OpenCV 轮廓检测

使用OpenCV可以对图像的轮廓进行检测。这是之前用过的代码,挺简单的,回顾一下。主要要进行以下2步操作:

1.cvThreshold():对图像进行二值化处理

2.cvFindContours():查找图像轮廓

注意:这个过程中图像要转化为灰度图。

/***********************************************************************
	雷霄骅
 ***********************************************************************/
#include "stdafx.h"
#include "cv.h"
#include "cxcore.h"
#include "highgui.h"
 
int main( int argc, char** argv )
{
  //声明IplImage指针
  IplImage* pImg = NULL; 
  IplImage* pContourImg = NULL;
 
  CvMemStorage * storage = cvCreateMemStorage(0);
  CvSeq * contour = 0;
  int mode = CV_RETR_EXTERNAL;
 
  if( argc == 3)
      if(strcmp(argv[2], "all") == 0)
	mode = CV_RETR_CCOMP; //内外轮廓都检测
 
 
  //创建窗口
  cvNamedWindow("src", 1);
  cvNamedWindow("contour",1);
  cvNamedWindow("threshold",1);
 
 
  //载入图像,强制转化为Gray
  if( argc >= 2 && 
      (pImg = cvLoadImage( argv[1], 0)) != 0 )
    {
 
      cvShowImage( "src", pImg );
 
      //为轮廓显示图像申请空间
      //3通道图像,以便用彩色显示
      pContourImg = cvCreateImage(cvGetSize(pImg),
					  IPL_DEPTH_8U,
					  3);
      //copy source image and convert it to BGR image
      cvCvtColor(pImg, pContourImg, CV_GRAY2BGR);
//----阈值分割-------------------------------------------
	  cvThreshold( pImg, pImg, 150, 255, CV_THRESH_BINARY );
	  cvShowImage( "threshold", pImg );
//-----------------------------------------------
//查找contour----------------输入必须是二值图像
      cvFindContours( pImg, storage, &contour, sizeof(CvContour), 
		  mode, CV_CHAIN_APPROX_SIMPLE, cvPoint(0,0));
 
    }
  else
    {
      //销毁窗口
      cvDestroyWindow( "src" );
      cvDestroyWindow( "contour" );
      cvReleaseMemStorage(&storage);
 
      return -1;
    }
 
 
 
 
  //将轮廓画出    
  cvDrawContours(pContourImg, contour, 
		 CV_RGB(0,0,255), CV_RGB(255, 0, 0), 
		 2, 2, 8, cvPoint(0,0));
  //显示图像
  cvShowImage( "contour", pContourImg );
 
  cvWaitKey(0);
 
 
  //销毁窗口
  cvDestroyWindow( "src" );
  cvDestroyWindow( "contour" );
  //释放图像
  cvReleaseImage( &pImg ); 
  cvReleaseImage( &pContourImg ); 
 
  cvReleaseMemStorage(&storage);
 
  return 0;
}


源图像:

二值化以后:

轮廓:

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转载自leixiaohua1020.iteye.com/blog/2104694