【OpenCV图像处理14】图像分割与修复

文章目录

十四、图像分割与修复

1、图像分割

图像分割: 将前景物体从背景中分离出来。

图像分割的方法:

  • 传统的图像分割方法
  • 分水岭法
  • GrabCut法
  • MeanShift法
  • 背景抠图
  • 基于深度学习的图像分割方法

1.1 分水岭法

1、分水岭法的原理:

【OpenCV图像处理14】图像分割与修复

2、分水岭法的问题:

【OpenCV图像处理14】图像分割与修复

图像存在过多的极小区域,从而产生许多小的集水盆。

3、分水岭法的基本步骤:

  • 标记背景
  • 标记前景
  • 标记未知域
  • 进行分割

4、实战:分割硬币

watershed() 用法:

cv2.watershed(image, markers)

参数说明:

  • markers:前景、背景设置不同的值用以区分它们

原图像:

【OpenCV图像处理14】图像分割与修复

获取背景:

【OpenCV图像处理14】图像分割与修复

获取前景:

【OpenCV图像处理14】图像分割与修复

获取未知域:

【OpenCV图像处理14】图像分割与修复

4.1 获取背景:


ret, thresh = cv2.threshold(gray, 0, 255, cv2.THRESH_BINARY_INV + cv2.THRESH_OTSU)

kernel = np.ones((3, 3), np.int8)
open1 = cv2.morphologyEx(thresh, cv2.MORPH_OPEN, kernel, iterations=2)

bg = cv2.dilate(open1, kernel, iterations=1)

cv2.imshow('thresh', thresh)
cv2.imshow('bg', bg)

【OpenCV图像处理14】图像分割与修复

4.2 获取前景:

距离变换: distanceTransform()用法

cv2.distanceTransform(src, distanceType, maskSize, dst: None, dstType: None)

参数说明:

  • distanceType:DIST_L1(绝对值),DIST_L2(勾股定理)
  • maskSize:L1:3,L2:5

dist = cv2.distanceTransform(open1, cv2.DIST_L2, 5)

ret, fg = cv2.threshold(dist, 0.7*dist.max(), 255, cv2.THRESH_BINARY)

cv2.imshow('dist', dist)
cv2.imshow('fg', fg)

使用Matplotlib画出dist:

【OpenCV图像处理14】图像分割与修复

【OpenCV图像处理14】图像分割与修复

4.3 获取未知域:

求连通域: connectedComponents()用法

cv2.connectedComponents(image, labels: None, connectivity: None, ltype: None)

参数说明:

  • connectivity:4,8(默认)

fg = np.uint8(fg)
unknown = cv2.subtract(bg, fg)

ret, marker = cv2.connectedComponents(fg)

cv2.imshow('unknown', unknown)

【OpenCV图像处理14】图像分割与修复

4.4 进行分割:


result = cv2.watershed(img, marker)
img[result == -1] = [0, 0, 255]

cv2.imshow('img', img)

【OpenCV图像处理14】图像分割与修复

代码实现(完整代码):

import cv2
import numpy as np
from matplotlib import pyplot as plt

img = cv2.imread('../resource/money.png')
gray = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY)

ret, thresh = cv2.threshold(gray, 0, 255, cv2.THRESH_BINARY_INV + cv2.THRESH_OTSU)

kernel = np.ones((3, 3), np.int8)
open1 = cv2.morphologyEx(thresh, cv2.MORPH_OPEN, kernel, iterations=2)

bg = cv2.dilate(open1, kernel, iterations=1)

dist = cv2.distanceTransform(open1, cv2.DIST_L2, 5)

ret, fg = cv2.threshold(dist, 0.7 * dist.max(), 255, cv2.THRESH_BINARY)

fg = np.uint8(fg)
unknown = cv2.subtract(bg, fg)

ret, marker = cv2.connectedComponents(fg)

marker += 1
marker[unknown == 255] = 0

result = cv2.watershed(img, marker)
img[result == -1] = [0, 0, 255]

cv2.imshow('img', img)
cv2.waitKey(0)
cv2.destroyAllWindows()

1.2 GrabCut法

GrabCut:通过交互的方式获得前景物体。

基本原理:

(1):用户可以指定前景的大体区域,剩下的为背景区域。

(2):用户还可以明确指定某些地方为前景或背景。

(3):GrabCut采用分段迭代的方法分析前景物体形成模型树。

(3):最后根据权重决定某个像素是前景还是背景。

实战步骤:

(1):主体结构

(2):鼠标事件的处理

(3):调用GrabCut实现图像分割

1、主体结构:

class App:
    def onmouse(self, event, x, y, flags, param):
        print('onmouse')

    def run(self):
        print('run')

        cv2.namedWindow('input')
        cv2.setMouseCallback('input', self.onmouse)

        img = cv2.imread('../resource/lena.bmp')
        cv2.imshow('input', img)
        cv2.waitKey(0)
        cv2.destroyAllWindows()

