直方图对比

对比直方图:compareHist()函数
double compareHist(InputArray H1,InputArray H2,int method)
或者double compareHist(const SparseMat&H1,const SparseMat&H2,int method)
示例程序:直方图对比

include "opencv2/highgui/highgui.hpp"

include "opencv2/imgproc/imgproc.hpp"

using namespace cv;

//-----------------------------------【ShowHelpText( )函数】-----------------------------
// 描述:输出一些帮助信息
//----------------------------------------------------------------------------------------------
static void ShowHelpText()
{
//输出欢迎信息和OpenCV版本
printf(" 非常感谢购买《OpenCV3编程入门》一书! ");
printf(" 此为本书OpenCV3版的第82个配套示例程序 ");
printf(" 当前使用的OpenCV版本为:" CV_VERSION );
printf(" ---------------------------------------------------------------------------- ");
//输出一些帮助信息
printf(" 欢迎来到【直方图对比】示例程序~ ");

}

//--------------------------------------【main( )函数】-----------------------------------------
// 描述:控制台应用程序的入口函数,我们的程序从这里开始执行
//-----------------------------------------------------------------------------------------------
int main( )
{
//【0】改变console字体颜色
system("color 2F");

//【1】显示帮助文字
ShowHelpText();

//【1】声明储存基准图像和另外两张对比图像的矩阵( RGB 和 HSV )
Mat srcImage_base, hsvImage_base;
Mat srcImage_test1, hsvImage_test1;
Mat srcImage_test2, hsvImage_test2;
Mat hsvImage_halfDown;

//【2】载入基准图像(srcImage_base) 和两张测试图像srcImage_test1、srcImage_test2,并显示
srcImage_base = imread( "1.jpg",1 );
srcImage_test1 = imread( "2.jpg", 1 );
srcImage_test2 = imread( "3.jpg", 1 );
//显示载入的3张图像
imshow("基准图像",srcImage_base);
imshow("测试图像1",srcImage_test1);
imshow("测试图像2",srcImage_test2);

// 【3】将图像由BGR色彩空间转换到 HSV色彩空间
cvtColor( srcImage_base, hsvImage_base,  COLOR_BGR2HSV );
cvtColor( srcImage_test1, hsvImage_test1, COLOR_BGR2HSV );
cvtColor( srcImage_test2, hsvImage_test2, COLOR_BGR2HSV );

//【4】创建包含基准图像下半部的半身图像(HSV格式)
hsvImage_halfDown = hsvImage_base( Range( hsvImage_base.rows/2, hsvImage_base.rows - 1 ), Range( 0, hsvImage_base.cols - 1 ) );

//【5】初始化计算直方图需要的实参
// 对hue通道使用30个bin,对saturatoin通道使用32个bin
int h_bins = 50; int s_bins = 60;
int histSize[] = { h_bins, s_bins };
// hue的取值范围从0到256, saturation取值范围从0到180
float h_ranges[] = { 0, 256 };
float s_ranges[] = { 0, 180 };
const float* ranges[] = { h_ranges, s_ranges };
// 使用第0和第1通道
int channels[] = { 0, 1 };

// 【6】创建储存直方图的 MatND 类的实例:
MatND baseHist;
MatND halfDownHist;
MatND testHist1;
MatND testHist2;

// 【7】计算基准图像,两张测试图像,半身基准图像的HSV直方图:
calcHist( &hsvImage_base, 1, channels, Mat(), baseHist, 2, histSize, ranges, true, false );
normalize( baseHist, baseHist, 0, 1, NORM_MINMAX, -1, Mat() );

calcHist( &hsvImage_halfDown, 1, channels, Mat(), halfDownHist, 2, histSize, ranges, true, false );
normalize( halfDownHist, halfDownHist, 0, 1, NORM_MINMAX, -1, Mat() );

calcHist( &hsvImage_test1, 1, channels, Mat(), testHist1, 2, histSize, ranges, true, false );
normalize( testHist1, testHist1, 0, 1, NORM_MINMAX, -1, Mat() );

calcHist( &hsvImage_test2, 1, channels, Mat(), testHist2, 2, histSize, ranges, true, false );
normalize( testHist2, testHist2, 0, 1, NORM_MINMAX, -1, Mat() );


//【8】按顺序使用4种对比标准将基准图像的直方图与其余各直方图进行对比:
for( int i = 0; i < 4; i++ )
{ 
	//进行图像直方图的对比
	int compare_method = i;
	double base_base = compareHist( baseHist, baseHist, compare_method );
	double base_half = compareHist( baseHist, halfDownHist, compare_method );
	double base_test1 = compareHist( baseHist, testHist1, compare_method );
	double base_test2 = compareHist( baseHist, testHist2, compare_method );
	//输出结果
	printf( " 方法 [%d] 的匹配结果如下:

 【基准图 - 基准图】:%f, 【基准图 - 半身图】:%f,【基准图 - 测试图1】: %f, 【基准图 - 测试图2】:%f 
-----------------------------------------------------------------
", i, base_base, base_half , base_test1, base_test2 );
}

printf( "检测结束。" );
waitKey(0);
return 0;

}

原文地址:https://www.cnblogs.com/shuguomeifuguo/p/12011981.html