import numpy as np import cv2 from scipy.spatial import Delaunay def applyAffineTransform(src, srcTri, dstTri, size) : warpMat = cv2.getAffineTransform( np.float32(srcTri), np.float32(dstTri) ) return cv2.warpAffine( src, warpMat, (size[0], size[1]), None, flags=cv2.INTER_LINEAR, borderMode=cv2.BORDER_REFLECT_101 ) def morphTriangle(dst_img, src_img, st, dt) : (h,w,c) = dst_img.shape sr = np.array( cv2.boundingRect(np.float32(st)) ) dr = np.array( cv2.boundingRect(np.float32(dt)) ) sRect = st - sr[0:2] dRect = dt - dr[0:2] d_mask = np.zeros((dr[3], dr[2], c), dtype = np.float32) cv2.fillConvexPoly(d_mask, np.int32(dRect), (1.0,)*c, 8, 0); imgRect = src_img[sr[1]:sr[1] + sr[3], sr[0]:sr[0] + sr[2]] size = (dr[2], dr[3]) warpImage1 = applyAffineTransform(imgRect, sRect, dRect, size) if c == 1: warpImage1 = np.expand_dims( warpImage1, -1 ) dst_img[dr[1]:dr[1]+dr[3], dr[0]:dr[0]+dr[2]] = dst_img[dr[1]:dr[1]+dr[3], dr[0]:dr[0]+dr[2]]*(1-d_mask) + warpImage1 * d_mask def morph_by_points (image, sp, dp): if sp.shape != dp.shape: raise ValueError ('morph_by_points() sp.shape != dp.shape') (h,w,c) = image.shape result_image = np.zeros(image.shape, dtype = image.dtype) for tri in Delaunay(dp).simplices: morphTriangle(result_image, image, sp[tri], dp[tri]) return result_image