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Kaveh Mollazade

Kaveh Mollazade

Academic rank: Associate Professor
ORCID: 0000-0001-7379-839X
Education: PhD.
ScopusId: 34771823000
Faculty: Faculty of Agriculture
Address: Room no. 243, 1st floor, Faculty of Agriculture
Phone: (+98) 87-33627723

Research

Title
Comparing Data Mining Classifiers for Grading Raisins based on Visual Features
Type
JournalPaper
Keywords
Bayesian networks;Decision tree;Image processing;Quality control;Support vector machines;WEKA
Year
2012
Journal Computers and Electronics in Agriculture
DOI
Researchers Kaveh Mollazade ، Mahmoud omid ، Arman Arefi

Abstract

In this study, quality grading of raisins using image processing and data mining based classifiers was investigated. Images from four different classes of raisins (green, green with tail, black, and black with tail) were acquired using a color CCD camera. After pre-processing and segmentation of images, 44 features including 36 color and eight shape features were extracted. Correlation-based feature selection was used to select best features for grading the raisins. Seven features were found superior. To classify raisins, four different data mining-based techniques including artificial neural networks (ANNs), support vector machines (SVMs), decision trees (DTs) and Bayesian networks (BNs) were investigated. Results of validation stage showed ANN with 7-6-4 topology had the highest classification accuracy, 96.33%. After ANN, SVM with polynomial kernel function (95.67%), DT with J48 algorithm (94.67%) and BN with simulated annealing learning (94.33%) had higher accuracy, respectively. Results of this research can be adapted for developing an efficient raisin sorting system.