美肤磨皮算法OpenCV3实现
参考一个大神的美肤公式:
Dest =(Src * (100 - Opacity) + (Src + 2 * GuassBlur(EPFFilter(Src) - Src + 128) - 256) * Opacity) /100
OpenCV3实现算法如下:
```python
# -*- coding: utf-8 -*-
'''
美肤-磨皮算法
Dest =(Src * (100 - Opacity) + (Src + 2 * GuassBlur(EPFFilter(Src) - Src + 128) - 256) * Opacity) /100 ;
'''
import cv2
import numpy as np
def beauty_face(img):
dst = np.zeros_like(img)
#int value1 = 3, value2 = 1; 磨皮程度与细节程度的确定
v1 = 3
v2 = 1
dx = v1 * 5 # 双边滤波参数之一
fc = v1 * 12.5 # 双边滤波参数之一
p = 0.1
temp4 = np.zeros_like(img)
temp1 = cv2.bilateralFilter(img,dx,fc,fc)
temp2 = cv2.subtract(temp1,img);
temp2 = cv2.add(temp2,(10,10,10,128))
temp3 = cv2.GaussianBlur(temp2,(2*v2 - 1,2*v2-1),0)
temp4 = cv2.add(img,temp3)
dst = cv2.addWeighted(img,p,temp4,1-p,0.0)
dst = cv2.add(dst,(10, 10, 10,255))
return dst
img = cv2.imread('../datas/s3.png')
dst = beauty_face(img)
cv2.imshow("SRC",img)
cv2.imshow("DST",dst)
cv2.waitKey()
cv2.destroyAllWindows()
运行结果: