import gradio as gr
from models import models
from PIL import Image
import requests
import uuid
import io
import base64
import cv2
import numpy
from transforms import RGBTransform
import random
#import torch
#from diffusers import AutoPipelineForImage2Image
#from diffusers.utils import make_image_grid, load_image
import uuid
base_url=f'https://omnibus-top-20-img-img-tint.hf.space/file='
loaded_model=[]
for i,model in enumerate(models):
try:
loaded_model.append(gr.load(f'models/{model}'))
except Exception as e:
print(e)
pass
print (loaded_model)
#pipeline = AutoPipelineForImage2Image.from_pretrained("runwayml/stable-diffusion-v1-5", safety_checker=None, variant="fp16", use_safetensors=True).to("cpu")
#pipeline.unet = torch.compile(pipeline.unet)
grid_wide=10
def get_concat_h_cut(in1, in2):
print(in1)
print(in2)
im1=Image.open(in1)
im2=Image.open(in2)
#im1=in1
#im2=in2
dst = Image.new('RGB', (im1.width + im2.width,
min(im1.height, im2.height)))
dst.paste(im1, (0, 0))
dst.paste(im2, (im1.width, 0))
return dst
def get_concat_v_cut(in1, in2):
print(in1)
print(in2)
im1=Image.open(in1)
im2=Image.open(in2)
#im1=in1
#im2=in2
dst = Image.new(
'RGB', (min(im1.width, im2.width), im1.height + im2.height))
dst.paste(im1, (0, 0))
dst.paste(im2, (0, im1.height))
return dst
def load_model(model_drop):
pipeline = AutoPipelineForImage2Image.from_pretrained("runwayml/stable-diffusion-v1-5", torch_dtype=torch.float32, use_safetensors=True)
def run_dif_color(out_prompt,im_path,model_drop,tint,im_height,im_width):
p_seed=""
out_box=[]
out_html=""
im_height=int(im_height)
im_width=int(im_width)
#for i,ea in enumerate(im_path.root):
cnt = 0
for hh in range(int(im_height/grid_wide)):
for b in range(int(im_width/grid_wide)):
uid=uuid.uuid4()
print(f'root::{im_path.root[cnt]}')
#print(f'ea:: {ea}')
#print(f'impath:: {im_path.path}')
url = base_url+im_path.root[cnt].image.path
print(url)
myimg = cv2.imread(im_path.root[cnt].image.path)
avg_color_per_row = numpy.average(myimg, axis=0)
avg_color = numpy.average(avg_color_per_row, axis=0)
r,g,b= avg_color
color = (int(r),int(g),int(b))
print (color)
rand=random.randint(1,500)
for i in range(rand):
p_seed+=" "
try:
#model=gr.load(f'models/{model[int(model_drop)]}')
model=loaded_model[int(model_drop)]
out_img=model(out_prompt+p_seed)
#print(out_img)
raw=Image.open(out_img)
raw=raw.convert('RGB')
colorize = RGBTransform().mix_with(color,factor=float(tint)).applied_to(raw)
print (colorize)
colorize.save(f'tmp-{uid}.png')
#out_box.append(f'tmp-{uid}.png')
out_box.append(f'tmp-{uid}.png')
print(f'out_box:: {out_box}')
if out_box:
if len(out_box)>1:
#im_roll = get_concat_v_cut(f'{out_box[0]}',f'{out_box[1]}')
#im_roll.save(f'comb-{uid}-tmp.png')
for i in range(2,len(out_box)):
im_roll = get_concat_h_cut(f'comb-{uid}-tmp.png',f'{out_box[i]}')
im_roll.save(f'comb-{uid}-tmp.png')
out = f'comb-{uid}-tmp.png'
else:
tmp_im = Image.open(out_box[0])
#tmp_im = out_box[0]
tmp_im.save(f'comb-{uid}-tmp.png')
out = f'comb-{uid}-tmp.png'
yield out,out_html
except Exception as e:
print(e)
out_html=str(e)
pass
cnt+=1
yield out,out_html
def run_dif(prompt,im_path,model_drop,cnt,strength,guidance,infer,im_height,im_width):
uid=uuid.uuid4()
print(f'im_path:: {im_path}')
print(f'im_path0:: {im_path.root[0]}')
print(f'im_path0.image.path:: {im_path.root[0].image.path}')
out_box=[]
im_height=int(im_height)
im_width=int(im_width)
for i,ea in enumerate(im_path.root):
for hh in range(int(im_height/grid_wide)):
for b in range(int(im_width/grid_wide)):
print(f'root::{im_path.root[i]}')
#print(f'ea:: {ea}')
#print(f'impath:: {im_path.path}')
url = base_url+im_path.root[i].image.path
print(url)
#init_image = load_image(url)
init_image=load_image(url)
#prompt = "Astronaut in a jungle, cold color palette, muted colors, detailed, 8k"
# pass prompt and image to pipeline
#image = pipeline(prompt, image=init_image, strength=0.8,guidance_scale=8.0,negative_prompt=negative_prompt,num_inference_steps=50).images[0]
image = pipeline(prompt, image=init_image, strength=float(strength),guidance_scale=float(guidance),num_inference_steps=int(infer)).images[0]
#make_image_grid([init_image, image], rows=1, cols=2)
out_box.append(image)
if out_box:
if len(out_box)>1:
im_roll = get_concat_v_cut(f'{out_box[0]}',f'{out_box[1]}')
im_roll.save(f'comb-{uid}-tmp.png')
for i in range(2,len(out_box)):
im_roll = get_concat_v_cut(f'comb-{uid}-tmp.png',f'{out_box[i]}')
im_roll.save(f'comb-{uid}-tmp.png')
out = f'comb-{uid}-tmp.png'
else:
#tmp_im = Image.open(out_box[0])
tmp_im = out_box[0]
tmp_im.save(f'comb-{uid}-tmp.png')
out = f'comb-{uid}-tmp.png'
yield out,""
def run_dif_old(out_prompt,model_drop,cnt):
p_seed=""
out_box=[]
out_html=""
#for i,ea in enumerate(loaded_model):
for i in range(int(cnt)):
p_seed+=" "
try:
model=loaded_model[int(model_drop)]
out_img=model(out_prompt+p_seed)
print(out_img)
out_box.append(out_img)
except Exception as e:
print(e)
out_html=str(e)
pass
yield out_box,out_html
def run_dif_og(out_prompt,model_drop,cnt):
out_box=[]
out_html=""
#for i,ea in enumerate(loaded_model):
for i in range(cnt):
try:
#print (ea)
model=loaded_model[int(model_drop)]
out_img=model(out_prompt)
print(out_img)
url=f'https://omnibus-top-20.hf.space/file={out_img}'
print(url)
uid = uuid.uuid4()
#urllib.request.urlretrieve(image, 'tmp.png')
#out=Image.open('tmp.png')
r = requests.get(url, stream=True)
if r.status_code == 200:
img_buffer = io.BytesIO(r.content)
print (f'bytes:: {io.BytesIO(r.content)}')
str_equivalent_image = base64.b64encode(img_buffer.getvalue()).decode()
img_tag = ""
out_html+=f"