| import cv2 |
| import numpy as np |
|
|
| from .matlab_cp2tform import get_similarity_transform_for_cv2 |
|
|
| |
| REFERENCE_FACIAL_POINTS = [[30.29459953, 51.69630051], [65.53179932, 51.50139999], [48.02519989, 71.73660278], |
| [33.54930115, 92.3655014], [62.72990036, 92.20410156]] |
|
|
| DEFAULT_CROP_SIZE = (96, 112) |
|
|
|
|
| class FaceWarpException(Exception): |
|
|
| def __str__(self): |
| return 'In File {}:{}'.format(__file__, super.__str__(self)) |
|
|
|
|
| def get_reference_facial_points(output_size=None, inner_padding_factor=0.0, outer_padding=(0, 0), default_square=False): |
| """ |
| Function: |
| ---------- |
| get reference 5 key points according to crop settings: |
| 0. Set default crop_size: |
| if default_square: |
| crop_size = (112, 112) |
| else: |
| crop_size = (96, 112) |
| 1. Pad the crop_size by inner_padding_factor in each side; |
| 2. Resize crop_size into (output_size - outer_padding*2), |
| pad into output_size with outer_padding; |
| 3. Output reference_5point; |
| Parameters: |
| ---------- |
| @output_size: (w, h) or None |
| size of aligned face image |
| @inner_padding_factor: (w_factor, h_factor) |
| padding factor for inner (w, h) |
| @outer_padding: (w_pad, h_pad) |
| each row is a pair of coordinates (x, y) |
| @default_square: True or False |
| if True: |
| default crop_size = (112, 112) |
| else: |
| default crop_size = (96, 112); |
| !!! make sure, if output_size is not None: |
| (output_size - outer_padding) |
| = some_scale * (default crop_size * (1.0 + |
| inner_padding_factor)) |
| Returns: |
| ---------- |
| @reference_5point: 5x2 np.array |
| each row is a pair of transformed coordinates (x, y) |
| """ |
|
|
| tmp_5pts = np.array(REFERENCE_FACIAL_POINTS) |
| tmp_crop_size = np.array(DEFAULT_CROP_SIZE) |
|
|
| |
| if default_square: |
| size_diff = max(tmp_crop_size) - tmp_crop_size |
| tmp_5pts += size_diff / 2 |
| tmp_crop_size += size_diff |
|
|
| if (output_size and output_size[0] == tmp_crop_size[0] and output_size[1] == tmp_crop_size[1]): |
|
|
| return tmp_5pts |
|
|
| if (inner_padding_factor == 0 and outer_padding == (0, 0)): |
| if output_size is None: |
| return tmp_5pts |
| else: |
| raise FaceWarpException('No paddings to do, output_size must be None or {}'.format(tmp_crop_size)) |
|
|
| |
| if not (0 <= inner_padding_factor <= 1.0): |
| raise FaceWarpException('Not (0 <= inner_padding_factor <= 1.0)') |
|
|
| if ((inner_padding_factor > 0 or outer_padding[0] > 0 or outer_padding[1] > 0) and output_size is None): |
| output_size = tmp_crop_size * \ |
| (1 + inner_padding_factor * 2).astype(np.int32) |
| output_size += np.array(outer_padding) |
| if not (outer_padding[0] < output_size[0] and outer_padding[1] < output_size[1]): |
| raise FaceWarpException('Not (outer_padding[0] < output_size[0] and outer_padding[1] < output_size[1])') |
|
|
| |
| if inner_padding_factor > 0: |
| size_diff = tmp_crop_size * inner_padding_factor * 2 |
| tmp_5pts += size_diff / 2 |
| tmp_crop_size += np.round(size_diff).astype(np.int32) |
|
|
| |
| size_bf_outer_pad = np.array(output_size) - np.array(outer_padding) * 2 |
|
|
| if size_bf_outer_pad[0] * tmp_crop_size[1] != size_bf_outer_pad[1] * tmp_crop_size[0]: |
| raise FaceWarpException('Must have (output_size - outer_padding)' |
| '= some_scale * (crop_size * (1.0 + inner_padding_factor)') |
|
|
| scale_factor = size_bf_outer_pad[0].astype(np.float32) / tmp_crop_size[0] |
| tmp_5pts = tmp_5pts * scale_factor |
| |
| |
| tmp_crop_size = size_bf_outer_pad |
|
|
| |
