LicenseGAN / utils /dataloader.py
白鹭先生
新增SwinIR模型
db5513e
raw history blame
No virus
14.2 kB
import math
from random import choice, choices, randint
import cv2
import numpy as np
from PIL import Image
from torch.utils.data.dataset import Dataset
from utils import USMSharp_npy, cvtColor, preprocess_input
from .degradations import (circular_lowpass_kernel, random_add_gaussian_noise,
random_add_poisson_noise, random_mixed_kernels)
from .transforms import augment, paired_random_crop
def cv_show(image):
image = np.array(image)
image = cv2.resize(image, (256, 128), interpolation=cv2.INTER_CUBIC)
cv2.imshow('image', image)
cv2.waitKey(0)
cv2.destroyAllWindows()
def get_new_img_size(width, height, img_min_side=600):
if width <= height:
f = float(img_min_side) / width
resized_height = int(f * height)
resized_width = int(img_min_side)
else:
f = float(img_min_side) / height
resized_width = int(f * width)
resized_height = int(img_min_side)
return resized_width, resized_height
class SRGANDataset(Dataset):
def __init__(self, train_lines, lr_shape, hr_shape):
super(SRGANDataset, self).__init__()
self.train_lines = train_lines
self.train_batches = len(train_lines)
self.lr_shape = lr_shape
self.hr_shape = hr_shape
self.scale = int(hr_shape[0]/lr_shape[0])
self.usmsharp = USMSharp_npy()
# 第一次滤波的参数
self.blur_kernel_size = 21
self.kernel_list = ['iso', 'aniso', 'generalized_iso', 'generalized_aniso', 'plateau_iso', 'plateau_aniso']
self.kernel_prob = [0.45, 0.25, 0.12, 0.03, 0.12, 0.03]
self.sinc_prob = 0.1
self.blur_sigma = [0.2, 3]
self.betag_range = [0.5, 4]
self.betap_range = [1, 2]
# 第二次滤波的参数
self.blur_kernel_size2 = 21
self.kernel_list2 = ['iso', 'aniso', 'generalized_iso', 'generalized_aniso', 'plateau_iso', 'plateau_aniso']
self.kernel_prob2 = [0.45, 0.25, 0.12, 0.03, 0.12, 0.03]
self.sinc_prob2 = 0.1
self.blur_sigma2 = [0.2, 3]
self.betag_range2 = [0.5, 4]
self.betap_range2 = [1, 2]
# 最后的sinc滤波
self.final_sinc_prob = 0.8
# 卷积核大小从7到21分布
self.kernel_range = [2 * v + 1 for v in range(3, 11)]
# 使用脉冲张量进行卷积不会产生模糊效果
self.pulse_tensor = np.zeros(shape=[21, 21], dtype='float32')
self.pulse_tensor[10, 10] = 1
# 第一次退化的参数
self.resize_prob = [0.2, 0.7, 0.1] # up, down, keep
self.resize_range = [0.15, 1.5]
self.gaussian_noise_prob = 0.5
self.noise_range = [1, 30]
self.poisson_scale_range = [0.05, 3]
self.gray_noise_prob = 0.4
self.jpeg_range = [30, 95]
# 第二次退化的参数
self.second_blur_prob = 0.8
self.resize_prob2 = [0.3, 0.4, 0.3] # up, down, keep
self.resize_range2 = [0.3, 1.2]
self.gaussian_noise_prob2= 0.5
self.noise_range2 = [1, 25]
self.poisson_scale_range2= [0.05, 2.5]
self.gray_noise_prob2 = 0.4
self.jpeg_range2 = [30, 95]
def __len__(self):
return self.train_batches
def __getitem__(self, index):
index = index % self.train_batches
image_origin = Image.open(self.train_lines[index].split()[0])
lq, gt = self.get_random_data(image_origin, self.hr_shape)
gt = np.transpose(preprocess_input(np.array(gt, dtype=np.float32), [0.5,0.5,0.5], [0.5,0.5,0.5]), [2,0,1])
lq = np.transpose(preprocess_input(np.array(lq, dtype=np.float32), [0.5,0.5,0.5], [0.5,0.5,0.5]), [2,0,1])
return lq, gt
def rand(self, a=0, b=1):
return np.random.rand()*(b-a) + a
def get_random_data(self, image, input_shape):
#------------------------------#
# 读取图像并转换成RGB图像
# cvtColor将np转Image
#------------------------------#
image = cvtColor(image)
#------------------------------#
# 获得图像的高宽与目标高宽
#------------------------------#
iw, ih = image.size
h, w = input_shape
scale = min(w/iw, h/ih)
nw = int(iw*scale)
nh = int(ih*scale)
dx = (w-nw)//2
dy = (h-nh)//2
