moved deepdanbooru to pure pytorch implementation

This commit is contained in:
AUTOMATIC 2022-11-20 16:39:20 +03:00
parent 47a44c7e42
commit c81d440d87
8 changed files with 757 additions and 175 deletions

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@ -70,7 +70,7 @@ Check the [custom scripts](https://github.com/AUTOMATIC1111/stable-diffusion-web
- separate prompts using uppercase `AND`
- also supports weights for prompts: `a cat :1.2 AND a dog AND a penguin :2.2`
- No token limit for prompts (original stable diffusion lets you use up to 75 tokens)
- DeepDanbooru integration, creates danbooru style tags for anime prompts (add --deepdanbooru to commandline args)
- DeepDanbooru integration, creates danbooru style tags for anime prompts
- [xformers](https://github.com/AUTOMATIC1111/stable-diffusion-webui/wiki/Xformers), major speed increase for select cards: (add --xformers to commandline args)
- via extension: [History tab](https://github.com/yfszzx/stable-diffusion-webui-images-browser): view, direct and delete images conveniently within the UI
- Generate forever option

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@ -134,7 +134,6 @@ def prepare_enviroment():
gfpgan_package = os.environ.get('GFPGAN_PACKAGE', "git+https://github.com/TencentARC/GFPGAN.git@8d2447a2d918f8eba5a4a01463fd48e45126a379")
clip_package = os.environ.get('CLIP_PACKAGE', "git+https://github.com/openai/CLIP.git@d50d76daa670286dd6cacf3bcd80b5e4823fc8e1")
deepdanbooru_package = os.environ.get('DEEPDANBOORU_PACKAGE', "git+https://github.com/KichangKim/DeepDanbooru.git@d91a2963bf87c6a770d74894667e9ffa9f6de7ff")
xformers_windows_package = os.environ.get('XFORMERS_WINDOWS_PACKAGE', 'https://github.com/C43H66N12O12S2/stable-diffusion-webui/releases/download/f/xformers-0.0.14.dev0-cp310-cp310-win_amd64.whl')
@ -158,7 +157,6 @@ def prepare_enviroment():
sys.argv, update_check = extract_arg(sys.argv, '--update-check')
sys.argv, run_tests = extract_arg(sys.argv, '--tests')
xformers = '--xformers' in sys.argv
deepdanbooru = '--deepdanbooru' in sys.argv
ngrok = '--ngrok' in sys.argv
try:
@ -193,9 +191,6 @@ def prepare_enviroment():
elif platform.system() == "Linux":
run_pip("install xformers", "xformers")
if not is_installed("deepdanbooru") and deepdanbooru:
run_pip(f"install {deepdanbooru_package}#egg=deepdanbooru[tensorflow] tensorflow==2.10.0 tensorflow-io==0.27.0", "deepdanbooru")
if not is_installed("pyngrok") and ngrok:
run_pip("install pyngrok", "ngrok")

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@ -9,7 +9,7 @@ from fastapi.security import HTTPBasic, HTTPBasicCredentials
from secrets import compare_digest
import modules.shared as shared
from modules import sd_samplers
from modules import sd_samplers, deepbooru
from modules.api.models import *
from modules.processing import StableDiffusionProcessingTxt2Img, StableDiffusionProcessingImg2Img, process_images
from modules.extras import run_extras, run_pnginfo
@ -18,9 +18,6 @@ from modules.sd_models import checkpoints_list
from modules.realesrgan_model import get_realesrgan_models
from typing import List
if shared.cmd_opts.deepdanbooru:
from modules.deepbooru import get_deepbooru_tags
def upscaler_to_index(name: str):
try:
return [x.name.lower() for x in shared.sd_upscalers].index(name.lower())
@ -245,10 +242,7 @@ class Api:
if interrogatereq.model == "clip":
processed = shared.interrogator.interrogate(img)
elif interrogatereq.model == "deepdanbooru":
if shared.cmd_opts.deepdanbooru:
processed = get_deepbooru_tags(img)
else:
raise HTTPException(status_code=404, detail="Model not found. Add --deepdanbooru when launching for using the model.")
processed = deepbooru.model.tag(img)
else:
raise HTTPException(status_code=404, detail="Model not found")

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@ -1,173 +1,97 @@
import os.path
from concurrent.futures import ProcessPoolExecutor
import multiprocessing
import time
import os
import re
import torch
from PIL import Image
import numpy as np
from modules import modelloader, paths, deepbooru_model, devices, images, shared
re_special = re.compile(r'([\\()])')
def get_deepbooru_tags(pil_image):
"""
This method is for running only one image at a time for simple use. Used to the img2img interrogate.
"""
from modules import shared # prevents circular reference
try:
create_deepbooru_process(shared.opts.interrogate_deepbooru_score_threshold, create_deepbooru_opts())
return get_tags_from_process(pil_image)
finally:
release_process()
class DeepDanbooru:
def __init__(self):
self.model = None
def load(self):
if self.model is not None:
return
OPT_INCLUDE_RANKS = "include_ranks"
def create_deepbooru_opts():
from modules import shared
files = modelloader.load_models(
model_path=os.path.join(paths.models_path, "torch_deepdanbooru"),
model_url='https://github.com/AUTOMATIC1111/TorchDeepDanbooru/releases/download/v1/model-resnet_custom_v3.pt',
ext_filter=".pt",
download_name='model-resnet_custom_v3.pt',
)
return {
"use_spaces": shared.opts.deepbooru_use_spaces,
"use_escape": shared.opts.deepbooru_escape,
"alpha_sort": shared.opts.deepbooru_sort_alpha,
OPT_INCLUDE_RANKS: shared.opts.interrogate_return_ranks,
}
self.model = deepbooru_model.DeepDanbooruModel()
self.model.load_state_dict(torch.load(files[0], map_location="cpu"))
self.model.eval()
self.model.to(devices.cpu, devices.dtype)
def deepbooru_process(queue, deepbooru_process_return, threshold, deepbooru_opts):
model, tags = get_deepbooru_tags_model()
while True: # while process is running, keep monitoring queue for new image
pil_image = queue.get()
if pil_image == "QUIT":
break
else:
deepbooru_process_return["value"] = get_deepbooru_tags_from_model(model, tags, pil_image, threshold, deepbooru_opts)
def start(self):
self.load()
self.model.to(devices.device)
def stop(self):
if not shared.opts.interrogate_keep_models_in_memory:
self.model.to(devices.cpu)
devices.torch_gc()
def create_deepbooru_process(threshold, deepbooru_opts):
"""
Creates deepbooru process. A queue is created to send images into the process. This enables multiple images
to be processed in a row without reloading the model or creating a new process. To return the data, a shared
dictionary is created to hold the tags created. To wait for tags to be returned, a value of -1 is assigned
to the dictionary and the method adding the image to the queue should wait for this value to be updated with
the tags.
