Banana quality attribute prediction and ripeness classification using support vector machine
Five laser diodes of 532, 660, 785, 830 and 1060nm laser light back scattering imaging (LLBI) were employed for quality attribute prediction and ripening stage classification of banana. A support vector machine (SVM) was tested to establish the theoretical prediction and classification mod...
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The Berkeley Electronic Press
2017
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Online Access: | http://psasir.upm.edu.my/id/eprint/60987/1/Banana%20quality%20attribute%20prediction%20and%20ripeness%20classification%20using%20support%20vector%20machine.pdf http://psasir.upm.edu.my/id/eprint/60987/ |
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my.upm.eprints.609872019-04-23T08:55:28Z http://psasir.upm.edu.my/id/eprint/60987/ Banana quality attribute prediction and ripeness classification using support vector machine Adebayo, Segun Emmanuel Hashim, Norhashila Abdan, Khalina Hanafi, Marsyita Sasse, Manuela Zude Five laser diodes of 532, 660, 785, 830 and 1060nm laser light back scattering imaging (LLBI) were employed for quality attribute prediction and ripening stage classification of banana. A support vector machine (SVM) was tested to establish the theoretical prediction and classification models to predict chlorophyll, elasticity and soluble solids content (SSC) and also to classify the bananas into six ripening stages. The classification was set up with six ripening stages 2-7. Wavelengths of 532, 660 and 785nm gave high correlation coefficients both for banana quality prediction and ripeness classification. The results show that the highest correlation coefficients of 0 .912, 0.945 and 0.872 were obtained for chlorophyll, elasticity and SSC at 785, 660nm respectively. An overall classification accuracy of 92.5% was recorded at 830nm. These results show that LLBI with the SVM model can be used for non-destructive estimation of banana quality attributes and the subsequent ripeness classification. The Berkeley Electronic Press 2017-06 Article PeerReviewed text en http://psasir.upm.edu.my/id/eprint/60987/1/Banana%20quality%20attribute%20prediction%20and%20ripeness%20classification%20using%20support%20vector%20machine.pdf Adebayo, Segun Emmanuel and Hashim, Norhashila and Abdan, Khalina and Hanafi, Marsyita and Sasse, Manuela Zude (2017) Banana quality attribute prediction and ripeness classification using support vector machine. International Journal of Food Engineering, 3 (1). pp. 42-47. ISSN 2194-5764; ESSN: 1556-3758 10.18178/ijfe.3.1.42-47 |
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Five laser diodes of 532, 660, 785, 830 and 1060nm laser light back scattering imaging (LLBI) were employed for quality attribute prediction and ripening stage
classification of banana. A support vector machine (SVM)
was tested to establish the theoretical prediction and
classification models to predict chlorophyll, elasticity and soluble solids content (SSC) and also to classify the bananas into six ripening stages. The classification was set up with six ripening stages 2-7. Wavelengths of 532, 660 and 785nm gave high correlation coefficients both for banana quality prediction and ripeness classification. The results show that the highest correlation coefficients of 0
.912, 0.945 and 0.872 were obtained for chlorophyll, elasticity and SSC at 785, 660nm respectively. An overall classification accuracy of 92.5% was recorded at 830nm. These results show that LLBI with the SVM model can be used for non-destructive estimation of banana quality attributes and the subsequent ripeness classification. |
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Article |
author |
Adebayo, Segun Emmanuel Hashim, Norhashila Abdan, Khalina Hanafi, Marsyita Sasse, Manuela Zude |
spellingShingle |
Adebayo, Segun Emmanuel Hashim, Norhashila Abdan, Khalina Hanafi, Marsyita Sasse, Manuela Zude Banana quality attribute prediction and ripeness classification using support vector machine |
author_facet |
Adebayo, Segun Emmanuel Hashim, Norhashila Abdan, Khalina Hanafi, Marsyita Sasse, Manuela Zude |
author_sort |
Adebayo, Segun Emmanuel |
title |
Banana quality attribute prediction and ripeness classification using support vector machine |
title_short |
Banana quality attribute prediction and ripeness classification using support vector machine |
title_full |
Banana quality attribute prediction and ripeness classification using support vector machine |
title_fullStr |
Banana quality attribute prediction and ripeness classification using support vector machine |
title_full_unstemmed |
Banana quality attribute prediction and ripeness classification using support vector machine |
title_sort |
banana quality attribute prediction and ripeness classification using support vector machine |
publisher |
The Berkeley Electronic Press |
publishDate |
2017 |
url |
http://psasir.upm.edu.my/id/eprint/60987/1/Banana%20quality%20attribute%20prediction%20and%20ripeness%20classification%20using%20support%20vector%20machine.pdf http://psasir.upm.edu.my/id/eprint/60987/ |
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