| |
| |
| import random |
|
|
| import PIL, PIL.ImageOps, PIL.ImageEnhance, PIL.ImageDraw |
| import numpy as np |
| import torch |
| from PIL import Image,ImageStat |
| |
| from torchvision import transforms |
|
|
| |
| |
|
|
| def ShearX(img, v): |
| assert -0.3 <= v <= 0.3 |
| if random.random() > 0.5: |
| v = -v |
| return img.transform(img.size, PIL.Image.AFFINE, (1, v, 0, 0, 1, 0)) |
|
|
| def DoShearX(img, v): |
| return img.transform(img.size, PIL.Image.AFFINE, (1, v, 0, 0, 1, 0)) |
|
|
| def ShearY(img, v): |
| assert -0.3 <= v <= 0.3 |
| if random.random() > 0.5: |
| v = -v |
| return img.transform(img.size, PIL.Image.AFFINE, (1, 0, 0, v, 1, 0)) |
|
|
| def DoShearY(img, v): |
| return img.transform(img.size, PIL.Image.AFFINE, (1, 0, 0, v, 1, 0)) |
|
|
| def TranslateX(img, v): |
| assert -0.45 <= v <= 0.45 |
| if random.random() > 0.5: |
| v = -v |
| v = v * img.size[0] |
| return img.transform(img.size, PIL.Image.AFFINE, (1, 0, v, 0, 1, 0)) |
|
|
| def TranslateXabs(img, v): |
| assert 0 <= v |
| if random.random() > 0.5: |
| v = -v |
| return img.transform(img.size, PIL.Image.AFFINE, (1, 0, v, 0, 1, 0)) |
| def DoTranslateXabs(img, v): |
| return img.transform(img.size, PIL.Image.AFFINE, (1, 0, v, 0, 1, 0)) |
|
|
| def TranslateY(img, v): |
| assert -0.45 <= v <= 0.45 |
| if random.random() > 0.5: |
| v = -v |
| v = v * img.size[1] |
| return img.transform(img.size, PIL.Image.AFFINE, (1, 0, 0, 0, 1, v)) |
|
|
|
|
| def TranslateYabs(img, v): |
| assert 0 <= v |
| if random.random() > 0.5: |
| v = -v |
| return img.transform(img.size, PIL.Image.AFFINE, (1, 0, 0, 0, 1, v)) |
| def DoTranslateYabs(img, v): |
| return img.transform(img.size, PIL.Image.AFFINE, (1, 0, 0, 0, 1, v)) |
|
|
| def Rotate(img, v): |
| assert -30 <= v <= 30 |
| if random.random() > 0.5: |
| v = -v |
| return img.rotate(v) |
| def DoRotate(img, v): |
| return img.rotate(v) |
|
|
|
|
| def AutoContrast(img, v): |
| return PIL.ImageOps.autocontrast(img, v) |
| def DoAutoContrast(img, v): |
| return PIL.ImageOps.autocontrast(img, v) |
|
|
| def Invert(img, _): |
| return PIL.ImageOps.invert(img) |
| def DoInvert(img, _): |
| return PIL.ImageOps.invert(img) |
|
|
|
|
| def Equalize(img, _): |
| return PIL.ImageOps.equalize(img) |
| def DoEqualize(img, _): |
| return PIL.ImageOps.equalize(img) |
|
|
| def Flip(img, _): |
| return PIL.ImageOps.mirror(img) |
|
|
| def DoFlip(img, _): |
| return PIL.ImageOps.mirror(img) |
|
|
|
|
| def Solarize(img, v): |
| assert 0 <= v <= 256 |
| return PIL.ImageOps.solarize(img, v) |
| def DoSolarize(img, v): |
| return PIL.ImageOps.solarize(img, v) |
|
|
| def SolarizeAdd(img, addition=0, threshold=128): |
| |
| img_np = np.array(img).astype(np.int32) |
| img_np = img_np + addition |
| img_np = np.clip(img_np, 0, 255) |
| img_np = img_np.astype(np.uint8) |
| img = Image.fromarray(img_np) |
| return PIL.ImageOps.solarize(img, threshold) |
| def DoSolarizeAdd(img, addition=0, threshold=128): |
| |
| img_np = np.array(img).astype(np.int32) |
| img_np = img_np + addition |
| img_np = np.clip(img_np, 0, 255) |
| img_np = img_np.astype(np.uint8) |
| img = Image.fromarray(img_np) |
| return PIL.ImageOps.solarize(img, threshold) |
|
|
| def Posterize(img, v): |
| v = int(v) |
| v = max(1, v) |
| return PIL.ImageOps.posterize(img, v) |
| def DoPosterize(img, v): |
| v = int(v) |
| v = max(1, v) |