| reference_5point = tmp_5pts + np.array(outer_padding) |
| tmp_crop_size = output_size |
|
|
| return reference_5point |
|
|
|
|
| def get_affine_transform_matrix(src_pts, dst_pts): |
| """ |
| Function: |
| ---------- |
| get affine transform matrix 'tfm' from src_pts to dst_pts |
| Parameters: |
| ---------- |
| @src_pts: Kx2 np.array |
| source points matrix, each row is a pair of coordinates (x, y) |
| @dst_pts: Kx2 np.array |
| destination points matrix, each row is a pair of coordinates (x, y) |
| Returns: |
| ---------- |
| @tfm: 2x3 np.array |
| transform matrix from src_pts to dst_pts |
| """ |
|
|
| tfm = np.float32([[1, 0, 0], [0, 1, 0]]) |
| n_pts = src_pts.shape[0] |
| ones = np.ones((n_pts, 1), src_pts.dtype) |
| src_pts_ = np.hstack([src_pts, ones]) |
| dst_pts_ = np.hstack([dst_pts, ones]) |
|
|
| A, res, rank, s = np.linalg.lstsq(src_pts_, dst_pts_) |
|
|
| if rank == 3: |
| tfm = np.float32([[A[0, 0], A[1, 0], A[2, 0]], [A[0, 1], A[1, 1], A[2, 1]]]) |
| elif rank == 2: |
| tfm = np.float32([[A[0, 0], A[1, 0], 0], [A[0, 1], A[1, 1], 0]]) |
|
|
| return tfm |
|
|
|
|
| def warp_and_crop_face(src_img, facial_pts, reference_pts=None, crop_size=(96, 112), align_type='smilarity'): |
| """ |
| Function: |
| ---------- |
| apply affine transform 'trans' to uv |
| Parameters: |
| ---------- |
| @src_img: 3x3 np.array |
| input image |
| @facial_pts: could be |
| 1)a list of K coordinates (x,y) |
| or |
| 2) Kx2 or 2xK np.array |
| each row or col is a pair of coordinates (x, y) |
| @reference_pts: could be |
| 1) a list of K coordinates (x,y) |
| or |
| 2) Kx2 or 2xK np.array |
| each row or col is a pair of coordinates (x, y) |
| or |
| 3) None |
| if None, use default reference facial points |
| @crop_size: (w, h) |
| output face image size |
| @align_type: transform type, could be one of |
| 1) 'similarity': use similarity transform |
| 2) 'cv2_affine': use the first 3 points to do affine transform, |
| by calling cv2.getAffineTransform() |
| 3) 'affine': use all points to do affine transform |
| Returns: |
| ---------- |
| @face_img: output face image with size (w, h) = @crop_size |
| """ |
|
|
| if reference_pts is None: |
| if crop_size[0] == 96 and crop_size[1] == 112: |
| reference_pts = REFERENCE_FACIAL_POINTS |
| else: |
| default_square = False |
| inner_padding_factor = 0 |
| outer_padding = (0, 0) |
| output_size = crop_size |
|
|
| reference_pts = get_reference_facial_points(output_size, inner_padding_factor, outer_padding, |
| default_square) |
|
|
| ref_pts = np.float32(reference_pts) |
| ref_pts_shp = ref_pts.shape |
| if max(ref_pts_shp) < 3 or min(ref_pts_shp) != 2: |
| raise FaceWarpException('reference_pts.shape must be (K,2) or (2,K) and K>2') |
|
|
| if ref_pts_shp[0] == 2: |
| ref_pts = ref_pts.T |
|
|
| src_pts = np.float32(facial_pts) |
| src_pts_shp = src_pts.shape |
| if max(src_pts_shp) < 3 or min(src_pts_shp) != 2: |
| raise FaceWarpException('facial_pts.shape must be (K,2) or (2,K) and K>2') |
|
|
| if src_pts_shp[0] == 2: |
| src_pts = src_pts.T |
|
|
| if src_pts.shape != ref_pts.shape: |
| raise FaceWarpException('facial_pts and reference_pts must have the same shape') |
|
|
| if align_type == 'cv2_affine': |
| tfm = cv2.getAffineTransform(src_pts[0:3], ref_pts[0:3]) |
| elif align_type == 'affine': |
| tfm = get_affine_transform_matrix(src_pts, ref_pts) |
| else: |
| tfm = get_similarity_transform_for_cv2(src_pts, ref_pts) |
|
|
| face_img = cv2.warpAffine(src_img, tfm, (crop_size[0], crop_size[1])) |
|
|
| return face_img |
|
|