基于Java实现图片相似度对比的示例代码

很多时候我们需要将两个图片进行对比,确定两个图片的相似度。本文将利用Java和OpenCV库实现图片相似度对比,感兴趣的可以动手尝试一下

前言

很多时候我们需要将两个图片进行对比,确定两个图片的相似度。一般常用的就是openCv库,这里就是使用openCv进行图片相似度对比。

依赖

<dependency>
          <groupId>org.bytedeco</groupId>
          <artifactId>javacv</artifactId>
          <version>1.3.3</version>
      </dependency>
<dependency>
          <groupId>org.bytedeco</groupId>
          <artifactId>javacv-platform</artifactId>
          <version>1.3.3</version>
</dependency>

基本算法

基本算法

1、判断高度是否一致,如果不一致,需要截取到高度一致

2、截取算法

a、因为图片有通用的顶部bar和底部bar,需要先找到底部bar。

b、截取长图片的部分,然后和底部bar拼接,就完成了图片截取。

c、这里设置一个默认的宽度,然后对比,找到相同部分,就是底部bar。

相关代码

package com.test.image;
 
import org.bytedeco.javacpp.BytePointer;
import org.bytedeco.javacpp.opencv_core;
import org.slf4j.Logger;
import org.slf4j.LoggerFactory;
 
import static org.bytedeco.javacpp.opencv_core.*;
import static org.bytedeco.javacpp.opencv_imgcodecs.imread;
import static org.bytedeco.javacpp.opencv_imgcodecs.imwrite;
import static org.bytedeco.javacpp.opencv_imgproc.*;
import static org.bytedeco.javacpp.opencv_imgproc.THRESH_BINARY;
 
public class ImageService {
    private static Logger Log = LoggerFactory.getLogger(ImageService.class);
 
 
    public static void compareImage( String targetImageUrl, String baseImageUrl ){
 
 
        /**
         * 读取图片到数组
         */
        opencv_core.Mat targetImage = imread(targetImageUrl);
        opencv_core.Mat baseImage = imread(baseImageUrl);
        Log.info("read image success");
 
 
        /**
         * 首先对比的两个图片宽度要一致,否则不能对比
         */
        if(targetImage.size().width()==baseImage.size().width()){
 
 
            /**
             * 基本算法
             * 1、判断高度是否一致,如果不一致,需要截取到高度一致
             * 2、截取算法
             *    a、因为图片有通用的顶部bar和底部bar,需要先找到底部bar。
             *    b、截取长图片的部分,然后和底部bar拼接,就完成了图片截取。
             *    c、这里设置一个默认的宽度,然后对比,找到相同部分,就是底部bar。
             */
 
            if(targetImage.size().height()!=baseImage.size().height()){
 
                if(targetImage.size().height()>baseImage.size().height()){
                    targetImage = dealLongImage(targetImage.clone(),baseImage.clone());
                } else {
                    baseImage = dealLongImage(baseImage.clone(),targetImage.clone());
                }
            }
 
            /**
             * 进行图片差异对比
             */
            Mat imageDiff = compareImage(targetImage,baseImage);
 
            double nonZeroPercent = 100 * (double) countNonZero(imageDiff) / (imageDiff.size().height() * imageDiff.size().width());
 
            /**
             * 展示图片,将标准图,对比图,差异图,拼接成一张大图。
             * 其中差异图会用绿色标出差异的部分。
             */
            set3ImageTo1("", targetImage, baseImage, showDiff(imageDiff, baseImage), "xxxx.jpg" );
 
 
            imageDiff.release();
            baseImage.release();
            targetImage.release();
 
        } else {
 
        }
    }
 
 
    /**
     * 2、截取算法
     *    a、因为图片有通用的顶部bar和底部bar,需要先找到底部bar。
     *    b、截取长图片的部分,然后和底部bar拼接,就完成了图片截取。
     *    c、这里设置一个默认的宽度,然后对比,找到相同部分,就是底部bar。
     * @return bar的高度
     */
    public static int interceptBarHeight( Mat longImage, Mat shortImage ){
 
        /**
         * 设置的默认高度。
         */
        int imageSearchMaxHeight = 400;
        Mat subImageLong = new Mat(longImage, new Rect(0, longImage.size().height() - imageSearchMaxHeight, longImage.size().width(), imageSearchMaxHeight));
        Mat subImageShort = new Mat(shortImage, new Rect(0, shortImage.size().height() - imageSearchMaxHeight, shortImage.size().width(), imageSearchMaxHeight));
 
        opencv_core.Mat imageDiff = compareImage(subImageLong,subImageShort);
 
        for (int row = imageDiff.size().height() - 1; row > -1; row--) {
            for (int col = 0; col < imageDiff.size().width(); col++) {
                BytePointer bytePointer = imageDiff.ptr(row, col);
                if (bytePointer.get(0) != 0) {
                    imageDiff.release();
                    return imageSearchMaxHeight-row;
                }
            }
        }
        return imageSearchMaxHeight;
    }
 
