import random import cv2 import numpy as np from annotator.util import make_noise_disk, img2mask class ContentShuffleDetector: def __call__(self, img, h=None, w=None, f=None): H, W, C = img.shape if h is None: h = H if w is None: w = W if f is None: f = 256 x = make_noise_disk(h, w, 1, f) * float(W - 1) y = make_noise_disk(h, w, 1, f) * float(H - 1) flow = np.concatenate([x, y], axis=2).astype(np.float32) return cv2.remap(img, flow, None, cv2.INTER_LINEAR) class ColorShuffleDetector: def __call__(self, img): H, W, C = img.shape F = random.randint(64, 384) A = make_noise_disk(H, W, 3, F) B = make_noise_disk(H, W, 3, F) C = (A + B) / 2.0 A = (C + (A - C) * 3.0).clip(0, 1) B = (C + (B - C) * 3.0).clip(0, 1) L = img.astype(np.float32) / 255.0 Y = A * L + B * (1 - L) Y -= np.min(Y, axis=(0, 1), keepdims=True) Y /= np.maximum(np.max(Y, axis=(0, 1), keepdims=True), 1e-5) Y *= 255.0 return Y.clip(0, 255).astype(np.uint8) class GrayDetector: def __call__(self, img): eps = 1e-5 X = img.astype(np.float32) r, g, b = X[:, :, 0], X[:, :, 1], X[:, :, 2] kr, kg, kb = [random.random() + eps for _ in range(3)] ks = kr + kg + kb kr /= ks kg /= ks kb /= ks Y = r * kr + g * kg + b * kb Y = np.stack([Y] * 3, axis=2) return Y.clip(0, 255).astype(np.uint8) class DownSampleDetector: def __call__(self, img, level=3, k=16.0): h = img.astype(np.float32) for _ in range(level): h += np.random.normal(loc=0.0, scale=k, size=h.shape) h = cv2.pyrDown(h) for _ in range(level): h = cv2.pyrUp(h) h += np.random.normal(loc=0.0, scale=k, size=h.shape) return h.clip(0, 255).astype(np.uint8) class Image2MaskShuffleDetector: def __init__(self, resolution=(640, 512)): self.H, self.W = resolution def __call__(self, img): m = img2mask(img, self.H, self.W) m *= 255.0 return m.clip(0, 255).astype(np.uint8)