| return PIL.ImageOps.posterize(img, v) |
|
|
|
|
| def Contrast(img, v): |
| assert 0.1 <= v <= 1.9 |
| return PIL.ImageEnhance.Contrast(img).enhance(v) |
|
|
| def DoContrast(img, v): |
| return PIL.ImageEnhance.Contrast(img).enhance(v) |
|
|
| def Color(img, v): |
| assert 0.1 <= v <= 1.9 |
| return PIL.ImageEnhance.Color(img).enhance(v) |
|
|
| def DoColor(img, v): |
| stat =ImageStat.Stat(img) |
| return PIL.ImageEnhance.Color(img).enhance(v) |
|
|
|
|
| def Brightness(img, v): |
| assert 0.1 <= v <= 1.9 |
| return PIL.ImageEnhance.Brightness(img).enhance(v) |
|
|
| def DoBrightness(img, v): |
| return PIL.ImageEnhance.Brightness(img).enhance(v) |
|
|
|
|
| def Sharpness(img, v): |
| assert 0.1 <= v <= 1.9 |
| return PIL.ImageEnhance.Sharpness(img).enhance(v) |
|
|
| def DoSharpness(img, v): |
| return PIL.ImageEnhance.Sharpness(img).enhance(v) |
|
|
| def Cutout(img, v): |
| assert 0.0 <= v <= 0.2 |
| if v <= 0.: |
| return img |
|
|
| v = v * img.size[0] |
| return CutoutAbs(img, v) |
|
|
|
|
| def CutoutAbs(img, v): |
| |
| if v < 0: |
| return img |
| w, h = img.size |
| x0 = np.random.uniform(w) |
| y0 = np.random.uniform(h) |
|
|
| x0 = int(max(0, x0 - v / 2.)) |
| y0 = int(max(0, y0 - v / 2.)) |
| x1 = min(w, x0 + v) |
| y1 = min(h, y0 + v) |
|
|
| xy = (x0, y0, x1, y1) |
| color = (125, 123, 114) |
| |
| img = img.copy() |
| PIL.ImageDraw.Draw(img).rectangle(xy, color) |
| return img |
| def DoCutoutAbs(img, v): |
| |
| if v < 0: |
| return img |
| w, h = img.size |
| x0 = np.random.uniform(w) |
| y0 = np.random.uniform(h) |
|
|
| x0 = int(max(0, x0 - v / 2.)) |
| y0 = int(max(0, y0 - v / 2.)) |
| x1 = min(w, x0 + v) |
| y1 = min(h, y0 + v) |
|
|
| xy = (x0, y0, x1, y1) |
| color = (125, 123, 114) |
| |
| img = img.copy() |
| PIL.ImageDraw.Draw(img).rectangle(xy, color) |
| return img |
|
|
|
|
| def SamplePairing(imgs): |
| def f(img1, v): |
| i = np.random.choice(len(imgs)) |
| img2 = PIL.Image.fromarray(imgs[i]) |
| return PIL.Image.blend(img1, img2, v) |
|
|
| return f |
|
|
|
|
| def Identity(img, v): |
| return img |
|
|
| def NoiseSalt(img, noise_rate): |
| """增加椒盐噪声 |
| args: |
| noise_rate (float): noise rate |
| """ |
| img_ = np.array(img).copy() |
| h, w, c = img_.shape |
| signal_pct = 1 - noise_rate |
| mask = np.random.choice((0, 1, 2), size=(h, w, 1), p=[signal_pct, noise_rate/2., noise_rate/2.]) |
| mask = np.repeat(mask, c, axis=2) |
| img_[mask == 1] = 255 |
| img_[mask == 2] = 0 |
| return Image.fromarray(img_.astype('uint8')) |
|
|
| def DoNoiseSalt(img, noise_rate): |
| """增加椒盐噪声 |
| args: |
| noise_rate (float): noise rate |
| """ |
| img_ = np.array(img).copy() |
| h, w, c = img_.shape |
| signal_pct = 1 - noise_rate |
| mask = np.random.choice((0, 1, 2), size=(h, w, 1), p=[signal_pct, noise_rate/2., noise_rate/2.]) |
| mask = np.repeat(mask, c, axis=2) |
| img_[mask == 1] = 255 |
| img_[mask == 2] = 0 |
| return Image.fromarray(img_.astype('uint8')) |
| def NoiseGaussian(img, sigma): |
| """增加高斯噪声 |
| 传入: |
| img : 原图 |
| mean : 均值默认0 |
| sigma : 标准差 |
| 返回: |
| gaussian_out : 噪声处理后的图片 |
| """ |
| |
| img_ = np.array(img).copy() |
| img_ = img_ / 255.0 |
| |
| noise = np.random.normal(0, sigma, img_.shape) |
| |
| gaussian_out = img_ + noise |
| |
| gaussian_out = np.clip(gaussian_out, 0, 1) |
| |
| gaussian_out = np.uint8(gaussian_out*255) |
| |
| |
| return Image.fromarray(gaussian_out) |
|
|
