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请问flare图像如何与背景图像合并成一个人造的退化图像? #1
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import torch
import torch.utils.data as data
import torchvision.transforms as transforms
import numpy as np
from PIL import Image
import glob
import random
import torchvision.transforms.functional as TF
from torch.distributions import Normal
import torch
import numpy as np
import torch
import torchvision.transforms as transforms
from matplotlib import pyplot as plt
class RandomGammaCorrection(object):
def __init__(self, gamma = None):
self.gamma = gamma
def __call__(self,image):
if self.gamma == None:
# more chances of selecting 0 (original image)
gammas = [0.5,1,2]
self.gamma = random.choice(gammas)
return TF.adjust_gamma(image, self.gamma, gain=1)
elif isinstance(self.gamma,tuple):
gamma=random.uniform(*self.gamma)
return TF.adjust_gamma(image, gamma, gain=1)
elif self.gamma == 0:
return image
else:
return TF.adjust_gamma(image,self.gamma,gain=1)
def remove_background(image):
#the input of the image is PIL.Image form with [H,W,C]
image=np.float32(np.array(image))
_EPS=1e-7
rgb_max=np.max(image,(0,1))
rgb_min=np.min(image,(0,1))
image=(image-rgb_min)*rgb_max/(rgb_max-rgb_min+_EPS)
image=torch.from_numpy(image)
return image
class Flare_Image_Loader(data.Dataset):
def __init__(self, image_path ,transform_base=None,transform_flare=None,mask_type=None):
self.ext = ['png','jpeg','jpg','bmp','tif']
self.data_list=[]
[self.data_list.extend(glob.glob(image_path + '/*.' + e)) for e in self.ext]
self.flare_dict={}
self.flare_list=[]
self.flare_name_list=[]
self.reflective_flag=False
self.reflective_dict={}
self.reflective_list=[]
self.reflective_name_list=[]
self.mask_type=mask_type #It is a str which may be None,"luminance" or "color"
self.transform_base=transform_base
self.transform_flare=transform_flare
print("Base Image Loaded with examples:", len(self.data_list))
def __getitem__(self, index):
# load base image
img_path=self.data_list[index]
base_img= Image.open(img_path)
gamma=np.random.uniform(1.8,2.2)
to_tensor=transforms.ToTensor()
adjust_gamma=RandomGammaCorrection(gamma)
adjust_gamma_reverse=RandomGammaCorrection(1/gamma)
color_jitter=transforms.ColorJitter(brightness=(0.8,3),hue=0.0)
if self.transform_base is not None:
base_img=to_tensor(base_img)
base_img=adjust_gamma(base_img)
base_img=self.transform_base(base_img)
else:
base_img=to_tensor(base_img)
base_img=adjust_gamma(base_img)
sigma_chi=0.01*np.random.chisquare(df=1)
base_img=Normal(base_img,sigma_chi).sample()
gain=np.random.uniform(0.5,1.2)
flare_DC_offset=np.random.uniform(-0.02,0.02)
base_img=gain*base_img
base_img=torch.clamp(base_img,min=0,max=1)
#load flare image
flare_path=random.choice(self.flare_list)
flare_img =Image.open(flare_path)
if self.reflective_flag:
reflective_path=random.choice(self.reflective_list)
reflective_img =Image.open(reflective_path)
flare_img=to_tensor(flare_img)
flare_img=adjust_gamma(flare_img)
if self.reflective_flag:
reflective_img=to_tensor(reflective_img)
reflective_img=adjust_gamma(reflective_img)
flare_img = torch.clamp(flare_img+reflective_img,min=0,max=1)
flare_img=remove_background(flare_img)
if self.transform_flare is not None:
flare_img=self.transform_flare(flare_img)
#change color
flare_img=color_jitter(flare_img)
#flare blur
blur_transform=transforms.GaussianBlur(21,sigma=(0.1,3.0))
flare_img=blur_transform(flare_img)
