1. 理想高通滤波

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#include<iostream>
#include<opencv2/opencv.hpp>
#include"mydft.h"

using namespace std;
using namespace cv;

int main(){

Mat img,img_gray,img_out,img_transform;
img = imread("/home/v/home.png");
if(img.empty()){
cout<<"could not load image..."<<endl;
return -1;
}
imshow("img",img);

cvtColor(img,img_gray,COLOR_BGR2GRAY);
imshow("img_gray",img_gray);

//1. 傅里叶变换,img_out为可显示频谱图,img_transform为傅里叶变换复数
mydft(img_gray,img_out,img_transform);
imshow("img_out",img_out);

//2. 理想高通滤波
Mat planes[] = {Mat_<float>(img_out),Mat::zeros(img_out.size(),CV_32F)};
split(img_transform,planes); // 分离通道,获取实部虚部
Mat img_transform_real = planes[0];
Mat img_transform_imag = planes[1];

int core_x = img_transform_real.rows/2;
int core_y = img_transform_real.cols/2;
int r = 20;
for(int i=0;i<img_transform_real.rows;i++){
for(int j=0;j<img_transform_real.cols;j++){
// 距离中心的距离大于设置的半径r的点所在的值设为0
if(((i-core_x)*(i-core_x)+(j-core_y)*(j-core_y))>r*r){
img_transform_real.at<float>(i,j) = 0;
img_transform_imag.at<float>(i,j) = 0;
}
}
}

planes[0] = img_transform_real;
planes[1] = img_transform_imag;
Mat img_transform_ilpf; // 定义理想高通滤波矩阵
merge(planes,2,img_transform_ilpf);

//3. 傅里叶变换
Mat iDft[] = {Mat_<float>(img_out),Mat::zeros(img_out.size(),CV_32F)};
idft(img_transform_ilpf,img_transform_ilpf);
split(img_transform_ilpf,iDft); // 分离通道,主要获取0通道
magnitude(iDft[0],iDft[1],img_out); // 计算复数的幅值,保存在iDft[0]
normalize(img_out,img_out,0,1,NORM_MINMAX); // 归一化处理
imshow("idft",iDft[0]);

waitKey(0);
return 0;
}