Measuring damaged skin of mangosteen using image processing
รหัสดีโอไอ
Creator Jetsada Posom
Title Measuring damaged skin of mangosteen using image processing
Contributor Thipat Seela
Publisher Faculty of Engineering, Khon Kaen University
Publication Year 2568
Journal Title Agricultural and Biological Engineering
Journal Vol. 2
Journal No. 1
Page no. 26-31
Keyword Mangosteen, Color analysis, Image analysis
URL Website https://ph04.tci-thaijo.org/index.php/abe
Website title ThaiJo
ISSN 3056-932X (Online)
Abstract Mangosteen is a major economic crop. Currently, commercial production still faces challenges in terms of quality sorting, particularly in adhering to the skin color standards which serve as quality criteria. Presently, quality sorting heavily relies on the expertise of individuals, especially for mangosteen with damaged skin, which cannot be exported. Advances in image processing technology allow for quality sorting, thus this research aims to examine mangosteen with damaged skin using image processing techniques. A sample of 60 mangosteen fruits at six maturity levels, with 20 fruits per level, images were taken from four sides using RGB cameras, totaling 480 images. These images were analyzed and models were built for distinguishing between good skin and damaged-skinned mangosteen using Linear Discriminant Analysis (LDA), Support Vector Machine (SVM), and Decision Tree (Fine Tree) algorithms. Results showed that all three algorithms performed similarly performance. For levels 1 through 6, the average accuracy rates were approximately 100, 95.61, 93.03, 99.63, 99.40 and 100, respectively, with average recall rates of 100, 96.60, 94.45, 99.90, 99.73, and 100, respectively. Analysis revealed that evaluating damaged skin at levels 2 and 3 had the lowest effectiveness, as the good skin colors of mangosteen at levels 2 and 3 closely resembled the colors of the damaged skin. Therefore, the research demonstrates that image processing can effectively separate damaged-skinned mangosteen from good-skinned.
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