| def DoNoiseGaussian(img, sigma): |
| """增加高斯噪声 |
| 传入: |
| img : 原图 |
| mean : 均值默认0 |
| sigma : 标准差 |
| 返回: |
| gaussian_out : 噪声处理后的图片 |
| """ |
| |
| img_ = np.array(img).copy() |
| img_ = img_ / 255.0 |
| |
| noise = np.random.normal(0, sigma, img_.shape) |
| |
| gaussian_out = img_ + noise |
| |
| gaussian_out = np.clip(gaussian_out, 0, 1) |
| |
| gaussian_out = np.uint8(gaussian_out*255) |
| |
| |
| return Image.fromarray(gaussian_out) |
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| def factor_list(factor_num): |
| l = [ |
| 'ShearX', |
| 'ShearY', |
| 'AutoContrast', |
| 'Invert', |
| 'Equalize', |
| 'Solarize', |
| 'SolarizeAdd', |
| 'Posterize', |
| 'Contrast', |
| 'Color', |
| 'Brightness', |
| 'Sharpness', |
| 'NoiseSalt', |
| 'NoiseGaussian', |
| 'Rotate', |
| 'Flip' |
| ] |
| return l[:factor_num] |
|
|
| def causal_list(factor_num): |
| l = [ |
| (ShearX, 0., 0.3), |
| (ShearY, 0., 0.3), |
| (AutoContrast, 0, 100), |
| (Invert, 0, 1), |
| (Equalize, 0, 1), |
| (Solarize, 0, 256), |
| (SolarizeAdd, 0, 110), |
| (Posterize, 0, 4), |
| (Contrast, 0.1, 1.9), |
| (Color, 0.1, 1.9), |
| (Brightness, 0.1, 1.9), |
| (Sharpness, 0.1, 1.9), |
| (NoiseSalt,0.0,0.1), |
| (NoiseGaussian,0.0,0.1), |
| (Rotate, 0, 30), |
| (Flip, 0, 1), |
| ] |
|
|
| return l[:factor_num] |
|
|
| class Lighting(object): |
| """Lighting noise(AlexNet - style PCA - based noise)""" |
|
|
| def __init__(self, alphastd, eigval, eigvec): |
| self.alphastd = alphastd |
| self.eigval = torch.Tensor(eigval) |
| self.eigvec = torch.Tensor(eigvec) |
|
|
| def __call__(self, img): |
| if self.alphastd == 0: |
| return img |
|
|
| alpha = img.new().resize_(3).normal_(0, self.alphastd) |
| rgb = self.eigvec.type_as(img).clone() \ |
| .mul(alpha.view(1, 3).expand(3, 3)) \ |
| .mul(self.eigval.view(1, 3).expand(3, 3)) \ |
| .sum(1).squeeze() |
|
|
| return img.add(rgb.view(3, 1, 1).expand_as(img)) |
|
|
|
|
| class CutoutDefault(object): |
| """ |
| Reference : https://github.com/quark0/darts/blob/master/cnn/utils.py |
| """ |
| def __init__(self, length): |
| self.length = length |
|
|
| def __call__(self, img): |
| h, w = img.size(1), img.size(2) |
| mask = np.ones((h, w), np.float32) |
| y = np.random.randint(h) |
| x = np.random.randint(w) |
|
|
| y1 = np.clip(y - self.length // 2, 0, h) |
| y2 = np.clip(y + self.length // 2, 0, h) |
| x1 = np.clip(x - self.length // 2, 0, w) |
| x2 = np.clip(x + self.length // 2, 0, w) |
|
|
| mask[y1: y2, x1: x2] = 0. |
| mask = torch.from_numpy(mask) |
| mask = mask.expand_as(img) |
| img *= mask |
| return img |
|
|
|
|
| class RandAugment_incausal: |
| def __init__(self, n, m, factor_num, randm=False, randn=False): |
| self.n = n |
| self.m = m |
| self.causal_list = causal_list(factor_num) |
| print("---------------------------%d factors-----------------"%(len(self.causal_list))) |
| self.randm = randm |
| self.randn = randn |
| self.factor_num = factor_num |
| print("randm:",self.randm) |
| print("randn:",self.randn) |
| print("n:",self.n) |
| def __call__(self, img): |
| |
| if self.randn: |
| self.n = random.randint(1,self.factor_num) |
| |
| ops = random.choices(self.causal_list, k=self.n) |
| if self.randm: |
| self.m = random.randint(0,30) |
| for op, minval, maxval in ops: |
| val = (float(self.m) / 30) * float(maxval - minval) + minval |
| |
| img = op(img, val) |
| return img |