#---------------------------------#
# 将图像多余的部分加上灰条
#---------------------------------#
image = image.resize((nw,nh), Image.BICUBIC)
new_image = Image.new('RGB', (w,h), (128,128,128))
new_image.paste(image, (dx, dy))
image = np.array(new_image, np.float32)
rotate = self.rand()<.5
if rotate:
angle = np.random.randint(-15,15)
a,b = w/2,h/2
M = cv2.getRotationMatrix2D((a,b),angle,1)
image = cv2.warpAffine(np.array(image), M, (w,h), borderValue=[128,128,128])
# ------------------------ 生成卷积核以进行第一次退化处理 ------------------------ #
kernel_size = choice(self.kernel_range)
if np.random.uniform() < self.sinc_prob:
# 此sinc过滤器设置适用于[7,21]范围内的内核
if kernel_size < 13:
omega_c = np.random.uniform(np.pi / 3, np.pi)
else:
omega_c = np.random.uniform(np.pi / 5, np.pi)
kernel = circular_lowpass_kernel(omega_c, kernel_size, pad_to=False)
else:
kernel = random_mixed_kernels(
self.kernel_list,
self.kernel_prob,
kernel_size,
self.blur_sigma,
self.blur_sigma, [-math.pi, math.pi],
self.betag_range,
self.betap_range,
noise_range=None)
# pad kernel
pad_size = (21 - kernel_size) // 2
kernel = np.pad(kernel, ((pad_size, pad_size), (pad_size, pad_size)))
kernel = kernel.astype(np.float32)
# ------------------------ 生成卷积核以进行第二次退化处理 ------------------------ #
kernel_size = choice(self.kernel_range)
if np.random.uniform() < self.sinc_prob2:
if kernel_size < 13:
omega_c = np.random.uniform(np.pi / 3, np.pi)
else:
omega_c = np.random.uniform(np.pi / 5, np.pi)
kernel2 = circular_lowpass_kernel(omega_c, kernel_size, pad_to=False)
else:
kernel2 = random_mixed_kernels(
self.kernel_list2,
self.kernel_prob2,
kernel_size,
self.blur_sigma2,
self.blur_sigma2, [-math.pi, math.pi],
self.betag_range2,
self.betap_range2,
noise_range=None)
# pad kernel
pad_size = (21 - kernel_size) // 2
kernel2 = np.pad(kernel2, ((pad_size, pad_size), (pad_size, pad_size)))
kernel2 = kernel2.astype(np.float32)
# ----------------------the final sinc kernel ------------------------- #
if np.random.uniform() < self.final_sinc_prob:
kernel_size = choice(self.kernel_range)
omega_c = np.random.uniform(np.pi / 3, np.pi)
sinc_kernel = circular_lowpass_kernel(omega_c, kernel_size, pad_to=21)
else:
sinc_kernel = self.pulse_tensor
sinc_kernel = sinc_kernel.astype(np.float32)
lq, gt = self.feed_data(image, kernel, kernel2, sinc_kernel)
return lq, gt
def feed_data(self, img_gt, kernel1, kernel2, sinc_kernel):
img_gt = np.array(img_gt, dtype=np.float32)
# 对gt进行锐化
img_gt = np.clip(img_gt / 255, 0, 1)
gt = self.usmsharp.filt(img_gt)
[ori_w, ori_h, _] = gt.shape
# ---------------------- 根据参数进行第一次退化 -------------------- #
# 模糊处理
out = cv2.filter2D(img_gt, -1, kernel1)
# 随机 resize
updown_type = choices(['up', 'down', 'keep'], self.resize_prob)[0]
if updown_type == 'up':
scale = np.random.uniform(1, self.resize_range[1])
elif updown_type == 'down':
scale = np.random.uniform(self.resize_range[0], 1)
else:
scale = 1
mode = choice(['area', 'bilinear', 'bicubic'])
if mode=='area':
out = cv2.resize(out, (int(ori_h * scale), int(ori_w * scale)), interpolation=cv2.INTER_AREA)
elif mode=='bilinear':
out = cv2.resize(out, (int(ori_h * scale), int(ori_w * scale)), interpolation=cv2.INTER_LINEAR)
else:
out = cv2.resize(out, (int(ori_h * scale), int(ori_w * scale)), interpolation=cv2.INTER_CUBIC)
# 灰度噪声
gray_noise_prob = self.gray_noise_prob
if np.random.uniform() < self.gaussian_noise_prob:
out = random_add_gaussian_noise(
out, sigma_range=self.noise_range, clip=True, rounds=False, gray_prob=gray_noise_prob)
else:
out = random_add_poisson_noise(
out,
scale_range=self.poisson_scale_range,
gray_prob=gray_noise_prob,
