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import math
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import cv2
import numpy as np
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from PIL import Image , ImageOps , ImageChops
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from modules . processing import Processed , StableDiffusionProcessingImg2Img , process_images
from modules . shared import opts , state
import modules . shared as shared
import modules . processing as processing
from modules . ui import plaintext_to_html
import modules . images as images
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import modules . scripts
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def img2img ( prompt : str , negative_prompt : str , init_img , init_img_with_mask , init_mask , mask_mode , steps : int , sampler_index : int , mask_blur : int , inpainting_fill : int , restore_faces : bool , tiling : bool , mode : int , n_iter : int , batch_size : int , cfg_scale : float , denoising_strength : float , denoising_strength_change_factor : float , seed : int , subseed : int , subseed_strength : float , seed_resize_from_h : int , seed_resize_from_w : int , height : int , width : int , resize_mode : int , upscaler_index : str , upscale_overlap : int , inpaint_full_res : bool , inpainting_mask_invert : int , * args ) :
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is_inpaint = mode == 1
is_loopback = mode == 2
is_upscale = mode == 3
if is_inpaint :
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if mask_mode == 0 :
image = init_img_with_mask [ ' image ' ]
mask = init_img_with_mask [ ' mask ' ]
alpha_mask = ImageOps . invert ( image . split ( ) [ - 1 ] ) . convert ( ' L ' ) . point ( lambda x : 255 if x > 0 else 0 , mode = ' 1 ' )
mask = ImageChops . lighter ( alpha_mask , mask . convert ( ' L ' ) ) . convert ( ' L ' )
image = image . convert ( ' RGB ' )
else :
image = init_img
mask = init_mask
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else :
image = init_img
mask = None
assert 0. < = denoising_strength < = 1. , ' can only work with strength in [0.0, 1.0] '
p = StableDiffusionProcessingImg2Img (
sd_model = shared . sd_model ,
outpath_samples = opts . outdir_samples or opts . outdir_img2img_samples ,
outpath_grids = opts . outdir_grids or opts . outdir_img2img_grids ,
prompt = prompt ,
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negative_prompt = negative_prompt ,
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seed = seed ,
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subseed = subseed ,
subseed_strength = subseed_strength ,
seed_resize_from_h = seed_resize_from_h ,
seed_resize_from_w = seed_resize_from_w ,
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sampler_index = sampler_index ,
batch_size = batch_size ,
n_iter = n_iter ,
steps = steps ,
cfg_scale = cfg_scale ,
width = width ,
height = height ,
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restore_faces = restore_faces ,
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tiling = tiling ,
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init_images = [ image ] ,
mask = mask ,
mask_blur = mask_blur ,
inpainting_fill = inpainting_fill ,
resize_mode = resize_mode ,
denoising_strength = denoising_strength ,
inpaint_full_res = inpaint_full_res ,
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inpainting_mask_invert = inpainting_mask_invert ,
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extra_generation_params = {
" Denoising strength " : denoising_strength ,
" Denoising strength change factor " : denoising_strength_change_factor
}
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)
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print ( f " \n img2img: { prompt } " , file = shared . progress_print_out )
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if is_loopback :
output_images , info = None , None
history = [ ]
initial_seed = None
initial_info = None
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state . job_count = n_iter
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do_color_correction = False
try :
from skimage import exposure
do_color_correction = True
except :
print ( " Install scikit-image to perform color correction on loopback " )
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for i in range ( n_iter ) :
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if do_color_correction and i == 0 :
correction_target = cv2 . cvtColor ( np . asarray ( init_img . copy ( ) ) , cv2 . COLOR_RGB2LAB )
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p . n_iter = 1
p . batch_size = 1
p . do_not_save_grid = True
state . job = f " Batch { i + 1 } out of { n_iter } "
processed = process_images ( p )
if initial_seed is None :
initial_seed = processed . seed
initial_info = processed . info
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init_img = processed . images [ 0 ]
if do_color_correction and correction_target is not None :
init_img = Image . fromarray ( cv2 . cvtColor ( exposure . match_histograms (
cv2 . cvtColor (
np . asarray ( init_img ) ,
cv2 . COLOR_RGB2LAB
) ,
correction_target ,
channel_axis = 2
) , cv2 . COLOR_LAB2RGB ) . astype ( " uint8 " ) )
p . init_images = [ init_img ]
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p . seed = processed . seed + 1
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p . denoising_strength = min ( max ( p . denoising_strength * denoising_strength_change_factor , 0.1 ) , 1 )
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history . append ( processed . images [ 0 ] )
grid = images . image_grid ( history , batch_size , rows = 1 )
images . save_image ( grid , p . outpath_grids , " grid " , initial_seed , prompt , opts . grid_format , info = info , short_filename = not opts . grid_extended_filename )
processed = Processed ( p , history , initial_seed , initial_info )
elif is_upscale :
initial_seed = None
initial_info = None
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upscaler = shared . sd_upscalers [ upscaler_index ]
img = upscaler . upscale ( init_img , init_img . width * 2 , init_img . height * 2 )
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processing . torch_gc ( )
grid = images . split_grid ( img , tile_w = width , tile_h = height , overlap = upscale_overlap )
p . n_iter = 1
p . do_not_save_grid = True
p . do_not_save_samples = True
work = [ ]
work_results = [ ]
for y , h , row in grid . tiles :
for tiledata in row :
work . append ( tiledata [ 2 ] )
batch_count = math . ceil ( len ( work ) / p . batch_size )
print ( f " SD upscaling will process a total of { len ( work ) } images tiled as { len ( grid . tiles [ 0 ] [ 2 ] ) } x { len ( grid . tiles ) } in a total of { batch_count } batches. " )
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state . job_count = batch_count
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for i in range ( batch_count ) :
p . init_images = work [ i * p . batch_size : ( i + 1 ) * p . batch_size ]
state . job = f " Batch { i + 1 } out of { batch_count } "
processed = process_images ( p )
if initial_seed is None :
initial_seed = processed . seed
initial_info = processed . info
p . seed = processed . seed + 1
work_results + = processed . images
image_index = 0
for y , h , row in grid . tiles :
for tiledata in row :
tiledata [ 2 ] = work_results [ image_index ] if image_index < len ( work_results ) else Image . new ( " RGB " , ( p . width , p . height ) )
image_index + = 1
combined_image = images . combine_grid ( grid )
if opts . samples_save :
images . save_image ( combined_image , p . outpath_samples , " " , initial_seed , prompt , opts . grid_format , info = initial_info )
processed = Processed ( p , [ combined_image ] , initial_seed , initial_info )
else :
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processed = modules . scripts . scripts_img2img . run ( p , * args )
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if processed is None :
processed = process_images ( p )
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shared . total_tqdm . clear ( )
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return processed . images , processed . js ( ) , plaintext_to_html ( processed . info )