App().run()

【OpenCV图像处理14】图像分割与修复

2、鼠标事件的处理

class App:
    flag_rect = False
    startX = 0
    startY = 0

    def onmouse(self, event, x, y, flags, param):
        if event == cv2.EVENT_LBUTTONDOWN:
            self.flag_rect = True
            self.startX = x
            self.startY = y
            print('LBUTTONDOWN: 左键按下')
        elif event == cv2.EVENT_LBUTTONUP:
            self.flag_rect = False
            cv2.rectangle(self.img, (self.startX, self.startY), (x, y), (0, 0, 255), 3)
            print('LBUTTONUP: 左键抬起')
        elif event == cv2.EVENT_MOUSEMOVE:
            if self.flag_rect == True:
                self.img = self.img2.copy()
                cv2.rectangle(self.img, (self.startX, self.startY), (x, y), (0, 255, 0), 3)
            print('MOUSEMOVE: 鼠标移动')
        print('onmouse')

    def run(self):
        print('run')

        cv2.namedWindow('input')
        cv2.setMouseCallback('input', self.onmouse)

        self.img = cv2.imread('../resource/lena.bmp')
        self.img2 = self.img.copy()

        while (1):
            cv2.imshow('input', self.img)
            key = cv2.waitKey(100)
            if key == 27:
                break

App().run()

【OpenCV图像处理14】图像分割与修复

3、调用GrabCut实现图像分割

grabCut() 用法:

cv2.grabCut(img, mask, rect, bgdModel, fgdModel, iterCount, mode: None)

参数说明:

  • mask:生成的掩码
  • BGD:背景,0
  • FGD:前景,1
  • PR_BGD:可能是背景,2
  • PR_FGD:可能是前景,3
  • bgdModel, fgdModel:np.float64 type zero arrays of size(1, 65)
  • mode:模式
  • GC_INIT_WITH_RECT:指定某个区域,即在该区域中找前景
  • GC_INIT_WITH_MASK:如果是第二次或第三次,可使用该参数再次迭代

代码实现(完整代码):

import cv2
import numpy as np

class App:
    flag_rect = False
    rect = (0, 0, 0, 0)
    startX = 0
    startY = 0

    def onmouse(self, event, x, y, flags, param):
        if event == cv2.EVENT_LBUTTONDOWN:
            self.flag_rect = True
            self.startX = x
            self.startY = y
            print('LBUTTONDOWN: 左键按下')
        elif event == cv2.EVENT_LBUTTONUP:
            self.flag_rect = False
            cv2.rectangle(self.img, (self.startX, self.startY), (x, y), (0, 0, 255), 3)
            self.rect = (min(self.startX, x), min(self.startY, y), abs(self.startX - x), abs(self.startY - y))
            print('LBUTTONUP: 左键抬起')
        elif event == cv2.EVENT_MOUSEMOVE:
            if self.flag_rect == True:
                self.img = self.img2.copy()
                cv2.rectangle(self.img, (self.startX, self.startY), (x, y), (0, 255, 0), 3)
            print('MOUSEMOVE: 鼠标移动')
        print('onmouse')

    def run(self):
        print('run')

        cv2.namedWindow('input')
        cv2.setMouseCallback('input', self.onmouse)

        self.img = cv2.imread('../resource/lena.bmp')
        self.img2 = self.img.copy()
        self.mask = np.zeros(self.img.shape[:2], dtype=np.uint8)
        self.output = np.zeros(self.img.shape, np.uint8)

        while (1):
            cv2.imshow('input', self.img)
            cv2.imshow('output', self.output)
            key = cv2.waitKey(100)
            if key == 27:
                break

            if key == ord('g'):
                bgdModel = np.zeros((1, 65), np.float64)
                fgdModel = np.zeros((1, 65), np.float64)
                cv2.grabCut(self.img2, self.mask, self.rect, bgdModel, fgdModel, 1, cv2.GC_INIT_WITH_RECT)
            mask2 = np.where(((self.mask == 1) | (self.mask == 3)), 255, 0).astype('uint8')
            self.output = cv2.bitwise_and(self.img2, self.img2, mask=mask2)

App().run()

【OpenCV图像处理14】图像分割与修复

1.3 MeanShift法

严格来说,该方法并不是用来对图像分割的,而是在色彩层面的平滑滤波。

它会中和色彩分布相近的颜色,平滑色彩细节,侵蚀掉面积较小的颜色区域。以图像上任一点p为圆心,半径为sp,色彩幅值为sr进行不断的迭代。

【OpenCV图像处理14】图像分割与修复

pyrMeanShiftFiltering() 用法:

cv2.pyrMeanShiftFiltering(src, sp, sr, dst: None, maxLevel: None, termcrit: None)

