
def fn_canvas(h, w):
return np.zeros(shape=(h, w, 3), dtype=np.uint8) + 255, gr.Accordion.update(
visible=False
)
self.canvas_create_button.click(
fn=fn_canvas,
inputs=[self.canvas_height, self.canvas_width],
outputs=[self.image, self.create_canvas],
show_progress=False
)
def register_img2img_same_input(self):
def fn_same_checked(x):
return [
gr.update(value=None),
gr.update(value=None),
gr.update(value=False, visible=x),
] + [gr.update(visible=x)] * 4
self.upload_independent_img_in_img2img.change(
fn_same_checked,
inputs=self.upload_independent_img_in_img2img,
outputs=[
self.image,
self.batch_image_dir,
self.preprocessor_preview,
self.image_upload_panel,
self.trigger_preprocessor,
self.loopback,
self.resize_mode,
],
show_progress=False
)
return
def register_callbacks(self, is_img2img: bool):
"""Register callbacks on the UI elements.
Args:
is_img2img: Whether ControlNet is under img2img. False when in txt2img mode.
Returns:
None
"""
self.register_send_dimensions(is_img2img)
self.register_webcam_toggle()
self.register_webcam_mirror_toggle()
self.register_refresh_all_models()
self.register_build_sliders()
self.register_run_annotator(is_img2img)
self.register_shift_preview()
self.register_create_canvas()
self.openpose_editor.register_callbacks(
self.generated_image, self.use_preview_as_input
)
self.preset_panel.register_callbacks(
self,
self.type_filter,
*[
getattr(self, key)
for key in vars(external_code.ControlNetUnit()).keys()
],
)
if is_img2img:
self.register_img2img_same_input()
def render_and_register_unit(self, tabname: str, is_img2img: bool):
"""Render the invisible states elements for misc persistent
purposes. Register callbacks on loading/unloading the controlnet
unit and handle batch processes.
Args:
tabname:
is_img2img:
Returns:
The data class "ControlNetUnit" representing this ControlNetUnit.
"""
input_mode = gr.State(batch_hijack.InputMode.SIMPLE)
batch_image_dir_state = gr.State("")
output_dir_state = gr.State("")
unit_args = (
input_mode,
batch_image_dir_state,
output_dir_state,
self.loopback,
# Non-persistent fields.
# Following inputs will not be persistent on `ControlNetUnit`.
# They are only used during object construction.
self.use_preview_as_input,
self.generated_image,
# End of Non-persistent fields.
self.enabled,
self.module,
self.model,
self.weight,
self.image,
self.resize_mode,
self.low_vram,
self.processor_res,
self.threshold_a,
self.threshold_b,
self.guidance_start,
self.guidance_end,
self.pixel_perfect,
self.control_mode,
)
self.image.preprocess = functools.partial(
svg_preprocess, preprocess=self.image.preprocess
)
unit = gr.State(self.default_unit)
for comp in unit_args:
event_subscribers = []
if hasattr(comp, "edit"):
event_subscribers.append(comp.edit)
elif hasattr(comp, "click"):
event_subscribers.append(comp.click)
elif isinstance(comp, gr.Slider) and hasattr(comp, "release"):
event_subscribers.append(comp.release)
elif hasattr(comp, "change"):
event_subscribers.append(comp.change)
if hasattr(comp, "clear"):
event_subscribers.append(comp.clear)
for event_subscriber in event_subscribers:
event_subscriber(
fn=UiControlNetUnit, inputs=list(unit_args), outputs=unit
)
def clear_preview(x):
if x:
logger.info("Preview as input is cancelled.")
