Publication | Open Access
Classification of Fruits Using Computer Vision and a Multiclass Support Vector Machine
335
Citations
26
References
2012
Year
EngineeringMachine LearningBiometricsRipeningSupport Vector MachineImage ClassificationImage AnalysisData SciencePattern RecognitionPrincipal Component AnalysisFruit ImageMachine VisionComputer ScienceFood QualityDeep LearningComputer VisionHorticultural CommodityData ClassificationClassificationClassifier SystemHomogeneous Polynomial KernelKernel Method
Automatic classification of fruits via computer vision is still a complicated task due to the various properties of numerous types of fruits. We propose a novel classification method based on a multi-class kernel support vector machine (kSVM) with the desirable goal of accurate and fast classification of fruits. First, fruit images were acquired by a digital camera, and then the background of each image was removed by a split-and-merge algorithm; Second, the color histogram, texture and shape features of each fruit image were extracted to compose a feature space; Third, principal component analysis (PCA) was used to reduce the dimensions of feature space; Finally, three kinds of multi-class SVMs were constructed, i.e., Winner-Takes-All SVM, Max-Wins-Voting SVM, and Directed Acyclic Graph SVM. Meanwhile, three kinds of kernels were chosen, i.e., linear kernel, Homogeneous Polynomial kernel, and Gaussian Radial Basis kernel; finally, the SVMs were trained using 5-fold stratified cross validation with the reduced feature vectors as input. The experimental results demonstrated that the Max-Wins-Voting SVM with Gaussian Radial Basis kernel achieves the best classification accuracy of 88.2%. For computation time, the Directed Acyclic Graph SVMs performs swiftest.
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