| ''' |
| Author: Naiyuan liu |
| Github: https://github.com/NNNNAI |
| Date: 2021-11-15 19:42:42 |
| LastEditors: Naiyuan liu |
| LastEditTime: 2021-11-15 20:01:47 |
| Description: |
| ''' |
|
|
| import cv2 |
| import numpy as np |
| from skimage import transform as trans |
|
|
| src1 = np.array([[51.642, 50.115], [57.617, 49.990], [35.740, 69.007], |
| [51.157, 89.050], [57.025, 89.702]], |
| dtype=np.float32) |
| |
| src2 = np.array([[45.031, 50.118], [65.568, 50.872], [39.677, 68.111], |
| [45.177, 86.190], [64.246, 86.758]], |
| dtype=np.float32) |
|
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| |
| src3 = np.array([[39.730, 51.138], [72.270, 51.138], [56.000, 68.493], |
| [42.463, 87.010], [69.537, 87.010]], |
| dtype=np.float32) |
|
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| |
| src4 = np.array([[46.845, 50.872], [67.382, 50.118], [72.737, 68.111], |
| [48.167, 86.758], [67.236, 86.190]], |
| dtype=np.float32) |
|
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| |
| src5 = np.array([[54.796, 49.990], [60.771, 50.115], [76.673, 69.007], |
| [55.388, 89.702], [61.257, 89.050]], |
| dtype=np.float32) |
|
|
| src = np.array([src1, src2, src3, src4, src5]) |
| src_map = src |
|
|
| ffhq_src = np.array([[192.98138, 239.94708], [318.90277, 240.1936], [256.63416, 314.01935], |
| [201.26117, 371.41043], [313.08905, 371.15118]]) |
| ffhq_src = np.expand_dims(ffhq_src, axis=0) |
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| |
| def estimate_norm(lmk, image_size=112, mode='ffhq'): |
| assert lmk.shape == (5, 2) |
| tform = trans.SimilarityTransform() |
| lmk_tran = np.insert(lmk, 2, values=np.ones(5), axis=1) |
| min_M = [] |
| min_index = [] |
| min_error = float('inf') |
| if mode == 'ffhq': |
| |
| src = ffhq_src * image_size / 512 |
| else: |
| src = src_map * image_size / 112 |
| for i in np.arange(src.shape[0]): |
| tform.estimate(lmk, src[i]) |
| M = tform.params[0:2, :] |
| results = np.dot(M, lmk_tran.T) |
| results = results.T |
| error = np.sum(np.sqrt(np.sum((results - src[i])**2, axis=1))) |
| |
| if error < min_error: |
| min_error = error |
| min_M = M |
| min_index = i |
| return min_M, min_index |
|
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|
| def norm_crop(img, landmark, image_size=112, mode='ffhq'): |
| if mode == 'Both': |
| M_None, _ = estimate_norm(landmark, image_size, mode = 'newarc') |
| M_ffhq, _ = estimate_norm(landmark, image_size, mode='ffhq') |
| warped_None = cv2.warpAffine(img, M_None, (image_size, image_size), borderValue=0.0) |
| warped_ffhq = cv2.warpAffine(img, M_ffhq, (image_size, image_size), borderValue=0.0) |
| return warped_ffhq, warped_None |
| else: |
| M, pose_index = estimate_norm(landmark, image_size, mode) |
| warped = cv2.warpAffine(img, M, (image_size, image_size), borderValue=0.0) |
| return warped |
|
|
| def square_crop(im, S): |
| if im.shape[0] > im.shape[1]: |
| height = S |
| width = int(float(im.shape[1]) / im.shape[0] * S) |
| scale = float(S) / im.shape[0] |
| else: |
| width = S |
| height = int(float(im.shape[0]) / im.shape[1] * S) |
| scale = float(S) / im.shape[1] |
| resized_im = cv2.resize(im, (width, height)) |
| det_im = np.zeros((S, S, 3), dtype=np.uint8) |
| det_im[:resized_im.shape[0], :resized_im.shape[1], :] = resized_im |
| return det_im, scale |
|
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|
| def transform(data, center, output_size, scale, rotation): |
| scale_ratio = scale |
| rot = float(rotation) * np.pi / 180.0 |
| |
| t1 = trans.SimilarityTransform(scale=scale_ratio) |
| cx = center[0] * scale_ratio |
| cy = center[1] * scale_ratio |
| t2 = trans.SimilarityTransform(translation=(-1 * cx, -1 * cy)) |
| t3 = trans.SimilarityTransform(rotation=rot) |
| t4 = trans.SimilarityTransform(translation=(output_size / 2, |
| output_size / 2)) |
| t = t1 + t2 + t3 + t4 |
| M = t.params[0:2] |
| cropped = cv2.warpAffine(data, |
| M, (output_size, output_size), |
| borderValue=0.0) |
| return cropped, M |
|
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|
|
| def trans_points2d(pts, M): |
| new_pts = np.zeros(shape=pts.shape, dtype=np.float32) |
| for i in range(pts.shape[0]): |
| pt = pts[i] |
| new_pt = np.array([pt[0], pt[1], 1.], dtype=np.float32) |
| new_pt = np.dot(M, new_pt) |
| |
| new_pts[i] = new_pt[0:2] |
|
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| return new_pts |
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|
| def trans_points3d(pts, M): |
| scale = np.sqrt(M[0][0] * M[0][0] + M[0][1] * M[0][1]) |
| |
| new_pts = np.zeros(shape=pts.shape, dtype=np.float32) |
| for i in range(pts.shape[0]): |
| pt = pts[i] |
| new_pt = np.array([pt[0], pt[1], 1.], dtype=np.float32) |
| new_pt = np.dot(M, new_pt) |
| |
| new_pts[i][0:2] = new_pt[0:2] |
| new_pts[i][2] = pts[i][2] * scale |
|
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| return new_pts |
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| def trans_points(pts, M): |
| if pts.shape[1] == 2: |
| return trans_points2d(pts, M) |
| else: |
| return trans_points3d(pts, M) |
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