Image-based classification and segmentation of healthy and defective mangoes

The use of image processing and classification for agricultural applications has been widely studied and has led to work such as the automatic grading of fruit and vegetables, yield approximation and defect detection. Image segmentation is one of the first steps to identify the region of interest wi...

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Main Authors: Baculo, Maria Jeseca C., Ruiz, Conrado
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Published: Animo Repository 2019
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Online Access:https://animorepository.dlsu.edu.ph/faculty_research/2750
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Institution: De La Salle University
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spelling oai:animorepository.dlsu.edu.ph:faculty_research-37492021-10-29T05:36:13Z Image-based classification and segmentation of healthy and defective mangoes Baculo, Maria Jeseca C. Ruiz, Conrado The use of image processing and classification for agricultural applications has been widely studied and has led to work such as the automatic grading of fruit and vegetables, yield approximation and defect detection. Image segmentation is one of the first steps to identify the region of interest within an image. This paper presents an approach to automatic segmentation and classification of healthy and defective Carabao mangoes. K-means, range filtering and color-channel segmentation were utilized so that the varying texture and color of mangoes due to the surface defects can be considered. Results show that the proposed technique performs better than the classical K-means segmentation. The performance of segmentation step has a considerable influence on the precision of the classification model. Segmented and not segmented images were trained using KNN, SVM, MLP and CNN. The experiments showed that the models performed better when trained with segmented images. Copyright © 2019 SPIE. 2019-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/faculty_research/2750 Faculty Research Work Animo Repository Image processing Image segmentation Machine learning Mango—Grading—Automation Computer Sciences Software Engineering
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
topic Image processing
Image segmentation
Machine learning
Mango—Grading—Automation
Computer Sciences
Software Engineering
spellingShingle Image processing
Image segmentation
Machine learning
Mango—Grading—Automation
Computer Sciences
Software Engineering
Baculo, Maria Jeseca C.
Ruiz, Conrado
Image-based classification and segmentation of healthy and defective mangoes
description The use of image processing and classification for agricultural applications has been widely studied and has led to work such as the automatic grading of fruit and vegetables, yield approximation and defect detection. Image segmentation is one of the first steps to identify the region of interest within an image. This paper presents an approach to automatic segmentation and classification of healthy and defective Carabao mangoes. K-means, range filtering and color-channel segmentation were utilized so that the varying texture and color of mangoes due to the surface defects can be considered. Results show that the proposed technique performs better than the classical K-means segmentation. The performance of segmentation step has a considerable influence on the precision of the classification model. Segmented and not segmented images were trained using KNN, SVM, MLP and CNN. The experiments showed that the models performed better when trained with segmented images. Copyright © 2019 SPIE.
format text
author Baculo, Maria Jeseca C.
Ruiz, Conrado
author_facet Baculo, Maria Jeseca C.
Ruiz, Conrado
author_sort Baculo, Maria Jeseca C.
title Image-based classification and segmentation of healthy and defective mangoes
title_short Image-based classification and segmentation of healthy and defective mangoes
title_full Image-based classification and segmentation of healthy and defective mangoes
title_fullStr Image-based classification and segmentation of healthy and defective mangoes
title_full_unstemmed Image-based classification and segmentation of healthy and defective mangoes
title_sort image-based classification and segmentation of healthy and defective mangoes
publisher Animo Repository
publishDate 2019
url https://animorepository.dlsu.edu.ph/faculty_research/2750
_version_ 1715215744826867712