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  • 基于JavaCv并发读取本地视频流并提取每帧32位dhash特征

    1.读取本地视频流,pom依赖

    依赖于 org.bytedeco下的javacv/opencv/ffmpeg 包

            <dependency>
                <groupId>org.bytedeco</groupId>
                <artifactId>javacv</artifactId>
                <version>1.4.3</version>
            </dependency>
            <dependency>
                <groupId>org.bytedeco.javacpp-presets</groupId>
                <artifactId>opencv</artifactId>
                <version>3.4.3-1.4.3</version>
                <classifier>linux-x86_64</classifier>
            </dependency>
            <dependency>
                <groupId>org.bytedeco.javacpp-presets</groupId>
                <artifactId>ffmpeg</artifactId>
                <version>4.0.2-1.4.3</version>
                <classifier>linux-x86_64</classifier>
            </dependency>

    2.读取本地视频流并解帧为 opencv_core.Mat

    File file = new File("/home/lab/javacv/t11.mp4");
    FFmpegFrameGrabber grabber = new FFmpegFrameGrabber(file);
    
    grabber.start();
    
    // 解帧为opencv_core.Mat
    List<opencv_core.Mat> mats = new ArrayList<>();
    for (int i = 0; i < grabber.getLengthInFrames(); i++) {
        Frame frame = grabber.grabImage();
        OpenCVFrameConverter.ToMat toMat = new OpenCVFrameConverter.ToMat();
        opencv_core.Mat mat = toMat.convert(frame);
        if (mat != null) {
            mats.add(mat.clone());
        }
    }
    
    grabber.stop();

    3.获取32位dhash特征

    dhash特征提取思路,图片Mat转为单通道的灰度图,并重置为5*5的Size,最后将其转储为长度为 25 的byte数组用以求取32位dhash特征

    // 声明空的灰度图 Mat
    opencv_core.Mat grayImg = new opencv_core.Mat(mat.rows(), mat.cols(), opencv_imgcodecs.IMREAD_GRAYSCALE);
    // 转储为灰度图
    opencv_imgproc.cvtColor(mat, grayImg, opencv_imgproc.COLOR_RGB2GRAY);
    // 修改Mat长宽size
    opencv_core.Mat resizedImg = new opencv_core.Mat();
    opencv_core.Size size = new opencv_core.Size(5,5);
    opencv_imgproc.resize(grayImg,resizedImg,size);
    // 转为 5*5 byte 数组
    byte[] bytePixels = new byte[5 * 5];
    resizedImg.data().get(bytePixels);
    int[] pixels = new int[bytePixels.length];
    for (int i=0; i<pixels.length; i++) {
        pixels[i] = bytePixels[i] & 0xff;
    }
    // 获取32位dhash特征
    int feature = 0;
    for (int j=0; j<4; j++) {
        for (int i=0; i<4; i++) {
            int colBit = pixels[i*5+j] > pixels[(i+1)*5+j] ? 1 : 0;
            feature = (feature << 1) + colBit;
            int rowBit = pixels[i*5+j] > pixels[i*5+j+1] ? 1 : 0 ;
            feature = (feature << 1) + rowBit;
        }
    }

    多线程部分,可参考该博: https://www.cnblogs.com/nyatom/p/10119306.html

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  • 原文地址:https://www.cnblogs.com/nyatom/p/10315915.html
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