27局部与分割-分水岭算法

27局部与分割-分水岭算法

基本原理:

Watershed就是传说中的分水岭算法, 它将一幅图像看成是一块有湖泊和山川组成的地形。 图像灰度值大的像素对应海拔高的山地, 灰度值低的像素对应于海拔低的盆地。Watershed分割是模拟湖水上涨并在湖泊相遇处筑坝的过程。一般水是从湖泊的最低处灌进去,最低点对应于图像的局部最低点。 但确定局部最低点的自动话算法得到的结果往往不尽如人意, 所以常常要手动指定marker点。

代码实现:

#include "cv.h"
#include "highgui.h"
#include <stdio.h>
#include <stdlib.h>

IplImage* marker_mask = 0;
IplImage* markers = 0;
IplImage* img0 = 0, *img = 0, *img_gray = 0, *wshed = 0;
CvPoint prev_pt = {-1,-1};
//event:鼠标事件,x,y:鼠标对应的位置,flags:每一位标志着不同的事件,param:相关参数或者为NULL
void on_mouse( int event, int x, int y, int flags, void* param )
{
    if( !img )
        return;
//-----------------------------【释放左键或者鼠标事件不是左键】-------------------------------
    if( event == CV_EVENT_LBUTTONUP || !(flags & CV_EVENT_FLAG_LBUTTON) )
        prev_pt = cvPoint(-1,-1);//初始化prev点
//--------------------------------------------------------------------------------------------
//--------------------------------------【按下左键】----------------------------------------—-
    else if( event == CV_EVENT_LBUTTONDOWN )
        prev_pt = cvPoint(x,y);//将坐标值赋给prev点
//--------------------------------------------------------------------------------------------
//-----------------------------【移动鼠标并且左键事件有被触发过】-----------------------------
    else if( event == CV_EVENT_MOUSEMOVE && (flags & CV_EVENT_FLAG_LBUTTON) )
    {
        CvPoint pt = cvPoint(x,y);//移动后的坐标值
        if( prev_pt.x < 0 )
            prev_pt = pt;
        cvLine( marker_mask, prev_pt, pt, cvScalarAll(255), 5, 8, 0 );//在mask图像上绘制白色的线
        cvLine( img, prev_pt, pt, cvScalarAll(255), 5, 8, 0 );//在原图像的副本上绘制白色的线
        prev_pt = pt;
        cvShowImage( "image", img );
    }
//--------------------------------------------------------------------------------------------
}


int main( int argc, char** argv )
{
//--------------------------------------【LoadImage】--------------------------------------
    char* filename = argc >= 2 ? argv[1] : (char*)"fruits.jpg";
    CvRNG rng = cvRNG(-1);//创建随机数
    /*cvGetTickCount()
      返回64位长整数的时间数据,在OpenCV是为CvRNG设置的专用种子。

      cvGetTickFrequency()
      返回系统时钟频率

      cvRandInt()
      返回均匀分布32位的随机数,

      cvRandReal()
      返回均匀分布,0~1之间的随机小数
    */

    if( (img0 = cvLoadImage(filename,1)) == 0 )
        return 0;

    printf( "Hot keys: \n"
            "\tESC - quit the program\n"
            "\tr - restore the original image\n"
            "\tw or ENTER - run watershed algorithm\n"
            "\t\t(before running it, roughly mark the areas on the image)\n"
            "\t  (before that, roughly outline several markers on the image)\n" );

    cvNamedWindow( "image", 1 );
    cvNamedWindow( "watershed transform", 1 );
//--------------------------------------------------------------------------------------------
    img = cvCloneImage( img0 );//复制原图像到副本,用于显示
    img_gray = cvCloneImage( img0 );
    wshed = cvCloneImage( img0 );//图像颜色蒙板
    marker_mask = cvCreateImage( cvGetSize(img), 8, 1 );//创建mask图像
    markers = cvCreateImage( cvGetSize(img), IPL_DEPTH_32S, 1 );
    cvCvtColor( img, marker_mask, CV_BGR2GRAY );
    cvCvtColor( marker_mask, img_gray, CV_GRAY2BGR );

