| import cv2 |
| import numpy as np |
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| def in_swap(img, bgr_fake, M): |
| target_img = img |
| IM = cv2.invertAffineTransform(M) |
| img_white = np.full((bgr_fake.shape[0], bgr_fake.shape[1]), 255, dtype=np.float32) |
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| bgr_fake = cv2.warpAffine(bgr_fake, IM, (target_img.shape[1], target_img.shape[0]), borderValue=0.0, flags=cv2.INTER_CUBIC) |
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| img_white = cv2.warpAffine(img_white, IM, (target_img.shape[1], target_img.shape[0]), borderValue=0.0) |
| img_white[img_white > 20] = 255 |
| img_mask = img_white |
| mask_h_inds, mask_w_inds = np.where(img_mask == 255) |
| mask_h = np.max(mask_h_inds) - np.min(mask_h_inds) |
| mask_w = np.max(mask_w_inds) - np.min(mask_w_inds) |
| mask_size = int(np.sqrt(mask_h * mask_w)) |
| k = max(mask_size // 10, 10) |
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| |
| kernel = np.ones((k, k), np.uint8) |
| img_mask = cv2.erode(img_mask, kernel, iterations=1) |
| kernel = np.ones((2, 2), np.uint8) |
| k = max(mask_size // 20, 5) |
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| |
| kernel_size = (k, k) |
| blur_size = tuple(2 * i + 1 for i in kernel_size) |
| img_mask = cv2.GaussianBlur(img_mask, blur_size, 0) |
| k = 5 |
| kernel_size = (k, k) |
| blur_size = tuple(2 * i + 1 for i in kernel_size) |
| img_mask /= 255 |
| |
| img_mask = np.reshape(img_mask, [img_mask.shape[0], img_mask.shape[1], 1]) |
| fake_merged = img_mask * bgr_fake + (1 - img_mask) * target_img.astype(np.float32) |
| fake_merged = fake_merged.astype(np.uint8) |
| return fake_merged |
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