"""
from modules import shared # prevents circular reference
context = multiprocessing.get_context("spawn")
shared.deepbooru_process_manager = context.Manager()
shared.deepbooru_process_queue = shared.deepbooru_process_manager.Queue()
shared.deepbooru_process_return = shared.deepbooru_process_manager.dict()
shared.deepbooru_process_return["value"] = -1
shared.deepbooru_process = context.Process(target=deepbooru_process, args=(shared.deepbooru_process_queue, shared.deepbooru_process_return, threshold, deepbooru_opts))
shared.deepbooru_process.start()
def tag(self, pil_image):
self.start()
res = self.tag_multi(pil_image)
self.stop()
return res
def get_tags_from_process(image):
from modules import shared
def tag_multi(self, pil_image, force_disable_ranks=False):
threshold = shared.opts.interrogate_deepbooru_score_threshold
use_spaces = shared.opts.deepbooru_use_spaces
use_escape = shared.opts.deepbooru_escape
alpha_sort = shared.opts.deepbooru_sort_alpha
include_ranks = shared.opts.interrogate_return_ranks and not force_disable_ranks
shared.deepbooru_process_return["value"] = -1
shared.deepbooru_process_queue.put(image)
while shared.deepbooru_process_return["value"] == -1:
time.sleep(0.2)
caption = shared.deepbooru_process_return["value"]
shared.deepbooru_process_return["value"] = -1
pic = images.resize_image(2, pil_image.convert("RGB"), 512, 512)
a = np.expand_dims(np.array(pic, dtype=np.float32), 0) / 255
return caption
with torch.no_grad(), devices.autocast():
x = torch.from_numpy(a).cuda()
y = self.model(x)[0].detach().cpu().numpy()
probability_dict = {}
def release_process():
"""
Stops the deepbooru process to return used memory
"""
from modules import shared # prevents circular reference
shared.deepbooru_process_queue.put("QUIT")
shared.deepbooru_process.join()
shared.deepbooru_process_queue = None
shared.deepbooru_process = None
shared.deepbooru_process_return = None
shared.deepbooru_process_manager = None
for tag, probability in zip(self.model.tags, y):
if probability < threshold:
continue
def get_deepbooru_tags_model():
import deepdanbooru as dd
import tensorflow as tf
import numpy as np
this_folder = os.path.dirname(__file__)
model_path = os.path.abspath(os.path.join(this_folder, '..', 'models', 'deepbooru'))
if not os.path.exists(os.path.join(model_path, 'project.json')):
# there is no point importing these every time
import zipfile
from basicsr.utils.download_util import load_file_from_url
load_file_from_url(
r"https://github.com/KichangKim/DeepDanbooru/releases/download/v3-20211112-sgd-e28/deepdanbooru-v3-20211112-sgd-e28.zip",
model_path)
with zipfile.ZipFile(os.path.join(model_path, "deepdanbooru-v3-20211112-sgd-e28.zip"), "r") as zip_ref:
zip_ref.extractall(model_path)
os.remove(os.path.join(model_path, "deepdanbooru-v3-20211112-sgd-e28.zip"))
tags = dd.project.load_tags_from_project(model_path)
model = dd.project.load_model_from_project(
model_path, compile_model=False
)
return model, tags
def get_deepbooru_tags_from_model(model, tags, pil_image, threshold, deepbooru_opts):
import deepdanbooru as dd
import tensorflow as tf
import numpy as np
alpha_sort = deepbooru_opts['alpha_sort']
use_spaces = deepbooru_opts['use_spaces']
use_escape = deepbooru_opts['use_escape']
include_ranks = deepbooru_opts['include_ranks']
width = model.input_shape[2]
height = model.input_shape[1]
image = np.array(pil_image)
image = tf.image.resize(
image,
size=(height, width),
method=tf.image.ResizeMethod.AREA,
preserve_aspect_ratio=True,
)
image = image.numpy() # EagerTensor to np.array
image = dd.image.transform_and_pad_image(image, width, height)
image = image / 255.0
image_shape = image.shape
image = image.reshape((1, image_shape[0], image_shape[1], image_shape[2]))
y = model.predict(image)[0]
result_dict = {}
for i, tag in enumerate(tags):
result_dict[tag] = y[i]
unsorted_tags_in_theshold = []
result_tags_print = []
for tag in tags:
if result_dict[tag] >= threshold:
if tag.startswith("rating:"):
continue
unsorted_tags_in_theshold.append((result_dict[tag], tag))
result_tags_print.append(f'{result_dict[tag]} {tag}')
# sort tags
result_tags_out = []
sort_ndx = 0
if alpha_sort:
sort_ndx = 1
probability_dict[tag] = probability
# sort by reverse by likelihood and normal for alpha, and format tag text as requested
unsorted_tags_in_theshold.sort(key=lambda y: y[sort_ndx], reverse=(not alpha_sort))
for weight, tag in unsorted_tags_in_theshold:
tag_outformat = tag
if use_spaces:
tag_outformat = tag_outformat.replace('_', ' ')
if use_escape:
tag_outformat = re.sub(re_special, r'\\\1', tag_outformat)
if include_ranks:
tag_outformat = f"({tag_outformat}:{weight:.3f})"
if alpha_sort:
tags = sorted(probability_dict)
else:
tags = [tag for tag, _ in sorted(probability_dict.items(), key=lambda x: -x[1])]
result_tags_out.append(tag_outformat)
res = []
print('\n'.join(sorted(result_tags_print, reverse=True)))
for tag in tags:
probability = probability_dict[tag]
tag_outformat = tag
if use_spaces:
tag_outformat = tag_outformat.replace('_', ' ')
if use_escape:
tag_outformat = re.sub(re_special, r'\\\1', tag_outformat)
if include_ranks:
tag_outformat = f"({tag_outformat}:{probability:.3f})"
return ', '.join(result_tags_out)
res.append(tag_outformat)
return ", ".join(res)
model = DeepDanbooru()

