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run_gradio_demo.py
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run_gradio_demo.py
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import cv2
import einops
import numpy as np
import torch
import random
import gradio as gr
import os
import albumentations as A
from PIL import Image
import torchvision.transforms as T
from datasets.data_utils import *
from cldm.model import create_model, load_state_dict
from cldm.ddim_hacked import DDIMSampler
from omegaconf import OmegaConf
from cldm.hack import disable_verbosity, enable_sliced_attention
cv2.setNumThreads(0)
cv2.ocl.setUseOpenCL(False)
save_memory = False
disable_verbosity()
if save_memory:
enable_sliced_attention()
config = OmegaConf.load('./configs/demo.yaml')
model_ckpt = config.pretrained_model
model_config = config.config_file
use_interactive_seg = 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)
if use_interactive_seg:
from iseg.coarse_mask_refine_util import BaselineModel
model_path = './iseg/coarse_mask_refine.pth'
iseg_model = BaselineModel().eval()
weights = torch.load(model_path , map_location='cpu')['state_dict']
iseg_model.load_state_dict(weights, strict= True)
def process_image_mask(image_np, mask_np):
img = torch.from_numpy(image_np.transpose((2, 0, 1)))
img = img.float().div(255).unsqueeze(0)
mask = torch.from_numpy(mask_np).float().unsqueeze(0).unsqueeze(0)
pred = iseg_model(img, mask)['instances'][0,0].detach().numpy() > 0.5
return pred.astype(np.uint8)
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 = 3 # 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, :, :]
tar_image[y1+m :y2-m, x1+m:x2-m, :] = pred[m:-m, m:-m]
return tar_image
def inference_single_image(ref_image,
ref_mask,
tar_image,
tar_mask,
strength,
ddim_steps,
scale,
seed,
enable_shape_control,
):
raw_background = tar_image.copy()
item = process_pairs(ref_image, ref_mask, tar_image, tar_mask, enable_shape_control = enable_shape_control)
ref = item['ref']
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()
H,W = 512,512
cond = {"c_concat": [control], "c_crossattn": [model.get_learned_conditioning( clip_input )]}
un_cond = {"c_concat": [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)
model.control_scales = ([strength] * 13)
samples, _ = ddim_sampler.sample(ddim_steps, num_samples,
shape, cond, verbose=False, eta=0,
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()
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']
tar_image = crop_back(pred, tar_image, sizes, tar_box_yyxx_crop)
# keep background unchanged
y1,y2,x1,x2 = item['tar_box_yyxx']
raw_background[y1:y2, x1:x2, :] = tar_image[y1:y2, x1:x2, :]
return raw_background
def process_pairs(ref_image, ref_mask, tar_image, tar_mask, max_ratio = 0.8, enable_shape_control = False):
# ========= 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(11, 15) / 10 #11,13
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.astype(np.uint8), (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.astype(np.uint8), (224,224) ).astype(np.uint8)
ref_mask = ref_mask_3[:,:,0]
# collage aug
masked_ref_image_compose, ref_mask_compose = masked_ref_image, ref_mask
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]) #1.1 1.3
tar_box_yyxx_full = tar_box_yyxx
# crop
tar_box_yyxx_crop = expand_bbox(tar_image, tar_box_yyxx, ratio=[1.3, 3.0])
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,:]
cropped_tar_mask = tar_mask[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.astype(np.uint8), (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
if enable_shape_control:
collage_mask = np.stack([cropped_tar_mask,cropped_tar_mask,cropped_tar_mask],-1)
# 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 = 2, 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.astype(np.uint8), (512,512)).astype(np.float32)
collage = cv2.resize(collage.astype(np.uint8), (512,512)).astype(np.float32)
collage_mask = cv2.resize(collage_mask.astype(np.uint8), (512,512), interpolation = cv2.INTER_NEAREST).astype(np.float32)
collage_mask[collage_mask == 2] = -1
masked_ref_image = masked_ref_image / 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.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 ),
tar_box_yyxx=np.array(tar_box_yyxx_full),
)
return item
ref_dir='./examples/Gradio/FG'
image_dir='./examples/Gradio/BG'
ref_list=[os.path.join(ref_dir,file) for file in os.listdir(ref_dir) if '.jpg' in file or '.png' in file or '.jpeg' in file ]
ref_list.sort()
image_list=[os.path.join(image_dir,file) for file in os.listdir(image_dir) if '.jpg' in file or '.png' in file or '.jpeg' in file]
image_list.sort()
def mask_image(image, mask):
blanc = np.ones_like(image) * 255
mask = np.stack([mask,mask,mask],-1) / 255
masked_image = mask * ( 0.5 * blanc + 0.5 * image) + (1-mask) * image
return masked_image.astype(np.uint8)
def run_local(base,
ref,
*args):
image = base["image"].convert("RGB")
mask = base["mask"].convert("L")
ref_image = ref["image"].convert("RGB")
ref_mask = ref["mask"].convert("L")
image = np.asarray(image)
mask = np.asarray(mask)
mask = np.where(mask > 128, 1, 0).astype(np.uint8)
ref_image = np.asarray(ref_image)
ref_mask = np.asarray(ref_mask)
ref_mask = np.where(ref_mask > 128, 1, 0).astype(np.uint8)
if ref_mask.sum() == 0:
raise gr.Error('No mask for the reference image.')
