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  • 在opencv3中实现机器学习之:利用正态贝叶斯分类

    opencv3.0版本中,实现正态贝叶斯分类器(Normal Bayes Classifier)分类实例

    #include "stdafx.h"
    #include "opencv2/opencv.hpp"
    using namespace cv;
    using namespace cv::ml;
    
    int main(int, char**)
    {
        int width = 512, height = 512;
        Mat image = Mat::zeros(height, width, CV_8UC3);  //创建窗口可视化
    
        // 设置训练数据
        int labels[10] = { 1, -1, 1, 1,-1,1,-1,1,-1,-1 };
        Mat labelsMat(10, 1, CV_32SC1, labels);
    
        float trainingData[10][2] = { { 501, 150 }, { 255, 10 }, { 501, 255 }, { 10, 501 }, { 25, 80 },
        { 150, 300 }, { 77, 200 } , { 300, 300 } , { 45, 250 } , { 200, 200 } };
        Mat trainingDataMat(10, 2, CV_32FC1, trainingData);
    
        // 创建贝叶斯分类器
        Ptr<NormalBayesClassifier> model=NormalBayesClassifier::create();
        
        // 设置训练数据
        Ptr<TrainData> tData =TrainData::create(trainingDataMat, ROW_SAMPLE, labelsMat);
    
        //训练分类器
        model->train(tData);
    
        Vec3b green(0, 255, 0), blue(255, 0, 0);
        // Show the decision regions given by the SVM
        for (int i = 0; i < image.rows; ++i)
        for (int j = 0; j < image.cols; ++j)
        {
            Mat sampleMat = (Mat_<float>(1, 2) << j, i);  //生成测试数据
            float response = model->predict(sampleMat);  //进行预测,返回1或-1
    
            if (response == 1)
                image.at<Vec3b>(i, j) = green;
            else if (response == -1)
                image.at<Vec3b>(i, j) = blue;
        }
    
        // 显示训练数据
        int thickness = -1;
        int lineType = 8;
        Scalar c1 = Scalar::all(0); //标记为1的显示成黑点
        Scalar c2 = Scalar::all(255); //标记成-1的显示成白点
        //绘图时,先宽后高,对应先列后行
        for (int i = 0; i < labelsMat.rows; i++)
        {
            const float* v = trainingDataMat.ptr<float>(i); //取出每行的头指针
            Point pt = Point((int)v[0], (int)v[1]);
            if (labels[i] == 1)
                circle(image, pt, 5, c1, thickness, lineType); 
            else
                circle(image, pt, 5, c2, thickness, lineType);
            
        }
    
        imshow("normal Bayessian classifier Simple Example", image); // show it to the user
        waitKey(0);
    
    }

    如果将数据换成是图片的像素值 ,则可实现图片的分类。

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  • 原文地址:https://www.cnblogs.com/denny402/p/5031613.html
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