676
modules/deepbooru_model.py Normal file
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@ -0,0 +1,676 @@
import torch
import torch.nn as nn
import torch.nn.functional as F
# see https://github.com/AUTOMATIC1111/TorchDeepDanbooru for more
class DeepDanbooruModel(nn.Module):
def __init__(self):
super(DeepDanbooruModel, self).__init__()
self.tags = []
self.n_Conv_0 = nn.Conv2d(kernel_size=(7, 7), in_channels=3, out_channels=64, stride=(2, 2))
self.n_MaxPool_0 = nn.MaxPool2d(kernel_size=(3, 3), stride=(2, 2))
self.n_Conv_1 = nn.Conv2d(kernel_size=(1, 1), in_channels=64, out_channels=256)
self.n_Conv_2 = nn.Conv2d(kernel_size=(1, 1), in_channels=64, out_channels=64)
self.n_Conv_3 = nn.Conv2d(kernel_size=(3, 3), in_channels=64, out_channels=64)
self.n_Conv_4 = nn.Conv2d(kernel_size=(1, 1), in_channels=64, out_channels=256)
self.n_Conv_5 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=64)
self.n_Conv_6 = nn.Conv2d(kernel_size=(3, 3), in_channels=64, out_channels=64)
self.n_Conv_7 = nn.Conv2d(kernel_size=(1, 1), in_channels=64, out_channels=256)
self.n_Conv_8 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=64)
self.n_Conv_9 = nn.Conv2d(kernel_size=(3, 3), in_channels=64, out_channels=64)
self.n_Conv_10 = nn.Conv2d(kernel_size=(1, 1), in_channels=64, out_channels=256)
self.n_Conv_11 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=512, stride=(2, 2))
self.n_Conv_12 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=128)
self.n_Conv_13 = nn.Conv2d(kernel_size=(3, 3), in_channels=128, out_channels=128, stride=(2, 2))
self.n_Conv_14 = nn.Conv2d(kernel_size=(1, 1), in_channels=128, out_channels=512)
self.n_Conv_15 = nn.Conv2d(kernel_size=(1, 1), in_channels=512, out_channels=128)
self.n_Conv_16 = nn.Conv2d(kernel_size=(3, 3), in_channels=128, out_channels=128)
self.n_Conv_17 = nn.Conv2d(kernel_size=(1, 1), in_channels=128, out_channels=512)
self.n_Conv_18 = nn.Conv2d(kernel_size=(1, 1), in_channels=512, out_channels=128)
self.n_Conv_19 = nn.Conv2d(kernel_size=(3, 3), in_channels=128, out_channels=128)
self.n_Conv_20 = nn.Conv2d(kernel_size=(1, 1), in_channels=128, out_channels=512)
self.n_Conv_21 = nn.Conv2d(kernel_size=(1, 1), in_channels=512, out_channels=128)
self.n_Conv_22 = nn.Conv2d(kernel_size=(3, 3), in_channels=128, out_channels=128)
self.n_Conv_23 = nn.Conv2d(kernel_size=(1, 1), in_channels=128, out_channels=512)
self.n_Conv_24 = nn.Conv2d(kernel_size=(1, 1), in_channels=512, out_channels=128)
self.n_Conv_25 = nn.Conv2d(kernel_size=(3, 3), in_channels=128, out_channels=128)
self.n_Conv_26 = nn.Conv2d(kernel_size=(1, 1), in_channels=128, out_channels=512)
self.n_Conv_27 = nn.Conv2d(kernel_size=(1, 1), in_channels=512, out_channels=128)
self.n_Conv_28 = nn.Conv2d(kernel_size=(3, 3), in_channels=128, out_channels=128)
self.n_Conv_29 = nn.Conv2d(kernel_size=(1, 1), in_channels=128, out_channels=512)
self.n_Conv_30 = nn.Conv2d(kernel_size=(1, 1), in_channels=512, out_channels=128)
self.n_Conv_31 = nn.Conv2d(kernel_size=(3, 3), in_channels=128, out_channels=128)
self.n_Conv_32 = nn.Conv2d(kernel_size=(1, 1), in_channels=128, out_channels=512)
self.n_Conv_33 = nn.Conv2d(kernel_size=(1, 1), in_channels=512, out_channels=128)
self.n_Conv_34 = nn.Conv2d(kernel_size=(3, 3), in_channels=128, out_channels=128)
self.n_Conv_35 = nn.Conv2d(kernel_size=(1, 1), in_channels=128, out_channels=512)
self.n_Conv_36 = nn.Conv2d(kernel_size=(1, 1), in_channels=512, out_channels=1024, stride=(2, 2))
self.n_Conv_37 = nn.Conv2d(kernel_size=(1, 1), in_channels=512, out_channels=256)
self.n_Conv_38 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256, stride=(2, 2))
self.n_Conv_39 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_40 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_41 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_42 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_43 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_44 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_45 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_46 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_47 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_48 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_49 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_50 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_51 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_52 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_53 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_54 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_55 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_56 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_57 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_58 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_59 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_60 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_61 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_62 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_63 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_64 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_65 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_66 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_67 