Qualitative classification of milled rice grains using computer vision and metaheuristic techniques

Qualitative grading of milled rice grains was carried out in this study using a machine vision system combined with some metaheuristic classification approaches. Images of four different classes of milled rice including Low-processed sound grains (LPS), Low-processed broken grains (LPB), High-proces...

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Bibliographic Details
Published inJournal of food science and technology Vol. 53; no. 1; pp. 118 - 131
Main Authors Zareiforoush, Hemad, Minaei, Saeid, Alizadeh, Mohammad Reza, Banakar, Ahmad
Format Journal Article
LanguageEnglish
Published New Delhi Springer India 01.01.2016
Springer Nature B.V
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Summary:Qualitative grading of milled rice grains was carried out in this study using a machine vision system combined with some metaheuristic classification approaches. Images of four different classes of milled rice including Low-processed sound grains (LPS), Low-processed broken grains (LPB), High-processed sound grains (HPS), and High-processed broken grains (HPB), representing quality grades of the product, were acquired using a computer vision system. Four different metaheuristic classification techniques including artificial neural networks, support vector machines, decision trees and Bayesian Networks were utilized to classify milled rice samples. Results of validation process indicated that artificial neural network with 12-5*4 topology had the highest classification accuracy (98.72 %). Next, support vector machine with Universal Pearson VII kernel function (98.48 %), decision tree with REP algorithm (97.50 %), and Bayesian Network with Hill Climber search algorithm (96.89 %) had the higher accuracy, respectively. Results presented in this paper can be utilized for developing an efficient system for fully automated classification and sorting of milled rice grains.
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ISSN:0022-1155
0975-8402
DOI:10.1007/s13197-015-1947-4