A Comparison of HOG-SVM and SIFT-SVM Techniques for Identifying Brown Planthoppers in Rice Fields

Brown planthoppers (BPH) are insect pests that cause significant damage to rice crop yields throughout the Asia- Pacific region. Early identification of BPH forms has ramifications for forecasting potential outbreaks. To address this, we use Adaboost and Haar features to discover areas of interest...

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Main Authors: Harris, Christopher G., Andika, Ignatius P., Trisyono, Y. Andi
Format: Conference or Workshop Item
Language:English
Published: 2022
Subjects:
Online Access:https://repository.ugm.ac.id/278895/1/Trisyono_PN.pdf
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author Harris, Christopher G.
Andika, Ignatius P.
Trisyono, Y. Andi
author_facet Harris, Christopher G.
Andika, Ignatius P.
Trisyono, Y. Andi
author_sort Harris, Christopher G.
collection UGM
description Brown planthoppers (BPH) are insect pests that cause significant damage to rice crop yields throughout the Asia- Pacific region. Early identification of BPH forms has ramifications for forecasting potential outbreaks. To address this, we use Adaboost and Haar features to discover areas of interest in images of rice plants. We apply two separate techniques to identify the BPH in images: we compare a technique that utilizes HOG descriptors and another that utilizes SIFT feature descriptors. To each of these techniques, we apply a Support Vector Machine (SVM) to allow us to classify areas of interest in the images. Our approach achieves a weighted average classification rate of 95.38% for HOG and 96.38% for SIFT, improving upon state-of-the-art BPH detection methods and our findings lay the groundwork for other insect pest identification and detection efforts.
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spelling oai:generic.eprints.org:2788952023-11-01T08:46:51Z https://repository.ugm.ac.id/278895/ A Comparison of HOG-SVM and SIFT-SVM Techniques for Identifying Brown Planthoppers in Rice Fields Harris, Christopher G. Andika, Ignatius P. Trisyono, Y. Andi Horticultural Production Brown planthoppers (BPH) are insect pests that cause significant damage to rice crop yields throughout the Asia- Pacific region. Early identification of BPH forms has ramifications for forecasting potential outbreaks. To address this, we use Adaboost and Haar features to discover areas of interest in images of rice plants. We apply two separate techniques to identify the BPH in images: we compare a technique that utilizes HOG descriptors and another that utilizes SIFT feature descriptors. To each of these techniques, we apply a Support Vector Machine (SVM) to allow us to classify areas of interest in the images. Our approach achieves a weighted average classification rate of 95.38% for HOG and 96.38% for SIFT, improving upon state-of-the-art BPH detection methods and our findings lay the groundwork for other insect pest identification and detection efforts. 2022-10-17 Conference or Workshop Item PeerReviewed application/pdf en https://repository.ugm.ac.id/278895/1/Trisyono_PN.pdf Harris, Christopher G. and Andika, Ignatius P. and Trisyono, Y. Andi (2022) A Comparison of HOG-SVM and SIFT-SVM Techniques for Identifying Brown Planthoppers in Rice Fields. In: IEEE 2nd Conference on Information Technology and Data Science (CITDS), May, 16-18 2022, Debrecen, Hungary. https://doi.org/10.1109/CITDS54976.2022.9914061
spellingShingle Horticultural Production
Harris, Christopher G.
Andika, Ignatius P.
Trisyono, Y. Andi
A Comparison of HOG-SVM and SIFT-SVM Techniques for Identifying Brown Planthoppers in Rice Fields
title A Comparison of HOG-SVM and SIFT-SVM Techniques for Identifying Brown Planthoppers in Rice Fields
title_full A Comparison of HOG-SVM and SIFT-SVM Techniques for Identifying Brown Planthoppers in Rice Fields
title_fullStr A Comparison of HOG-SVM and SIFT-SVM Techniques for Identifying Brown Planthoppers in Rice Fields
title_full_unstemmed A Comparison of HOG-SVM and SIFT-SVM Techniques for Identifying Brown Planthoppers in Rice Fields
title_short A Comparison of HOG-SVM and SIFT-SVM Techniques for Identifying Brown Planthoppers in Rice Fields
title_sort comparison of hog svm and sift svm techniques for identifying brown planthoppers in rice fields
topic Horticultural Production
url https://repository.ugm.ac.id/278895/1/Trisyono_PN.pdf
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