flare_img=flare_img+flare_DC_offset
flare_img=torch.clamp(flare_img,min=0,max=1)
#merge image
merge_img=flare_img+base_img
merge_img=torch.clamp(merge_img,min=0,max=1)
if self.mask_type==None:
return adjust_gamma_reverse(base_img),adjust_gamma_reverse(flare_img),adjust_gamma_reverse(merge_img),gamma
elif self.mask_type=="luminance":
#calculate mask (the mask is 3 channel)
one = torch.ones_like(base_img)
zero = torch.zeros_like(base_img)
luminance=0.3*flare_img[0]+0.59*flare_img[1]+0.11*flare_img[2]
threshold_value=0.99**gamma
flare_mask=torch.where(luminance >threshold_value, one, zero)
elif self.mask_type=="color":
one = torch.ones_like(base_img)
zero = torch.zeros_like(base_img)
threshold_value=0.99**gamma
flare_mask=torch.where(merge_img >threshold_value, one, zero)
return adjust_gamma_reverse(base_img),adjust_gamma_reverse(flare_img),adjust_gamma_reverse(merge_img),flare_mask,gamma
def __len__(self):
return len(self.data_list)
def load_scattering_flare(self,flare_name,flare_path):
flare_list=[]
[flare_list.extend(glob.glob(flare_path + '/*.' + e)) for e in self.ext]
self.flare_name_list.append(flare_name)
self.flare_dict[flare_name]=flare_list
self.flare_list.extend(flare_list)
len_flare_list=len(self.flare_dict[flare_name])
if len_flare_list == 0:
print("ERROR: scattering flare images are not loaded properly")
else:
print("Scattering Flare Image:",flare_name, " is loaded successfully with examples", str(len_flare_list))
print("Now we have",len(self.flare_list),'scattering flare images')
def load_reflective_flare(self,reflective_name,reflective_path):
self.reflective_flag=True
reflective_list=[]
[reflective_list.extend(glob.glob(reflective_path + '/*.' + e)) for e in self.ext]
self.reflective_name_list.append(reflective_name)
self.reflective_dict[reflective_name]=reflective_list
self.reflective_list.extend(reflective_list)
len_reflective_list=len(self.reflective_dict[reflective_name])
if len_reflective_list == 0:
print("ERROR: reflective flare images are not loaded properly")
else:
print("Reflective Flare Image:",reflective_name, " is loaded successfully with examples", str(len_reflective_list))
print("Now we have",len(self.reflective_list),'refelctive flare images')
transform_base=transforms.Compose([transforms.RandomCrop((512,512),pad_if_needed=True,padding_mode='reflect'),
transforms.RandomHorizontalFlip(),
transforms.RandomVerticalFlip()
])
transform_flare=transforms.Compose([transforms.RandomAffine(degrees=(0,360),scale=(0.8,1.5),translate=(300/1440,300/1440),shear=(-20,20)),
transforms.CenterCrop((512,512)),
transforms.RandomHorizontalFlip(),
transforms.RandomVerticalFlip()
])
# 加载数据集
flare_image_loader=Flare_Image_Loader('Flickr24K',transform_base,transform_flare)
flare_image_loader.load_scattering_flare('Flare7K','Flare7k/Scattering_Flare/Compound_Flare')
flare_image_loader.load_reflective_flare('Flare7K','Flare7k/Reflective_Flare')
# 选取背景图像和耀斑图像
img_index=10
test_base_img,test_flare_img,test_merge_img,flare_mask=flare_image_loader[img_index]
#展示结果
plt.imshow(test_flare_img.permute(1,2,0))
plt.show()
plt.imshow(test_merge_img.permute(1,2,0))
plt.show()
plt.imshow(test_base_img.permute(1,2,0))
plt.show() |
谢谢学长!万分感谢!!!小星星献上!!! |
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您能提供一下给定一个F和B,如何变为Isys的代码片段吗?我想给人造夜晚图像添加上flare使其更加逼真,但是我不知道具体的代码实现,希望您可以帮助到我😀谢谢!
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