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Fruit-classification

This is general machine learning application for classifiying different fruits.

Classifiers used

Experimented with the following classifiers:

  • SVM
  • K-nearest neighbours

Features Used

The following features are used:

  • GLCM
  • CCV
  • LTP

Prerequisites

  • Matlab R2017a

Instructions

  • Open the save_segment_images.m file and the change the train_folder to give the full path of the folder containing the training images.

  • Run the save_segment_images.m file which will save all the segmented images in a separate folder that can be used later. (Note: You can change the value of k for k-means segmentation on line 14)

  • In order to evaluate the features on segmented images run the EvaluateGLCMFeatures.m, EvaluateCCVFeatures.m and EvaluateLTPFeatures.m files.

  • Run combineFeatures.m file to generate different combination of Image features.

  • All the features data will be saved in Training_Data.mat that can be used later. (Note: You can use the data inside this mat file for detailed classification using the Classification Toolbox by importing different features data)

  • Open plotData.m file and change the classifier to trainknn for knn classifier and trainsvm for svm classifier. Also, uncomment one line from 47-57 according to the classifier you wish to plot the data for.