参数说明:

  • sp:圆的半径
  • sp:色彩幅值

代码实现:

import cv2

img = cv2.imread('../resource/flower.png')

img_mean = cv2.pyrMeanShiftFiltering(img, 20, 30)
img_canny = cv2.Canny(img_mean, 150, 300)

contours, _ = cv2.findContours(img_canny, cv2.RETR_EXTERNAL, cv2.CHAIN_APPROX_SIMPLE)
cv2.drawContours(img, contours, -1, (0, 0, 255), 2)

cv2.imshow('img', img)
cv2.imshow('img_mean', img_mean)
cv2.imshow('img_canny', img_canny)
cv2.waitKey(0)
cv2.destroyAllWindows()

【OpenCV图像处理14】图像分割与修复

【OpenCV图像处理14】图像分割与修复

【OpenCV图像处理14】图像分割与修复

2、视频前后景分离(视频背景抠图)

原视频:

原理:

  • 视频是一组连续的帧(一幅幅图组成)
  • 帧与帧之间关系密切(GOP)
  • 在GOP中,背景几乎是不变的

MOG去背景: 混合高斯模型为基础的前景/背景分割算法

createBackgroundSubtractorMOG() 用法:

cv2.bgsegm.createBackgroundSubtractorMOG(history: None, nmixtures: None, backgroundRatio: None, noiseSigma: None)

参数说明:

  • history:参考帧,默认 200
  • nmixtures:高斯范围值,默认 5
  • backgroundRatio:背景比率,默认 0.7
  • noiseSigma:自动降噪,默认 0

代码实现:

import cv2

cap = cv2.VideoCapture('../resource/Car.mp4')

mog = cv2.bgsegm.createBackgroundSubtractorMOG()

while (True):
    ret, frame = cap.read()
    fgmask = mog.apply(frame)

    cv2.imshow('img', fgmask)

    key = cv2.waitKey(10)
    if key == 27:
        break

cap.release()
cv2.destroyAllWindows()

【OpenCV图像处理14】图像分割与修复

3.1 MOG2去背景

同MOG类似,不过对亮度产生的阴影有更好的识别.

createBackgroundSubtractorMOG2() 用法:

cv2.createBackgroundSubtractorMOG2(history: None, varThreshold: None, detectShadows: None)

参数说明:

  • history:参数帧,默认 500
  • detectShadows:是否检测阴影,默认 True

代码实现:

import cv2

cap = cv2.VideoCapture('../resource/Car.mp4')

mog2 = cv2.createBackgroundSubtractorMOG2()

while (True):
    ret, frame = cap.read()
    fgmask = mog2.apply(frame)

    cv2.imshow('img', fgmask)

    key = cv2.waitKey(10)
    if key == 27:
        break

cap.release()
cv2.destroyAllWindows()

【OpenCV图像处理14】图像分割与修复

3.2 GMG去背景

静态背景图像估计和每个像素的贝叶斯分割,抗噪性更强。

createBackgroundSubtractorGMG() 用法:

cv2.bgsegm.createBackgroundSubtractorGMG(initializationFrames: None, decisionThreshold: None)

参数说明:

  • initializationFrames:初始帧数,默认 120

代码实现:

import cv2

cap = cv2.VideoCapture('../resource/Car.mp4')

gmg = cv2.bgsegm.createBackgroundSubtractorGMG(initializationFrames=10)

while (True):
    ret, frame = cap.read()
    fgmask = gmg.apply(frame)

    cv2.imshow('img', fgmask)

    key = cv2.waitKey(10)
    if key == 27:
        break

cap.release()
cv2.destroyAllWindows()

【OpenCV图像处理14】图像分割与修复

3、图像修复

图像修复效果:

【OpenCV图像处理14】图像分割与修复

inpaint() 用法:

cv2.inpaint(src, inpaintMask, inpaintRadius, flags, dst: None)

参数说明:

  • inpaintMask:修复掩码
  • inpaintRadius:每个点的圆形领域半径
  • flags:
  • INPAINT_NS
  • INPAINT_TELEA
  • dst:输出与src具有相同大小和类型的图像

代码实现:

import cv2
import numpy as np

img = cv2.imread('../resource/cvLogo_Ori.png')
mask = cv2.imread('../resource/cvLogo_Mask.png', 0)

dst = cv2.inpaint(img, mask, 5, cv2.INPAINT_TELEA)

cv2.imshow('img', np.hstack((img, dst)))
cv2.waitKey(0)
cv2.destroyAllWindows()

【OpenCV图像处理14】图像分割与修复

Original: https://blog.csdn.net/m0_70885101/article/details/126720660
Author: LeoATLiang
Title: 【OpenCV图像处理14】图像分割与修复

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