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_68 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_69 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_70 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_71 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_72 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_73 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_74 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_75 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_76 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_77 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_78 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_79 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_80 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_81 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_82 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_83 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_84 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_85 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_86 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_87 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_88 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_89 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_90 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_91 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_92 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_93 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_94 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_95 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_96 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_97 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_98 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256, stride=(2, 2))
self.n_Conv_99 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_100 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=1024, stride=(2, 2))
self.n_Conv_101 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_102 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_103 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_104 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_105 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_106 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_107 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_108 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_109 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_110 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_111 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_112 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_113 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_114 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_115 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_116 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_117 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_118 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_119 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_120 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_121 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_122 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_123 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_124 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_125 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_126 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_127 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_128 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_129 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_130 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_131 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_132 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_133 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_134 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_135 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_136 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_137 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_138 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_139 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_140 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_141 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_142 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_143 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_144 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_145 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_146 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_147 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_148 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_149 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_150 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_151 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_152 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_153 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_154 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_155 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=256)
self.n_Conv_156 = nn.Conv2d(kernel_size=(3, 3), in_channels=256, out_channels=256)
self.n_Conv_157 = nn.Conv2d(kernel_size=(1, 1), in_channels=256, out_channels=1024)
self.n_Conv_158 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=2048, stride=(2, 2))
self.n_Conv_159 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=512)
self.n_Conv_160 = nn.Conv2d(kernel_size=(3, 3), in_channels=512, out_channels=512, stride=(2, 2))
self.n_Conv_161 = nn.Conv2d(kernel_size=(1, 1), in_channels=512, out_channels=2048)
self.n_Conv_162 = nn.Conv2d(kernel_size=(1, 1), in_channels=2048, out_channels=512)
self.n_Conv_163 = nn.Conv2d(kernel_size=(3, 3), in_channels=512, out_channels=512)
self.n_Conv_164 = nn.Conv2d(kernel_size=(1, 1), in_channels=512, out_channels=2048)
self.n_Conv_165 = nn.Conv2d(kernel_size=(1, 1), in_channels=2048, out_channels=512)
self.n_Conv_166 = nn.Conv2d(kernel_size=(3, 3), in_channels=512, out_channels=512)
self.n_Conv_167 = nn.Conv2d(kernel_size=(1, 1), in_channels=512, out_channels=2048)
self.n_Conv_168 = nn.Conv2d(kernel_size=(1, 1), in_channels=2048, out_channels=4096, stride=(2, 2))
self.n_Conv_169 = nn.Conv2d(kernel_size=(1, 1), in_channels=2048, out_channels=1024)
self.n_Conv_170 = nn.Conv2d(kernel_size=(3, 3), in_channels=1024, out_channels=1024, stride=(2, 2))
self.n_Conv_171 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=4096)
self.n_Conv_172 = nn.Conv2d(kernel_size=(1, 1), in_channels=4096, out_channels=1024)
self.n_Conv_173 = nn.Conv2d(kernel_size=(3, 3), in_channels=1024, out_channels=1024)
self.n_Conv_174 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=4096)
self.n_Conv_175 = nn.Conv2d(kernel_size=(1, 1), in_channels=4096, out_channels=1024)
self.n_Conv_176 = nn.Conv2d(kernel_size=(3, 3), in_channels=1024, out_channels=1024)
self.n_Conv_177 = nn.Conv2d(kernel_size=(1, 1), in_channels=1024, out_channels=4096)
self.n_Conv_178 = nn.Conv2d(kernel_size=(1, 1), in_channels=4096, out_channels=9176, bias=False)
def forward(self, *inputs):
t_358, = inputs
t_359 = t_358.permute(*[0, 3, 1, 2])
t_359_padded = F.pad(t_359, [2, 3, 2, 3], value=0)
t_360 = self.n_Conv_0(t_359_padded)
t_361 = F.relu(t_360)
t_361 = F.pad(t_361, [0, 1, 0, 1], value=float('-inf'))
t_362 = self.n_MaxPool_0(t_361)
t_363 = self.n_Conv_1(t_362)
t_364 = self.n_Conv_2(t_362)
t_365 = F.relu(t_364)
t_365_padded = F.pad(t_365, [1, 1, 1, 1], value=0)
t_366 = self.n_Conv_3(t_365_padded)
t_367 = F.relu(t_366)
t_368 = self.n_Conv_4(t_367)
t_369 = torch.add(t_368, t_363)
t_370 = F.relu(t_369)
t_371 = self.n_Conv_5(t_370)
t_372 = F.relu(t_371)
t_372_padded = F.pad(t_372, [1, 1, 1, 1], value=0)
t_373 = self.n_Conv_6(t_372_padded)
t_374 = F.relu(t_373)
t_375 = self.n_Conv_7(t_374)
t_376 = torch.add(t_375, t_370)
t_377 = F.relu(t_376)
t_378 = self.n_Conv_8(t_377)
t_379 = F.relu(t_378)
t_379_padded = F.pad(t_379, [1, 1, 1, 1], value=0)
t_380 = self.n_Conv_9(t_379_padded)
t_381 = F.relu(t_380)
t_382 = self.n_Conv_10(t_381)
t_383 = torch.add(t_382, t_377)
t_384 = F.relu(t_383)
t_385 = self.n_Conv_11(t_384)
t_386 = self.n_Conv_12(t_384)
t_387 = F.relu(t_386)
t_387_padded = F.pad(t_387, [0, 1, 0, 1], value=0)
t_388 = self.n_Conv_13(t_387_padded)
t_389 = F.relu(t_388)
t_390 = self.n_Conv_14(t_389)
t_391 = torch.add(t_390, t_385)
t_392 = F.relu(t_391)
t_393 = self.n_Conv_15(t_392)
t_394 = F.relu(t_393)
t_394_padded = F.pad(t_394, [1, 1, 1, 1], value=0)
t_395 = self.n_Conv_16(t_394_padded)
t_396 = F.relu(t_395)
t_397 = self.n_Conv_17(t_396)
t_398 = torch.add(t_397, t_392)
t_399 = F.relu(t_398)
t_400 = self.n_Conv_18(t_399)
t_401 = F.relu(t_400)
t_401_padded = F.pad(t_401, [1, 1, 1, 1], value=0)
t_402 = self.n_Conv_19(t_401_padded)
t_403 = F.relu(t_402)
t_404 = self.n_Conv_20(t_403)
t_405 = torch.add(t_404, t_399)
t_406 = F.relu(t_405)
t_407 = self.n_Conv_21(t_406)
t_408 = F.relu(t_407)
t_408_padded = F.pad(t_408, [1, 1, 1, 1], value=0)
t_409 = self.n_Conv_22(t_408_padded)
t_410 = F.relu(t_409)
t_411 = self.n_Conv_23(t_410)
t_412 = torch.add(t_411, t_406)
t_413 = F.relu(t_412)
t_414 = self.n_Conv_24(t_413)
t_415 = F.relu(t_414)
t_415_padded = F.pad(t_415, [1, 1, 1, 1], value=0)
t_416 = self.n_Conv_25(t_415_padded)
t_417 = F.relu(t_416)
t_418 = self.n_Conv_26(t_417)
t_419 = torch.add(t_418, t_413)
t_420 = F.relu(t_419)
t_421 = self.n_Conv_27(t_420)
t_422 = F.relu(t_421)
t_422_padded = F.pad(t_422, [1, 1, 1, 1], value=0)
t_423 = self.n_Conv_28(t_422_padded)
t_424 = F.relu(t_423)
t_425 = self.n_Conv_29(t_424)
t_426 = torch.add(t_425, t_420)
t_427 = F.relu(t_426)
t_428 = self.n_Conv_30(t_427)
t_429 = F.relu(t_428)
t_429_padded = F.pad(t_429, [1, 1, 1, 1], value=0)
t_430 = self.n_Conv_31(t_429_padded)
t_431 = F.relu(t_430)
t_432 = self.n_Conv_32(t_431)
t_433 = torch.add(t_432, t_427)
t_434 = F.relu(t_433)
t_435 = self.n_Conv_33(t_434)
t_436 = F.relu(t_435)
t_436_padded = F.pad(t_436, [1, 1, 1, 1], value=0)
t_437 = self.n_Conv_34(t_436_padded)
t_438 = F.relu(t_437)
t_439 = self.n_Conv_35(t_438)
t_440 = torch.add(t_439, t_434)
t_441 = F.relu(t_440)
t_442 = self.n_Conv_36(t_441)
t_443 = self.n_Conv_37(t_441)
t_444 = F.relu(t_443)
t_444_padded = F.pad(t_444, [0, 1, 0, 1], value=0)
t_445 = self.n_Conv_38(t_444_padded)
t_446 = F.relu(t_445)
t_447 = self.n_Conv_39(t_446)
t_448 = torch.add(t_447, t_442)
t_449 = F.relu(t_448)
t_450 = self.n_Conv_40(t_449)
t_451 = F.relu(t_450)