if mask.sum() == 0:
raise gr.Error('No mask for the background image.')
if reference_mask_refine:
ref_mask = process_image_mask(ref_image, ref_mask)
synthesis = inference_single_image(ref_image.copy(), ref_mask.copy(), image.copy(), mask.copy(), *args)
synthesis = torch.from_numpy(synthesis).permute(2, 0, 1)
synthesis = synthesis.permute(1, 2, 0).numpy()
return [synthesis]
with gr.Blocks() as demo:
with gr.Column():
gr.Markdown("# Play with AnyDoor to Teleport your Target Objects! ")
with gr.Row():
baseline_gallery = gr.Gallery(label='Output', show_label=True, elem_id="gallery", columns=1, height=768)
with gr.Accordion("Advanced Option", open=True):
num_samples = 1
strength = gr.Slider(label="Control Strength", minimum=0.0, maximum=2.0, value=1.0, step=0.01)
ddim_steps = gr.Slider(label="Steps", minimum=1, maximum=100, value=30, step=1)
scale = gr.Slider(label="Guidance Scale", minimum=0.1, maximum=30.0, value=4.5, step=0.1)
seed = gr.Slider(label="Seed", minimum=-1, maximum=999999999, step=1, value=-1)
reference_mask_refine = gr.Checkbox(label='Reference Mask Refine', value=False, interactive = True)
enable_shape_control = gr.Checkbox(label='Enable Shape Control', value=False, interactive = True)
gr.Markdown("### Guidelines")
gr.Markdown(" Higher guidance-scale makes higher fidelity, while lower one makes more harmonized blending.")
gr.Markdown(" Users should annotate the mask of the target object, too coarse mask would lead to bad generation.\
Reference Mask Refine provides a segmentation model to refine the coarse mask. ")
gr.Markdown(" Enable shape control means the generation results would consider user-drawn masks to control the shape & pose; otherwise it \
considers the location and size to adjust automatically.")
gr.Markdown("# Upload / Select Images for the Background (left) and Reference Object (right)")
gr.Markdown("### You could draw coarse masks on the background to indicate the desired location and shape.")
gr.Markdown("### <u>Do not forget</u> to annotate the target object on the reference image.")
with gr.Row():
base = gr.Image(label="Background", source="upload", tool="sketch", type="pil", height=512, brush_color='#FFFFFF', mask_opacity=0.5)
ref = gr.Image(label="Reference", source="upload", tool="sketch", type="pil", height=512, brush_color='#FFFFFF', mask_opacity=0.5)
run_local_button = gr.Button(label="Generate", value="Run")
with gr.Row():
with gr.Column():
gr.Examples(image_list, inputs=[base],label="Examples - Background Image",examples_per_page=16)
with gr.Column():
gr.Examples(ref_list, inputs=[ref],label="Examples - Reference Object",examples_per_page=16)
run_local_button.click(fn=run_local,
inputs=[base,
ref,
strength,
ddim_steps,
scale,
seed,
enable_shape_control,
],
outputs=[baseline_gallery]
)
demo.launch(server_name="0.0.0.0")