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run_inference.py
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run_inference.py
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import cv2
import einops
import numpy as np
import torch
import random
from pytorch_lightning import seed_everything
from cldm.model import create_model, load_state_dict
from cldm.ddim_hacked import DDIMSampler
from cldm.hack import disable_verbosity, enable_sliced_attention
from datasets.data_utils import *
cv2.setNumThreads(0)
cv2.ocl.setUseOpenCL(False)
import albumentations as A
from omegaconf import OmegaConf
from PIL import Image
save_memory = False
disable_verbosity()
if save_memory:
enable_sliced_attention()
config = OmegaConf.load('./configs/inference.yaml')
model_ckpt = config.pretrained_model
model_config = config.config_file
model = create_model(model_config ).cpu()
model.load_state_dict(load_state_dict(model_ckpt, location='cuda'))
model = model.cuda()
ddim_sampler = DDIMSampler(model)
def aug_data_mask(image, mask):
transform = A.Compose([
A.HorizontalFlip(p=0.5),
A.RandomBrightnessContrast(p=0.5),
])
transformed = transform(image=image.astype(np.uint8), mask = mask)
transformed_image = transformed["image"]
transformed_mask = transformed["mask"]
return transformed_image, transformed_mask
def process_pairs(ref_image, ref_mask, tar_image, tar_mask):
# ========= Reference ===========
# ref expand
ref_box_yyxx = get_bbox_from_mask(ref_mask)
# ref filter mask
ref_mask_3 = np.stack([ref_mask,ref_mask,ref_mask],-1)
masked_ref_image = ref_image * ref_mask_3 + np.ones_like(ref_image) * 255 * (1-ref_mask_3)
y1,y2,x1,x2 = ref_box_yyxx
masked_ref_image = masked_ref_image[y1:y2,x1:x2,:]
ref_mask = ref_mask[y1:y2,x1:x2]
ratio = np.random.randint(12, 13) / 10
masked_ref_image, ref_mask = expand_image_mask(masked_ref_image, ref_mask, ratio=ratio)
ref_mask_3 = np.stack([ref_mask,ref_mask,ref_mask],-1)
# to square and resize
masked_ref_image = pad_to_square(masked_ref_image, pad_value = 255, random = False)
masked_ref_image = cv2.resize(masked_ref_image, (224,224) ).astype(np.uint8)
ref_mask_3 = pad_to_square(ref_mask_3 * 255, pad_value = 0, random = False)
ref_mask_3 = cv2.resize(ref_mask_3, (224,224) ).astype(np.uint8)
ref_mask = ref_mask_3[:,:,0]
# ref aug
masked_ref_image_aug = masked_ref_image #aug_data(masked_ref_image)
# collage aug
masked_ref_image_compose, ref_mask_compose = masked_ref_image, ref_mask #aug_data_mask(masked_ref_image, ref_mask)
masked_ref_image_aug = masked_ref_image_compose.copy()
ref_mask_3 = np.stack([ref_mask_compose,ref_mask_compose,ref_mask_compose],-1)
ref_image_collage = sobel(masked_ref_image_compose, ref_mask_compose/255)
# ========= Target ===========
tar_box_yyxx = get_bbox_from_mask(tar_mask)
tar_box_yyxx = expand_bbox(tar_mask, tar_box_yyxx, ratio=[1.1,1.2])
# crop
tar_box_yyxx_crop = expand_bbox(tar_image, tar_box_yyxx, ratio=[1.5, 3]) #1.2 1.6
tar_box_yyxx_crop = box2squre(tar_image, tar_box_yyxx_crop) # crop box
y1,y2,x1,x2 = tar_box_yyxx_crop
cropped_target_image = tar_image[y1:y2,x1:x2,:]
tar_box_yyxx = box_in_box(tar_box_yyxx, tar_box_yyxx_crop)
y1,y2,x1,x2 = tar_box_yyxx
# collage
ref_image_collage = cv2.resize(ref_image_collage, (x2-x1, y2-y1))
ref_mask_compose = cv2.resize(ref_mask_compose.astype(np.uint8), (x2-x1, y2-y1))
ref_mask_compose = (ref_mask_compose > 128).astype(np.uint8)
collage = cropped_target_image.copy()
collage[y1:y2,x1:x2,:] = ref_image_collage
collage_mask = cropped_target_image.copy() * 0.0