| class RandAugment_all: |
| def __init__(self, m, factor_num, randm=False): |
| self.m = m |
| self.causal_list = causal_list(factor_num) |
| print("---------------------------%d factors-----------------"%(len(self.causal_list))) |
| self.randm = randm |
| self.factor_num = factor_num |
|
|
| def __call__(self, img): |
| |
| factor_choice = np.random.randint(0,2,self.factor_num) |
| |
| if self.randm: |
| self.m = random.randint(0,30) |
| for index, (op, minval, maxval) in enumerate(self.causal_list): |
| if factor_choice[index] == 0: |
| continue |
| else: |
| val = (float(self.m) / 30) * float(maxval - minval) + minval |
| |
| img = op(img, val) |
| return img |
| class RandAugment_incausal_label: |
| def __init__(self, n, m, factor_num, randm=False): |
| self.n = n |
| self.m = m |
| self.causal_list = causal_list(factor_num) |
| self.factor_num = factor_num |
| print("---------------------------%d factors-----------------"%(len(self.causal_list))) |
| self.randm = randm |
| print("randm:",self.randm) |
|
|
| def __call__(self, img): |
| |
| |
| op_labels = random.sample(range(0, self.factor_num), self.n) |
| ops = [li for index, li in enumerate(self.causal_list) if index in op_labels] |
| |
| |
| |
| |
| if self.randm: |
| self.m = random.randint(0,30) |
| for op, minval, maxval in ops: |
| val = (float(self.m) / 30) * float(maxval - minval) + minval |
| |
| img = op(img, val) |
| return img, np.array(op_labels) |
| class FactualAugment_incausal: |
| def __init__(self, m, factor_num, randm=False): |
| self.m = m |
| self.causal_list = causal_list(factor_num) |
| self.factor_list = factor_list(factor_num) |
| self.factor_num = factor_num |
| self.randm = randm |
| print("randm:",self.randm) |
| def __call__(self, img): |
| |
| if self.randm: |
| self.m = random.randint(0,30) |
| for index, (op, minval, maxval) in enumerate(self.causal_list): |
| val = (float(self.m) / 30) * float(maxval - minval) + minval |
| if index == 0: |
| imgs = np.array(op(img, val)) |
| else: |
| imgs = np.concatenate((imgs, op(img, val)),-1) |
| |
| return imgs |
| class CounterfactualAugment_incausal: |
| def __init__(self,factor_num): |
| self.causal_list = causal_list(factor_num) |
| self.factor_list = factor_list(factor_num) |
| self.factor_num = factor_num |
| def __call__(self, img): |
| |
| |
| |
| |
| for index, (op, minval, maxval) in enumerate(self.causal_list): |
| op = eval('Do'+self.factor_list[index]) |
| if index == 0: |
| imgs = np.array(op(img, maxval)) |
| else: |
| imgs = np.concatenate((imgs, op(img, maxval)),-1) |
| |
| |
| return imgs |
| class MultiCounterfactualAugment_incausal: |
| def __init__(self, factor_num, stride): |
| self.causal_list = causal_list(factor_num) |
| self.factor_list = factor_list(factor_num) |
| self.factor_num = factor_num |
| self.stride = stride |
|
|
| def __call__(self, img): |
| |
| |
| |
| |
| |
| for index, (op, minval, maxval) in enumerate(self.causal_list): |
| op = eval('Do'+self.factor_list[index]) |
| for i in range(0, 31, self.stride): |
| val = (float(i) / 30) * float(maxval - minval) + minval |
| if index == 0 and i == 0: |
| imgs = np.array(op(img, val)) |
| else: |
| imgs = np.concatenate((imgs, op(img, val)),-1) |
| |
| |
| return imgs |
| class MultiCounterfactualAugment: |
| def __init__(self, factor_num, stride=5): |
| self.causal_list = causal_list(factor_num) |