return gr.update(value=False), gr.update(value=None)
for comp in (
self.pixel_perfect,
self.module,
self.image,
self.processor_res,
self.threshold_a,
self.threshold_b,
self.upload_independent_img_in_img2img,
):
event_subscribers = []
if hasattr(comp, "edit"):
event_subscribers.append(comp.edit)
elif hasattr(comp, "click"):
event_subscribers.append(comp.click)
elif isinstance(comp, gr.Slider) and hasattr(comp, "release"):
event_subscribers.append(comp.release)
elif hasattr(comp, "change"):
event_subscribers.append(comp.change)
if hasattr(comp, "clear"):
event_subscribers.append(comp.clear)
for event_subscriber in event_subscribers:
event_subscriber(
fn=clear_preview,
inputs=self.use_preview_as_input,
outputs=[self.use_preview_as_input, self.generated_image],
)
# keep input_mode in sync
def ui_controlnet_unit_for_input_mode(input_mode, *args):
args = list(args)
args[0] = input_mode
return input_mode, UiControlNetUnit(*args)
for input_tab in (
(self.upload_tab, batch_hijack.InputMode.SIMPLE),
(self.batch_tab, batch_hijack.InputMode.BATCH),
):
input_tab[0].select(
fn=ui_controlnet_unit_for_input_mode,
inputs=[gr.State(input_tab[1])] + list(unit_args),
outputs=[input_mode, unit],
)
def determine_batch_dir(batch_dir, fallback_dir, fallback_fallback_dir):
if batch_dir:
return batch_dir
elif fallback_dir:
return fallback_dir
else:
return fallback_fallback_dir
# keep batch_dir in sync with global batch input textboxes
def subscribe_for_batch_dir():
batch_dirs = [
self.batch_image_dir,
ControlNetUiGroup.global_batch_input_dir,
ControlNetUiGroup.img2img_batch_input_dir,
]
for batch_dir_comp in batch_dirs:
subscriber = getattr(batch_dir_comp, "blur", None)
if subscriber is None:
continue
subscriber(
fn=determine_batch_dir,
inputs=batch_dirs,
outputs=[batch_image_dir_state],
queue=False,
)
if ControlNetUiGroup.img2img_batch_input_dir is None:
# we are too soon, subscribe later when available
ControlNetUiGroup.img2img_batch_input_dir_callbacks.append(
subscribe_for_batch_dir
)
else:
subscribe_for_batch_dir()
# keep output_dir in sync with global batch output textbox
def subscribe_for_output_dir():
ControlNetUiGroup.img2img_batch_output_dir.blur(
fn=lambda a: a,
inputs=[ControlNetUiGroup.img2img_batch_output_dir],
outputs=[output_dir_state],
queue=False,
)
if ControlNetUiGroup.img2img_batch_input_dir is None:
# we are too soon, subscribe later when available
ControlNetUiGroup.img2img_batch_output_dir_callbacks.append(
subscribe_for_output_dir
)
else:
subscribe_for_output_dir()
(
ControlNetUiGroup.img2img_submit_button
if is_img2img
else ControlNetUiGroup.txt2img_submit_button
).click(
fn=UiControlNetUnit,
inputs=list(unit_args),
outputs=unit,
queue=False,
)
return unit
@staticmethod
def on_after_component(component, **_kwargs):
elem_id = getattr(component, "elem_id", None)
if elem_id == "txt2img_generate":
ControlNetUiGroup.txt2img_submit_button = component
return
if elem_id == "img2img_generate":
ControlNetUiGroup.img2img_submit_button = component
return
if elem_id == "img2img_batch_input_dir":
ControlNetUiGroup.img2img_batch_input_dir = component
for callback in ControlNetUiGroup.img2img_batch_input_dir_callbacks:
callback()
return
if elem_id == "img2img_batch_output_dir":
ControlNetUiGroup.img2img_batch_output_dir = component
for callback in ControlNetUiGroup.img2img_batch_output_dir_callbacks:
callback()
return
if elem_id == "img2img_batch_inpaint_mask_dir":
ControlNetUiGroup.global_batch_input_dir.render()
return
if elem_id == "txt2img_width":
ControlNetUiGroup.txt2img_w_slider = component
return
if elem_id == "txt2img_height":
ControlNetUiGroup.txt2img_h_slider = component
return
if elem_id == "img2img_width":
ControlNetUiGroup.img2img_w_slider = component
return
if elem_id == "img2img_height":
ControlNetUiGroup.img2img_h_slider = component
return