collage_mask[y1:y2,x1:x2,:] = 1.0
# the size before pad
H1, W1 = collage.shape[0], collage.shape[1]
cropped_target_image = pad_to_square(cropped_target_image, pad_value = 0, random = False).astype(np.uint8)
collage = pad_to_square(collage, pad_value = 0, random = False).astype(np.uint8)
collage_mask = pad_to_square(collage_mask, pad_value = -1, random = False).astype(np.uint8)
# the size after pad
H2, W2 = collage.shape[0], collage.shape[1]
cropped_target_image = cv2.resize(cropped_target_image, (512,512)).astype(np.float32)
collage = cv2.resize(collage, (512,512)).astype(np.float32)
collage_mask = (cv2.resize(collage_mask, (512,512)).astype(np.float32) > 0.5).astype(np.float32)
masked_ref_image_aug = masked_ref_image_aug / 255
cropped_target_image = cropped_target_image / 127.5 - 1.0
collage = collage / 127.5 - 1.0
collage = np.concatenate([collage, collage_mask[:,:,:1] ] , -1)
item = dict(ref=masked_ref_image_aug.copy(), jpg=cropped_target_image.copy(), hint=collage.copy(), extra_sizes=np.array([H1, W1, H2, W2]), tar_box_yyxx_crop=np.array( tar_box_yyxx_crop ) )
return item
def crop_back( pred, tar_image, extra_sizes, tar_box_yyxx_crop):
H1, W1, H2, W2 = extra_sizes
y1,y2,x1,x2 = tar_box_yyxx_crop
pred = cv2.resize(pred, (W2, H2))
m = 5 # maigin_pixel
if W1 == H1:
tar_image[y1+m :y2-m, x1+m:x2-m, :] = pred[m:-m, m:-m]
return tar_image
if W1 < W2:
pad1 = int((W2 - W1) / 2)
pad2 = W2 - W1 - pad1
pred = pred[:,pad1: -pad2, :]
else:
pad1 = int((H2 - H1) / 2)
pad2 = H2 - H1 - pad1
pred = pred[pad1: -pad2, :, :]
gen_image = tar_image.copy()
gen_image[y1+m :y2-m, x1+m:x2-m, :] = pred[m:-m, m:-m]
return gen_image
def inference_single_image(ref_image, ref_mask, tar_image, tar_mask, guidance_scale = 5.0):
item = process_pairs(ref_image, ref_mask, tar_image, tar_mask)
ref = item['ref'] * 255
tar = item['jpg'] * 127.5 + 127.5
hint = item['hint'] * 127.5 + 127.5
hint_image = hint[:,:,:-1]
hint_mask = item['hint'][:,:,-1] * 255
hint_mask = np.stack([hint_mask,hint_mask,hint_mask],-1)
ref = cv2.resize(ref.astype(np.uint8), (512,512))
seed = random.randint(0, 65535)
if save_memory:
model.low_vram_shift(is_diffusing=False)
ref = item['ref']
tar = item['jpg']
hint = item['hint']
num_samples = 1
control = torch.from_numpy(hint.copy()).float().cuda()
control = torch.stack([control for _ in range(num_samples)], dim=0)
control = einops.rearrange(control, 'b h w c -> b c h w').clone()
clip_input = torch.from_numpy(ref.copy()).float().cuda()
clip_input = torch.stack([clip_input for _ in range(num_samples)], dim=0)
clip_input = einops.rearrange(clip_input, 'b h w c -> b c h w').clone()
guess_mode = False
H,W = 512,512
cond = {"c_concat": [control], "c_crossattn": [model.get_learned_conditioning( clip_input )]}
un_cond = {"c_concat": None if guess_mode else [control], "c_crossattn": [model.get_learned_conditioning([torch.zeros((1,3,224,224))] * num_samples)]}
shape = (4, H // 8, W // 8)
if save_memory:
model.low_vram_shift(is_diffusing=True)
# ====
num_samples = 1 #gr.Slider(label="Images", minimum=1, maximum=12, value=1, step=1)
image_resolution = 512 #gr.Slider(label="Image Resolution", minimum=256, maximum=768, value=512, step=64)
strength = 1 #gr.Slider(label="Control Strength", minimum=0.0, maximum=2.0, value=1.0, step=0.01)
guess_mode = False #gr.Checkbox(label='Guess Mode', value=False)
#detect_resolution = 512 #gr.Slider(label="Segmentation Resolution", minimum=128, maximum=1024, value=512, step=1)
ddim_steps = 50 #gr.Slider(label="Steps", minimum=1, maximum=100, value=20, step=1)