clip=True,
rounds=False)
# JPEG 压缩
jpeg_p = np.random.uniform(low=self.jpeg_range[0], high=self.jpeg_range[1])
jpeg_p = int(jpeg_p)
out = np.clip(out, 0, 1)
encode_param = [int(cv2.IMWRITE_JPEG_QUALITY), jpeg_p]
_, encimg = cv2.imencode('.jpg', out * 255., encode_param)
out = np.float32(cv2.imdecode(encimg, 1))/255
# ---------------------- 根据参数进行第一次退化 -------------------- #
# 模糊
if np.random.uniform() < self.second_blur_prob:
out = cv2.filter2D(out, -1, kernel2)
# 随机 resize
updown_type = choices(['up', 'down', 'keep'], self.resize_prob2)[0]
if updown_type == 'up':
scale = np.random.uniform(1, self.resize_range2[1])
elif updown_type == 'down':
scale = np.random.uniform(self.resize_range2[0], 1)
else:
scale = 1
mode = choice(['area', 'bilinear', 'bicubic'])
if mode == 'area':
out = cv2.resize(out, (int(ori_h / self.scale * scale), int(ori_w / self.scale * scale)), interpolation=cv2.INTER_AREA)
elif mode == 'bilinear':
out = cv2.resize(out, (int(ori_h / self.scale * scale), int(ori_w / self.scale * scale)), interpolation=cv2.INTER_LINEAR)
else:
out = cv2.resize(out, (int(ori_h / self.scale * scale), int(ori_w / self.scale * scale)), interpolation=cv2.INTER_CUBIC)
# 灰度噪声
gray_noise_prob = self.gray_noise_prob2
if np.random.uniform() < self.gaussian_noise_prob2:
out = random_add_gaussian_noise(
out, sigma_range=self.noise_range2, clip=True, rounds=False, gray_prob=gray_noise_prob)
else:
out = random_add_poisson_noise(
out,
scale_range=self.poisson_scale_range2,
gray_prob=gray_noise_prob,
clip=True,
rounds=False)
# JPEG压缩+最后的sinc滤波器
# 我们还需要将图像的大小调整到所需的尺寸。我们把[调整大小+sinc过滤器]组合在一起
# 作为一个操作。
# 我们考虑两个顺序。
# 1. [调整大小+sinc filter] + JPEG压缩
# 2. 2. JPEG压缩+[调整大小+sinc过滤]。
# 根据经验,我们发现其他组合(sinc + JPEG + Resize)会引入扭曲的线条。
if np.random.uniform() < 0.5:
# resize back + the final sinc filter
mode = choice(['area', 'bilinear', 'bicubic'])
if mode == 'area':
out = cv2.resize(out, (ori_h // self.scale, ori_w // self.scale), interpolation=cv2.INTER_AREA)
elif mode == 'bilinear':
out = cv2.resize(out, (ori_h // self.scale, ori_w // self.scale), interpolation=cv2.INTER_LINEAR)
else:
out = cv2.resize(out, (ori_h // self.scale, ori_w // self.scale), interpolation=cv2.INTER_CUBIC)
out = cv2.filter2D(out, -1, sinc_kernel)
# JPEG 压缩
jpeg_p = np.random.uniform(low=self.jpeg_range[0], high=self.jpeg_range[1])
jpeg_p = jpeg_p
out = np.clip(out, 0, 1)
encode_param = [int(cv2.IMWRITE_JPEG_QUALITY), jpeg_p]
_, encimg = cv2.imencode('.jpg', out * 255., encode_param)
out = np.float32(cv2.imdecode(encimg, 1)) / 255
else:
# JPEG 压缩
jpeg_p = np.random.uniform(low=self.jpeg_range[0], high=self.jpeg_range[1])
jpeg_p = jpeg_p
out = np.clip(out, 0, 1)
encode_param = [int(cv2.IMWRITE_JPEG_QUALITY), jpeg_p]
_, encimg = cv2.imencode('.jpg', out * 255., encode_param)
out = np.float32(cv2.imdecode(encimg, 1)) / 255
# resize back + the final sinc filter
mode = choice(['area', 'bilinear', 'bicubic'])
if mode == 'area':
out = cv2.resize(out, (ori_h // self.scale, ori_w // self.scale),interpolation=cv2.INTER_AREA)
elif mode == 'bilinear':
out = cv2.resize(out, (ori_h // self.scale, ori_w // self.scale),interpolation=cv2.INTER_LINEAR)
else:
out = cv2.resize(out, (ori_h // self.scale, ori_w // self.scale),interpolation=cv2.INTER_CUBIC)
lq = np.clip((out * 255.0), 0, 255)
gt = np.clip((gt * 255.0), 0, 255)
return Image.fromarray(np.uint8(lq)), Image.fromarray(np.uint8(gt))
def SRGAN_dataset_collate(batch):
images_l = []
images_h = []
for img_l, img_h in batch:
images_l.append(img_l)
images_h.append(img_h)
return np.array(images_l), np.array(images_h)