    /**
     * 这里将两张图片作为参数传入,
     * 获取到共同的底部之后。对长图进行截取,
     * 然后将顶部和底部拼接在一起就ok了。
     * @param longImage
     * @param shortImage
     * @return
     */
    public static opencv_core.Mat dealLongImage( Mat longImage, Mat shortImage ){
 
        int diffHeight = longImage.size().height()-shortImage.size().height();
        int barHeight = interceptBarHeight(longImage,shortImage);
 
        opencv_core.Mat dealedLongImage = new Mat(longImage,new Rect(0,0,longImage.size().width(),shortImage.size().height()-barHeight) );
 
        opencv_core.Mat imageBar = new Mat(longImage,new Rect(0,longImage.size().height()-barHeight,longImage.size().width(),barHeight) );
 
        opencv_core.Mat dealedLongImageNew = dealedLongImage.clone();
 
        /**
         * 将头部和底部bar拼接在一起。
         */
        vconcat(dealedLongImage, imageBar, dealedLongImageNew);
        imageBar.release();
        dealedLongImage.release();
        return dealedLongImageNew;
    }
 
 
    public static opencv_core.Mat compareImage( opencv_core.Mat targetImage, opencv_core.Mat baseImage ){
 
        opencv_core.Mat targetImageClone = targetImage.clone();
        opencv_core.Mat baseImageColne = baseImage.clone();
        opencv_core.Mat imgDiff1 = targetImage.clone();
        opencv_core.Mat imgDiff = targetImage.clone();
 
        /**
         * 首先将图片转成灰度图,
         */
        cvtColor(targetImage, targetImageClone, COLOR_BGR2GRAY);
        cvtColor(baseImage, baseImageColne, COLOR_BGR2GRAY);
 
        /**
         * 两个矩阵相减,获得差异图。
         */
        subtract(targetImageClone, baseImageColne, imgDiff1);
        subtract(baseImageColne, targetImageClone, imgDiff);
 
        /**
         * 按比重进行叠加。
         */
        addWeighted(imgDiff, 1, imgDiff1, 1, 0, imgDiff);
 
        /**
         * 图片二值化,大于24的为1,小于24的为0
         */
        threshold(imgDiff, imgDiff, 24, 255, THRESH_BINARY);
        erode(imgDiff, imgDiff, new opencv_core.Mat());
        dilate(imgDiff, imgDiff, new opencv_core.Mat());
        return imgDiff;
    }
 
 
    private static void set3ImageTo1(String logTag, Mat imageSrc, Mat imageBaseSrc, Mat imageDest, String mergePicResult ) {
 
        if (imageSrc.size().width() == imageDest.size().width() && imageBaseSrc.size().height() == imageDest.size().height()) {
            Mat img = imageSrc.clone();
            Mat imgBase = imageBaseSrc.clone();
            Mat imgDest = imageDest.clone();
            Mat imgLine = new Mat(imgBase.size().height(), 1, CV_8UC3, new Scalar(0, 0, 0, 255));
            Mat largeImg2 = new Mat();
            Mat largeImg3 = new Mat();
            Mat largeImg4 = new Mat();
            Mat largeImg5 = new Mat();
            /**
             * 横向拼接。
             */
            hconcat(img, imgLine, largeImg2);
            hconcat(largeImg2, imgBase, largeImg3);
            hconcat(largeImg3, imgLine, largeImg4);
            hconcat(largeImg4, imgDest, largeImg5);
 
            imwrite( mergePicResult, largeImg5);
 
            img.release();
            imgBase.release();
            imgDest.release();
            imgLine.release();
            largeImg2.release();
            largeImg3.release();
            largeImg4.release();
            largeImg5.release();
        } else {
            Log.info(logTag+" pictures merge failed");
            imwrite( mergePicResult, imageDest);
        }
 
    }
 
 
    private static Mat showDiff(Mat imgDiff, Mat imgBase) {
 
        MatVector rgbFrame = new MatVector();
        Mat imgDest = imgBase.clone();
        split(imgBase, rgbFrame);
        subtract(rgbFrame.get(2), imgDiff, rgbFrame.get(2));
        subtract(rgbFrame.get(0), imgDiff, rgbFrame.get(0));
        addWeighted(rgbFrame.get(1), 1, imgDiff, 1, 0, rgbFrame.get(1));
        merge(rgbFrame, imgDest);
        return imgDest;
    }
 
 
    public static void main( String[] args ){
 
        String targetImageUrl = "2022-03-15-11-37-35-2ouA9yi9gjsGWHDAoaZTaNe4awr0xSlohFq0gF0m.png";
        String baseImageUrl = "2022-03-15-11-37-38-njH2kVzd3boX1i8q8bLCfnnIj8xTLyHhHufgs9rp.png";
 
        compareImage(targetImageUrl,baseImageUrl);
    }
 
}

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