scale = guidance_scale #gr.Slider(label="Guidance Scale", minimum=0.1, maximum=30.0, value=9.0, step=0.1)
seed = -1 #gr.Slider(label="Seed", minimum=-1, maximum=2147483647, step=1, randomize=True)
eta = 0.0 #gr.Number(label="eta (DDIM)", value=0.0)
model.control_scales = [strength * (0.825 ** float(12 - i)) for i in range(13)] if guess_mode else ([strength] * 13) # Magic number. IDK why. Perhaps because 0.825**12<0.01 but 0.826**12>0.01
samples, intermediates = ddim_sampler.sample(ddim_steps, num_samples,
shape, cond, verbose=False, eta=eta,
unconditional_guidance_scale=scale,
unconditional_conditioning=un_cond)
if save_memory:
model.low_vram_shift(is_diffusing=False)
x_samples = model.decode_first_stage(samples)
x_samples = (einops.rearrange(x_samples, 'b c h w -> b h w c') * 127.5 + 127.5).cpu().numpy()#.clip(0, 255).astype(np.uint8)
result = x_samples[0][:,:,::-1]
result = np.clip(result,0,255)
pred = x_samples[0]
pred = np.clip(pred,0,255)[1:,:,:]
sizes = item['extra_sizes']
tar_box_yyxx_crop = item['tar_box_yyxx_crop']
gen_image = crop_back(pred, tar_image, sizes, tar_box_yyxx_crop)
return gen_image
if __name__ == '__main__':
'''
# ==== Example for inferring a single image ===
reference_image_path = './examples/TestDreamBooth/FG/01.png'
bg_image_path = './examples/TestDreamBooth/BG/000000309203_GT.png'
bg_mask_path = './examples/TestDreamBooth/BG/000000309203_mask.png'
save_path = './examples/TestDreamBooth/GEN/gen_res.png'
# reference image + reference mask
# You could use the demo of SAM to extract RGB-A image with masks
# https://segment-anything.com/demo
image = cv2.imread( reference_image_path, cv2.IMREAD_UNCHANGED)
mask = (image[:,:,-1] > 128).astype(np.uint8)
image = image[:,:,:-1]
image = cv2.cvtColor(image.copy(), cv2.COLOR_BGR2RGB)
ref_image = image
ref_mask = mask
# background image
back_image = cv2.imread(bg_image_path).astype(np.uint8)
back_image = cv2.cvtColor(back_image, cv2.COLOR_BGR2RGB)
# background mask
tar_mask = cv2.imread(bg_mask_path)[:,:,0] > 128
tar_mask = tar_mask.astype(np.uint8)
gen_image = inference_single_image(ref_image, ref_mask, back_image.copy(), tar_mask)
h,w = back_image.shape[0], back_image.shape[0]
ref_image = cv2.resize(ref_image, (w,h))
vis_image = cv2.hconcat([ref_image, back_image, gen_image])
cv2.imwrite(save_path, vis_image [:,:,::-1])
'''
#'''
# ==== Example for inferring VITON-HD Test dataset ===
from omegaconf import OmegaConf
import os
DConf = OmegaConf.load('./configs/datasets.yaml')
save_dir = './VITONGEN'
if not os.path.exists(save_dir):
os.mkdir(save_dir)
test_dir = DConf.Test.VitonHDTest.image_dir
image_names = os.listdir(test_dir)
for image_name in image_names:
ref_image_path = os.path.join(test_dir, image_name)
tar_image_path = ref_image_path.replace('/cloth/', '/image/')
ref_mask_path = ref_image_path.replace('/cloth/','/cloth-mask/')
tar_mask_path = ref_image_path.replace('/cloth/', '/image-parse-v3/').replace('.jpg','.png')
ref_image = cv2.imread(ref_image_path)
ref_image = cv2.cvtColor(ref_image, cv2.COLOR_BGR2RGB)
gt_image = cv2.imread(tar_image_path)
gt_image = cv2.cvtColor(gt_image, cv2.COLOR_BGR2RGB)
ref_mask = (cv2.imread(ref_mask_path) > 128).astype(np.uint8)[:,:,0]
tar_mask = Image.open(tar_mask_path ).convert('P')
tar_mask= np.array(tar_mask)
tar_mask = tar_mask == 5
gen_image = inference_single_image(ref_image, ref_mask, gt_image.copy(), tar_mask)
gen_path = os.path.join(save_dir, image_name)
vis_image = cv2.hconcat([ref_image, gt_image, gen_image])
cv2.imwrite(gen_path, vis_image[:,:,::-1])
#'''