opencv/samples/cpp/logistic_regression.cpp
2014-08-18 19:06:58 +04:00

174 lines
6.6 KiB
C++

///////////////////////////////////////////////////////////////////////////////////////
// IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING.
// By downloading, copying, installing or using the software you agree to this license.
// If you do not agree to this license, do not download, install,
// copy or use the software.
// This is a implementation of the Logistic Regression algorithm in C++ in OpenCV.
// AUTHOR:
// Rahul Kavi rahulkavi[at]live[at]com
//
// contains a subset of data from the popular Iris Dataset (taken from "http://archive.ics.uci.edu/ml/datasets/Iris")
// # You are free to use, change, or redistribute the code in any way you wish for
// # non-commercial purposes, but please maintain the name of the original author.
// # This code comes with no warranty of any kind.
// #
// # You are free to use, change, or redistribute the code in any way you wish for
// # non-commercial purposes, but please maintain the name of the original author.
// # This code comes with no warranty of any kind.
// # Logistic Regression ALGORITHM
// License Agreement
// For Open Source Computer Vision Library
// Copyright (C) 2000-2008, Intel Corporation, all rights reserved.
// Copyright (C) 2008-2011, Willow Garage Inc., all rights reserved.
// Third party copyrights are property of their respective owners.
// Redistribution and use in source and binary forms, with or without modification,
// are permitted provided that the following conditions are met:
// * Redistributions of source code must retain the above copyright notice,
// this list of conditions and the following disclaimer.
// * Redistributions in binary form must reproduce the above copyright notice,
// this list of conditions and the following disclaimer in the documentation
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#include <iostream>
#include <opencv2/core/core.hpp>
#include <opencv2/ml/ml.hpp>
#include <opencv2/highgui/highgui.hpp>
using namespace std;
using namespace cv;
using namespace cv::ml;
int main()
{
Mat data_temp, labels_temp;
Mat data, labels;
Mat data_train, data_test;
Mat labels_train, labels_test;
Mat responses, result;
FileStorage fs1, fs2;
FileStorage f;
cout<<"*****************************************************************************************"<<endl;
cout<<"\"data01.xml\" contains digits 0 and 1 of 20 samples each, collected on an Android device"<<endl;
cout<<"Each of the collected images are of size 28 x 28 re-arranged to 1 x 784 matrix"<<endl;
cout<<"*****************************************************************************************\n\n"<<endl;
cout<<"loading the dataset\n"<<endl;
f.open("data01.xml", FileStorage::READ);
f["datamat"] >> data_temp;
f["labelsmat"] >> labels_temp;
data_temp.convertTo(data, CV_32F);
labels_temp.convertTo(labels, CV_32F);
for(int i =0;i<data.rows;i++)
{
if(i%2 ==0)
{
data_train.push_back(data.row(i));
labels_train.push_back(labels.row(i));
}
else
{
data_test.push_back(data.row(i));
labels_test.push_back(labels.row(i));
}
}
cout<<"training samples per class: "<<data_train.rows/2<<endl;
cout<<"testing samples per class: "<<data_test.rows/2<<endl;
// display sample image
Mat img_disp1 = data_train.row(2).reshape(0,28).t();
Mat img_disp2 = data_train.row(18).reshape(0,28).t();
imshow("digit 0", img_disp1);
imshow("digit 1", img_disp2);
cout<<"initializing Logisitc Regression Parameters\n"<<endl;
// LogisticRegressionParams params1 = LogisticRegressionParams(0.001, 10, LogisticRegression::BATCH, LogisticRegression::REG_L2, 1, 1);
// params1 (above) with batch gradient performs better than mini batch gradient below with same parameters
LogisticRegressionParams params1 = LogisticRegressionParams(0.001, 10, LogisticRegression::MINI_BATCH, LogisticRegression::REG_L2, 1, 1);
// however mini batch gradient descent parameters with slower learning rate(below) can be used to get higher accuracy than with parameters mentioned above
// LogisticRegressionParams params1 = LogisticRegressionParams(0.000001, 10, LogisticRegression::MINI_BATCH, LogisticRegression::REG_L2, 1, 1);
cout<<"training Logisitc Regression classifier\n"<<endl;
LogisticRegression lr1(data_train, labels_train, params1);
lr1.predict(data_test, responses);
labels_test.convertTo(labels_test, CV_32S);
cout<<"Original Label :: Predicted Label"<<endl;
result = (labels_test == responses)/255;
for(int i=0;i<labels_test.rows;i++)
{
cout<<labels_test.at<int>(i,0)<<" :: "<< responses.at<int>(i,0)<<endl;
}
// calculate accuracy
cout<<"accuracy: "<<((double)cv::sum(result)[0]/result.rows)*100<<"%\n";
cout<<"saving the classifier"<<endl;
// save the classfier
fs1.open("NewLR_Trained.xml",FileStorage::WRITE);
lr1.write(fs1);
fs1.release();
// load the classifier onto new object
LogisticRegressionParams params2 = LogisticRegressionParams();
LogisticRegression lr2(params2);
cout<<"loading a new classifier"<<endl;
fs2.open("NewLR_Trained.xml",FileStorage::READ);
FileNode fn2 = fs2.root();
lr2.read(fn2);
fs2.release();
Mat responses2;
// predict using loaded classifier
cout<<"predicting the dataset using the loaded classfier\n"<<endl;
lr2.predict(data_test, responses2);
// calculate accuracy
cout<<"accuracy using loaded classifier: "<<100 * (float)cv::countNonZero(labels_test == responses2)/responses2.rows<<"%"<<endl;
waitKey(0);
return 0;
}