t_451_padded = F.pad(t_451, [1, 1, 1, 1], value=0)
t_452 = self.n_Conv_41(t_451_padded)
t_453 = F.relu(t_452)
t_454 = self.n_Conv_42(t_453)
t_455 = torch.add(t_454, t_449)
t_456 = F.relu(t_455)
t_457 = self.n_Conv_43(t_456)
t_458 = F.relu(t_457)
t_458_padded = F.pad(t_458, [1, 1, 1, 1], value=0)
t_459 = self.n_Conv_44(t_458_padded)
t_460 = F.relu(t_459)
t_461 = self.n_Conv_45(t_460)
t_462 = torch.add(t_461, t_456)
t_463 = F.relu(t_462)
t_464 = self.n_Conv_46(t_463)
t_465 = F.relu(t_464)
t_465_padded = F.pad(t_465, [1, 1, 1, 1], value=0)
t_466 = self.n_Conv_47(t_465_padded)
t_467 = F.relu(t_466)
t_468 = self.n_Conv_48(t_467)
t_469 = torch.add(t_468, t_463)
t_470 = F.relu(t_469)
t_471 = self.n_Conv_49(t_470)
t_472 = F.relu(t_471)
t_472_padded = F.pad(t_472, [1, 1, 1, 1], value=0)
t_473 = self.n_Conv_50(t_472_padded)
t_474 = F.relu(t_473)
t_475 = self.n_Conv_51(t_474)
t_476 = torch.add(t_475, t_470)
t_477 = F.relu(t_476)
t_478 = self.n_Conv_52(t_477)
t_479 = F.relu(t_478)
t_479_padded = F.pad(t_479, [1, 1, 1, 1], value=0)
t_480 = self.n_Conv_53(t_479_padded)
t_481 = F.relu(t_480)
t_482 = self.n_Conv_54(t_481)
t_483 = torch.add(t_482, t_477)
t_484 = F.relu(t_483)
t_485 = self.n_Conv_55(t_484)
t_486 = F.relu(t_485)
t_486_padded = F.pad(t_486, [1, 1, 1, 1], value=0)
t_487 = self.n_Conv_56(t_486_padded)
t_488 = F.relu(t_487)
t_489 = self.n_Conv_57(t_488)
t_490 = torch.add(t_489, t_484)
t_491 = F.relu(t_490)
t_492 = self.n_Conv_58(t_491)
t_493 = F.relu(t_492)
t_493_padded = F.pad(t_493, [1, 1, 1, 1], value=0)
t_494 = self.n_Conv_59(t_493_padded)
t_495 = F.relu(t_494)
t_496 = self.n_Conv_60(t_495)
t_497 = torch.add(t_496, t_491)
t_498 = F.relu(t_497)
t_499 = self.n_Conv_61(t_498)
t_500 = F.relu(t_499)
t_500_padded = F.pad(t_500, [1, 1, 1, 1], value=0)
t_501 = self.n_Conv_62(t_500_padded)
t_502 = F.relu(t_501)
t_503 = self.n_Conv_63(t_502)
t_504 = torch.add(t_503, t_498)
t_505 = F.relu(t_504)
t_506 = self.n_Conv_64(t_505)
t_507 = F.relu(t_506)
t_507_padded = F.pad(t_507, [1, 1, 1, 1], value=0)
t_508 = self.n_Conv_65(t_507_padded)
t_509 = F.relu(t_508)
t_510 = self.n_Conv_66(t_509)
t_511 = torch.add(t_510, t_505)
t_512 = F.relu(t_511)
t_513 = self.n_Conv_67(t_512)
t_514 = F.relu(t_513)
t_514_padded = F.pad(t_514, [1, 1, 1, 1], value=0)
t_515 = self.n_Conv_68(t_514_padded)
t_516 = F.relu(t_515)
t_517 = self.n_Conv_69(t_516)
t_518 = torch.add(t_517, t_512)
t_519 = F.relu(t_518)
t_520 = self.n_Conv_70(t_519)
t_521 = F.relu(t_520)
t_521_padded = F.pad(t_521, [1, 1, 1, 1], value=0)
t_522 = self.n_Conv_71(t_521_padded)
t_523 = F.relu(t_522)
t_524 = self.n_Conv_72(t_523)
t_525 = torch.add(t_524, t_519)
t_526 = F.relu(t_525)
t_527 = self.n_Conv_73(t_526)
t_528 = F.relu(t_527)
t_528_padded = F.pad(t_528, [1, 1, 1, 1], value=0)
t_529 = self.n_Conv_74(t_528_padded)
t_530 = F.relu(t_529)
t_531 = self.n_Conv_75(t_530)
t_532 = torch.add(t_531, t_526)
t_533 = F.relu(t_532)
t_534 = self.n_Conv_76(t_533)
t_535 = F.relu(t_534)
t_535_padded = F.pad(t_535, [1, 1, 1, 1], value=0)
t_536 = self.n_Conv_77(t_535_padded)
t_537 = F.relu(t_536)
t_538 = self.n_Conv_78(t_537)
t_539 = torch.add(t_538, t_533)
t_540 = F.relu(t_539)
t_541 = self.n_Conv_79(t_540)
t_542 = F.relu(t_541)
t_542_padded = F.pad(t_542, [1, 1, 1, 1], value=0)
t_543 = self.n_Conv_80(t_542_padded)
t_544 = F.relu(t_543)
t_545 = self.n_Conv_81(t_544)
t_546 = torch.add(t_545, t_540)
t_547 = F.relu(t_546)
t_548 = self.n_Conv_82(t_547)
t_549 = F.relu(t_548)
t_549_padded = F.pad(t_549, [1, 1, 1, 1], value=0)
t_550 = self.n_Conv_83(t_549_padded)
t_551 = F.relu(t_550)
t_552 = self.n_Conv_84(t_551)
t_553 = torch.add(t_552, t_547)
t_554 = F.relu(t_553)
t_555 = self.n_Conv_85(t_554)
t_556 = F.relu(t_555)
t_556_padded = F.pad(t_556, [1, 1, 1, 1], value=0)
t_557 = self.n_Conv_86(t_556_padded)
t_558 = F.relu(t_557)
t_559 = self.n_Conv_87(t_558)
t_560 = torch.add(t_559, t_554)
t_561 = F.relu(t_560)
t_562 = self.n_Conv_88(t_561)
t_563 = F.relu(t_562)
t_563_padded = F.pad(t_563, [1, 1, 1, 1], value=0)
t_564 = self.n_Conv_89(t_563_padded)
t_565 = F.relu(t_564)
t_566 = self.n_Conv_90(t_565)
t_567 = torch.add(t_566, t_561)
t_568 = F.relu(t_567)
t_569 = self.n_Conv_91(t_568)
t_570 = F.relu(t_569)
t_570_padded = F.pad(t_570, [1, 1, 1, 1], value=0)
t_571 = self.n_Conv_92(t_570_padded)
t_572 = F.relu(t_571)
t_573 = self.n_Conv_93(t_572)
t_574 = torch.add(t_573, t_568)
t_575 = F.relu(t_574)
t_576 = self.n_Conv_94(t_575)
t_577 = F.relu(t_576)
t_577_padded = F.pad(t_577, [1, 1, 1, 1], value=0)
t_578 = self.n_Conv_95(t_577_padded)
t_579 = F.relu(t_578)
t_580 = self.n_Conv_96(t_579)
t_581 = torch.add(t_580, t_575)
t_582 = F.relu(t_581)
t_583 = self.n_Conv_97(t_582)
t_584 = F.relu(t_583)
t_584_padded = F.pad(t_584, [0, 1, 0, 1], value=0)
t_585 = self.n_Conv_98(t_584_padded)
t_586 = F.relu(t_585)
t_587 = self.n_Conv_99(t_586)
t_588 = self.n_Conv_100(t_582)
t_589 = torch.add(t_587, t_588)
t_590 = F.relu(t_589)
t_591 = self.n_Conv_101(t_590)
t_592 = F.relu(t_591)
t_592_padded = F.pad(t_592, [1, 1, 1, 1], value=0)
t_593 = self.n_Conv_102(t_592_padded)
t_594 = F.relu(t_593)
t_595 = self.n_Conv_103(t_594)
t_596 = torch.add(t_595, t_590)
t_597 = F.relu(t_596)
t_598 = self.n_Conv_104(t_597)
t_599 = F.relu(t_598)
t_599_padded = F.pad(t_599, [1, 1, 1, 1], value=0)