    cvZero( marker_mask );//初始化为0
    cvZero( wshed );//初始化为0
    cvShowImage( "image", img );
    cvShowImage( "watershed transform", wshed );
    cvSetMouseCallback( "image", on_mouse, 0 );//设置鼠标的回调函数

    for(;;)
    {
        int c = cvWaitKey(0);//判断输入的命令

        if( (char)c == 27 )//退出键 ESC
            break;

        if( (char)c == 'r' )//归零命令
        {
            cvZero( marker_mask );//mask图像置0
            cvCopy( img0, img );//重新获取副本图像
            cvShowImage( "image", img );//显示副本图像
        }

        if( (char)c == 'w' || (char)c == '\n' )//执行算法命令:W或者enter
        {
            CvMemStorage* storage = cvCreateMemStorage(0);//创建内存储存器,0代表内存块采用默认的大小
            CvSeq* contours = 0;
            CvMat* color_tab;
            int i, j, comp_count = 0;
            //cvSaveImage( "wshed_mask.png", marker_mask );
            //marker_mask = cvLoadImage( "wshed_mask.png", 0 );
            cvFindContours( marker_mask, storage, &contours, sizeof(CvContour),
                            CV_RETR_CCOMP, CV_CHAIN_APPROX_SIMPLE );//查找标记图像的轮廓
            cvZero( markers );//mask轮廓图片置零
            for( ; contours != 0; contours = contours->h_next, comp_count++ )
            {
                cvDrawContours( markers, contours, cvScalarAll(comp_count+1),
                                cvScalarAll(comp_count+1), -1, -1, 8, cvPoint(0,0) );//1,2,3不同轮廓使用不同的亮度用于区分区域
            }

            color_tab = cvCreateMat( 1, comp_count, CV_8UC3 );//创建一个矩阵大小为:1x标记数量
//--------------------------------------【给不同的标记区域随机分配不同的颜色】-------------          
            for( i = 0; i < comp_count; i++ )
            {
                uchar* ptr = color_tab->data.ptr + i*3;
                ptr[0] = (uchar)(cvRandInt(&rng)%180 + 50);
                ptr[1] = (uchar)(cvRandInt(&rng)%180 + 50);
                ptr[2] = (uchar)(cvRandInt(&rng)%180 + 50);
            }
//------------------------------------------------------------------------------------------
            {
            double t = (double)cvGetTickCount();//获取当前时间
            cvWatershed( img0, markers );//markers:输入为标记的区域数量,返回为每个像素点的标记
            t = (double)cvGetTickCount() - t;
            printf( "exec time = %gms\n", t/(cvGetTickFrequency()*1000.) );//打印执行的时间
            }

            // paint the watershed image
            for( i = 0; i < markers->height; i++ )
                for( j = 0; j < markers->width; j++ )
                {
                    int idx = CV_IMAGE_ELEM( markers, int, i, j );//获取标记图像的值,单通道图像
                    uchar* dst = &CV_IMAGE_ELEM( wshed, uchar, i, j*3 );//j*3,因为图像为3通道
                    if( idx == -1 )//-1代表住起来的坝
                        dst[0] = dst[1] = dst[2] = (uchar)255;//水坝像素点,即分界线设置为白色
                    else if( idx <= 0 || idx > comp_count )//0和大于标记区域的值代表未标记的像素点
                        dst[0] = dst[1] = dst[2] = (uchar)0; // should not get here
                    else//被标记的像素点设置相应的颜色值
                    {
                        uchar* ptr = color_tab->data.ptr + (idx-1)*3;
                        dst[0] = ptr[0]; dst[1] = ptr[1]; dst[2] = ptr[2];
                    }
                }

            cvAddWeighted( wshed, 0.5, img_gray, 0.5, 0, wshed );//dst(I)=src1(I)*alpha+src2(I)*beta+gamma
            cvShowImage( "watershed transform", wshed );
            cvReleaseMemStorage( &storage );
            cvReleaseMat( &color_tab );
        }
    }

    return 1;
}

最终结果图片:

这里写图片描述

猜你喜欢

转载自blog.csdn.net/z827997640/article/details/79995471
今日推荐