| self.factor_list = factor_list(factor_num) |
| self.factor_num = factor_num |
| self.stride = stride |
| self.var_num = len(list(range(0, 31, self.stride))) |
| print("stride:",stride) |
| def __call__(self, img): |
| |
| b, c, h, w = img.shape |
| imgs = torch.zeros(b*self.factor_num*self.var_num, c, h, w) |
| |
| |
| |
| for b_ in range(b): |
| img0 = transforms.ToPILImage()(imgs[b_]) |
| for index, (op, minval, maxval) in enumerate(self.causal_list): |
| op = eval('Do'+self.factor_list[index]) |
| i_index = 0 |
| for i in range(0, 31, self.stride): |
| val = (float(i) / 30) * float(maxval - minval) + minval |
| img1 = op(img0, val) |
| img1 = transforms.ToTensor()(img1) |
| |
| imgs[b_*self.factor_num*self.var_num+index*self.var_num+i_index] = img1 |
| i_index = i_index + 1 |
| |
| |
| return imgs |
|
|
|
|
| class FactualAugment: |
| def __init__(self, m, factor_num, randm=False): |
| self.m = m |
| self.causal_list = causal_list(factor_num) |
| self.factor_list = factor_list(factor_num) |
| self.factor_num = factor_num |
| self.randm = randm |
| print("randm:",randm) |
| def __call__(self, img): |
| index = 0 |
| b, c, h, w = img.shape |
| imgs = torch.zeros(b*self.factor_num, c, h, w) |
|
|
| img = img.cpu() |
| for b_ in range(b): |
| imgs[b_*self.factor_num:(b_+1)*self.factor_num] = self.get_item(img[b_]) |
| return imgs |
| def get_item(self, img): |
| index = 0 |
| |
| c, h, w = img.shape |
| imgs = torch.zeros(self.factor_num, c, h, w) |
| |
| |
| img = transforms.ToPILImage()(img) |
| if self.randm: |
| self.m = random.randint(0,30) |
| for index, (op, minval, maxval) in enumerate(self.causal_list): |
| op = eval(self.factor_list[index]) |
| val = (float(self.m) / 30) * float(maxval - minval) + minval |
| img1 = op(img, val) |
| img1 = transforms.ToTensor()(img1) |
| imgs[index] = img1 |
| return imgs |
| class CounterfactualAugment: |
| def __init__(self,factor_num): |
| self.causal_list = causal_list(factor_num) |
| self.factor_list = factor_list(factor_num) |
| self.factor_num = factor_num |
|
|
| def __call__(self, img): |
| index = 0 |
| b, c, h, w = img.shape |
| imgs = torch.zeros(b*self.factor_num, c, h, w) |
|
|
| img = img.cpu() |
| for b_ in range(b): |
| imgs[b_*self.factor_num:(b_+1)*self.factor_num] = self.get_item(img[b_]) |
| return imgs |
| def get_item(self, img): |
| index = 0 |
| c, h, w = img.shape |
| imgs = torch.ones(self.factor_num, c, h, w) |
| |
| img = transforms.ToPILImage()(img) |
| for index, (op, minval, maxval) in enumerate(self.causal_list): |
| op = eval('Do'+self.factor_list[index]) |
| img1 = op(img, maxval) |
| |
| img1 = transforms.ToTensor()(img1) |
| imgs[index] = img1 |
| return imgs |
|
|
| class Avg_statistic: |
| def __init__(self): |
| self.do_list = do_list() |
| self.statistic_num = len(self.do_list) |
| self.avg_val = np.zeros(self.statistic_num) |
| self.img_num = 0 |
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| def get_item(self,img): |
| |
| do_index = 0 |
| for op in self.do_list: |
| val=op(img) |
| self.avg_val[do_index] += val |
| self.img_num = self.img_num + 1 |
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| def compute_average(self): |
| self.avg_val = self.avg_val/self.img_num |
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| def get_infor(self): |
| return self.avg_val, self.img_num |
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