t_600 = self.n_Conv_105(t_599_padded)
t_601 = F.relu(t_600)
t_602 = self.n_Conv_106(t_601)
t_603 = torch.add(t_602, t_597)
t_604 = F.relu(t_603)
t_605 = self.n_Conv_107(t_604)
t_606 = F.relu(t_605)
t_606_padded = F.pad(t_606, [1, 1, 1, 1], value=0)
t_607 = self.n_Conv_108(t_606_padded)
t_608 = F.relu(t_607)
t_609 = self.n_Conv_109(t_608)
t_610 = torch.add(t_609, t_604)
t_611 = F.relu(t_610)
t_612 = self.n_Conv_110(t_611)
t_613 = F.relu(t_612)
t_613_padded = F.pad(t_613, [1, 1, 1, 1], value=0)
t_614 = self.n_Conv_111(t_613_padded)
t_615 = F.relu(t_614)
t_616 = self.n_Conv_112(t_615)
t_617 = torch.add(t_616, t_611)
t_618 = F.relu(t_617)
t_619 = self.n_Conv_113(t_618)
t_620 = F.relu(t_619)
t_620_padded = F.pad(t_620, [1, 1, 1, 1], value=0)
t_621 = self.n_Conv_114(t_620_padded)
t_622 = F.relu(t_621)
t_623 = self.n_Conv_115(t_622)
t_624 = torch.add(t_623, t_618)
t_625 = F.relu(t_624)
t_626 = self.n_Conv_116(t_625)
t_627 = F.relu(t_626)
t_627_padded = F.pad(t_627, [1, 1, 1, 1], value=0)
t_628 = self.n_Conv_117(t_627_padded)
t_629 = F.relu(t_628)
t_630 = self.n_Conv_118(t_629)
t_631 = torch.add(t_630, t_625)
t_632 = F.relu(t_631)
t_633 = self.n_Conv_119(t_632)
t_634 = F.relu(t_633)
t_634_padded = F.pad(t_634, [1, 1, 1, 1], value=0)
t_635 = self.n_Conv_120(t_634_padded)
t_636 = F.relu(t_635)
t_637 = self.n_Conv_121(t_636)
t_638 = torch.add(t_637, t_632)
t_639 = F.relu(t_638)
t_640 = self.n_Conv_122(t_639)
t_641 = F.relu(t_640)
t_641_padded = F.pad(t_641, [1, 1, 1, 1], value=0)
t_642 = self.n_Conv_123(t_641_padded)
t_643 = F.relu(t_642)
t_644 = self.n_Conv_124(t_643)
t_645 = torch.add(t_644, t_639)
t_646 = F.relu(t_645)
t_647 = self.n_Conv_125(t_646)
t_648 = F.relu(t_647)
t_648_padded = F.pad(t_648, [1, 1, 1, 1], value=0)
t_649 = self.n_Conv_126(t_648_padded)
t_650 = F.relu(t_649)
t_651 = self.n_Conv_127(t_650)
t_652 = torch.add(t_651, t_646)
t_653 = F.relu(t_652)
t_654 = self.n_Conv_128(t_653)
t_655 = F.relu(t_654)
t_655_padded = F.pad(t_655, [1, 1, 1, 1], value=0)
t_656 = self.n_Conv_129(t_655_padded)
t_657 = F.relu(t_656)
t_658 = self.n_Conv_130(t_657)
t_659 = torch.add(t_658, t_653)
t_660 = F.relu(t_659)
t_661 = self.n_Conv_131(t_660)
t_662 = F.relu(t_661)
t_662_padded = F.pad(t_662, [1, 1, 1, 1], value=0)
t_663 = self.n_Conv_132(t_662_padded)
t_664 = F.relu(t_663)
t_665 = self.n_Conv_133(t_664)
t_666 = torch.add(t_665, t_660)
t_667 = F.relu(t_666)
t_668 = self.n_Conv_134(t_667)
t_669 = F.relu(t_668)
t_669_padded = F.pad(t_669, [1, 1, 1, 1], value=0)
t_670 = self.n_Conv_135(t_669_padded)
t_671 = F.relu(t_670)
t_672 = self.n_Conv_136(t_671)
t_673 = torch.add(t_672, t_667)
t_674 = F.relu(t_673)
t_675 = self.n_Conv_137(t_674)
t_676 = F.relu(t_675)
t_676_padded = F.pad(t_676, [1, 1, 1, 1], value=0)
t_677 = self.n_Conv_138(t_676_padded)
t_678 = F.relu(t_677)
t_679 = self.n_Conv_139(t_678)
t_680 = torch.add(t_679, t_674)
t_681 = F.relu(t_680)
t_682 = self.n_Conv_140(t_681)
t_683 = F.relu(t_682)
t_683_padded = F.pad(t_683, [1, 1, 1, 1], value=0)
t_684 = self.n_Conv_141(t_683_padded)
t_685 = F.relu(t_684)
t_686 = self.n_Conv_142(t_685)
t_687 = torch.add(t_686, t_681)
t_688 = F.relu(t_687)
t_689 = self.n_Conv_143(t_688)
t_690 = F.relu(t_689)
t_690_padded = F.pad(t_690, [1, 1, 1, 1], value=0)
t_691 = self.n_Conv_144(t_690_padded)
t_692 = F.relu(t_691)
t_693 = self.n_Conv_145(t_692)
t_694 = torch.add(t_693, t_688)
t_695 = F.relu(t_694)
t_696 = self.n_Conv_146(t_695)
t_697 = F.relu(t_696)
t_697_padded = F.pad(t_697, [1, 1, 1, 1], value=0)
t_698 = self.n_Conv_147(t_697_padded)
t_699 = F.relu(t_698)
t_700 = self.n_Conv_148(t_699)
t_701 = torch.add(t_700, t_695)
t_702 = F.relu(t_701)
t_703 = self.n_Conv_149(t_702)
t_704 = F.relu(t_703)
t_704_padded = F.pad(t_704, [1, 1, 1, 1], value=0)
t_705 = self.n_Conv_150(t_704_padded)
t_706 = F.relu(t_705)
t_707 = self.n_Conv_151(t_706)
t_708 = torch.add(t_707, t_702)
t_709 = F.relu(t_708)
t_710 = self.n_Conv_152(t_709)
t_711 = F.relu(t_710)
t_711_padded = F.pad(t_711, [1, 1, 1, 1], value=0)
t_712 = self.n_Conv_153(t_711_padded)
t_713 = F.relu(t_712)
t_714 = self.n_Conv_154(t_713)
t_715 = torch.add(t_714, t_709)
t_716 = F.relu(t_715)
t_717 = self.n_Conv_155(t_716)
t_718 = F.relu(t_717)
t_718_padded = F.pad(t_718, [1, 1, 1, 1], value=0)
t_719 = self.n_Conv_156(t_718_padded)
t_720 = F.relu(t_719)
t_721 = self.n_Conv_157(t_720)
t_722 = torch.add(t_721, t_716)
t_723 = F.relu(t_722)
t_724 = self.n_Conv_158(t_723)
t_725 = self.n_Conv_159(t_723)
t_726 = F.relu(t_725)
t_726_padded = F.pad(t_726, [0, 1, 0, 1], value=0)
t_727 = self.n_Conv_160(t_726_padded)
t_728 = F.relu(t_727)
t_729 = self.n_Conv_161(t_728)
t_730 = torch.add(t_729, t_724)
t_731 = F.relu(t_730)
t_732 = self.n_Conv_162(t_731)
t_733 = F.relu(t_732)
t_733_padded = F.pad(t_733, [1, 1, 1, 1], value=0)
t_734 = self.n_Conv_163(t_733_padded)
t_735 = F.relu(t_734)
t_736 = self.n_Conv_164(t_735)
t_737 = torch.add(t_736, t_731)
t_738 = F.relu(t_737)
t_739 = self.n_Conv_165(t_738)
t_740 = F.relu(t_739)
t_740_padded = F.pad(t_740, [1, 1, 1, 1], value=0)
t_741 = self.n_Conv_166(t_740_padded)
t_742 = F.relu(t_741)
t_743 = self.n_Conv_167(t_742)
t_744 = torch.add(t_743, t_738)
t_745 = F.relu(t_744)
t_746 = self.n_Conv_168(t_745)
t_747 = self.n_Conv_169(t_745)
t_748 = F.relu(t_747)
t_748_padded = F.pad(t_748, [0, 1, 0, 1], value=0)
t_749 = self.n_Conv_170(t_748_padded)
t_750 = F.relu(t_749)
t_751 = self.n_Conv_171(t_750)
t_752 = torch.add(t_751, t_746)
t_753 = F.relu(t_752)
t_754 = self.n_Conv_172(t_753)
t_755 = F.relu(t_754)
t_755_padded = F.pad(t_755, [1, 1, 1, 1], value=0)
t_756 = self.n_Conv_173(t_755_padded)
t_757 = F.relu(t_756)
t_758 = self.n_Conv_174(t_757)
t_759 = torch.add(t_758, t_753)
t_760 = F.relu(t_759)
t_761 = self.n_Conv_175(t_760)
t_762 = F.relu(t_761)
t_762_padded = F.pad(t_762, [1, 1, 1, 1], value=0)
t_763 = self.n_Conv_176(t_762_padded)
t_764 = F.relu(t_763)
t_765 = self.n_Conv_177(t_764)
t_766 = torch.add(t_765, t_760)
t_767 = F.relu(t_766)
t_768 = self.n_Conv_178(t_767)
t_769 = F.avg_pool2d(t_768, kernel_size=t_768.shape[-2:])
t_770 = torch.squeeze(t_769, 3)
t_770 = torch.squeeze(t_770, 2)
t_771 = torch.sigmoid(t_770)
return t_771
def load_state_dict(self, state_dict, **kwargs):
self.tags = state_dict.get('tags', [])
super(DeepDanbooruModel, self).load_state_dict({k: v for k, v in state_dict.items() if k != 'tags'})

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@ -55,7 +55,7 @@ parser.add_argument("--ldsr-models-path", type=str, help="Path to directory with
parser.add_argument("--clip-models-path", type=str, help="Path to directory with CLIP model file(s).", default=None)
parser.add_argument("--xformers", action='store_true', help="enable xformers for cross attention layers")
parser.add_argument("--force-enable-xformers", action='store_true', help="enable xformers for cross attention layers regardless of whether the checking code thinks you can run it; do not make bug reports if this fails to work")
parser.add_argument("--deepdanbooru", action='store_true', help="enable deepdanbooru interrogator")
parser.add_argument("--deepdanbooru", action='store_true', help="does not do anything")
parser.add_argument("--opt-split-attention", action='store_true', help="force-enables Doggettx's cross-attention layer optimization. By default, it's on for torch cuda.")
parser.add_argument("--opt-split-attention-invokeai", action='store_true', help="force-enables InvokeAI's cross-attention layer optimization. By default, it's on when cuda is unavailable.")
parser.add_argument("--opt-split-attention-v1", action='store_true', help="enable older version of split attention optimization that does not consume all the VRAM it can find")

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@ -6,12 +6,10 @@ import sys
import tqdm
import time
from modules import shared, images
from modules import shared, images, deepbooru
from modules.paths import models_path
from modules.shared import opts, cmd_opts
from modules.textual_inversion import autocrop
if cmd_opts.deepdanbooru:
import modules.deepbooru as deepbooru
def preprocess(process_src, process_dst, process_width, process_height, preprocess_txt_action, process_flip, process_split, process_caption, process_caption_deepbooru=False, split_threshold=0.5, overlap_ratio=0.2, process_focal_crop=False, process_focal_crop_face_weight=0.9, process_focal_crop_entropy_weight=0.3, process_focal_crop_edges_weight=0.5, process_focal_crop_debug=False):
@ -20,9 +18,7 @@ def preprocess(process_src, process_dst, process_width, process_height, preproce
shared.interrogator.load()
if process_caption_deepbooru:
db_opts = deepbooru.create_deepbooru_opts()
db_opts[deepbooru.OPT_INCLUDE_RANKS] = False
deepbooru.create_deepbooru_process(opts.interrogate_deepbooru_score_threshold, db_opts)
deepbooru.model.start()
preprocess_work(process_src, process_dst, process_width, process_height, preprocess_txt_action, process_flip, process_split, process_caption, process_caption_deepbooru, split_threshold, overlap_ratio, process_focal_crop, process_focal_crop_face_weight, process_focal_crop_entropy_weight, process_focal_crop_edges_weight, process_focal_crop_debug)
@ -32,7 +28,7 @@ def preprocess(process_src, process_dst, process_width, process_height, preproce
shared.interrogator.send_blip_to_ram()
if process_caption_deepbooru:
deepbooru.release_process()
deepbooru.model.stop()
def listfiles(dirname):
@ -58,7 +54,7 @@ def save_pic_with_caption(image, index, params: PreprocessParams, existing_capti
if params.process_caption_deepbooru:
if len(caption) > 0:
caption += ", "
caption += deepbooru.get_tags_from_process(image)
caption += deepbooru.model.tag_multi(image)
filename_part = params.src
filename_part = os.path.splitext(filename_part)[0]

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@ -19,14 +19,11 @@ import numpy as np
from PIL import Image, PngImagePlugin
from modules import sd_hijack, sd_models, localization, script_callbacks, ui_extensions
from modules import sd_hijack, sd_models, localization, script_callbacks, ui_extensions, deepbooru
from modules.paths import script_path
from modules.shared import opts, cmd_opts, restricted_opts
if cmd_opts.deepdanbooru:
from modules.deepbooru import get_deepbooru_tags
import modules.codeformer_model
import modules.generation_parameters_copypaste as parameters_copypaste
import modules.gfpgan_model
@ -352,7 +349,7 @@ def interrogate(image):
def interrogate_deepbooru(image):
prompt = get_deepbooru_tags(image)
prompt = deepbooru.model.tag(image)
return gr_show(True) if prompt is None else prompt