Evaluation of the Success of Biological Control Approach for the Control of Aspidiotus rigidus Reyne, Invasive Pest of Coconut, through the Development of an Innovative Automated Pest Infestation and Parasitism Level Estimator (AutoPPLeX) in Smart Farming Applications

The Philippines, as an agricultural country in the age of modernization, is constantly striving for technological integrations that can enhance the agricultural sector in areas like production security and sustainability. The overarching goal of this study is to hasten the transition from traditiona...

Full description

Saved in:
Bibliographic Details
Main Authors: Batac, Joshua Brian A., De Los Reyes, Diane Ruth M., Dumale, Marco Eraño A., Rousseau, Estelle Dorothy F.
Format: text
Published: Animo Repository 2022
Subjects:
Online Access:https://animorepository.dlsu.edu.ph/conf_shsrescon/2022/paper_see/15
https://animorepository.dlsu.edu.ph/cgi/viewcontent.cgi?article=1090&context=conf_shsrescon
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: De La Salle University
id oai:animorepository.dlsu.edu.ph:conf_shsrescon-1090
record_format eprints
spelling oai:animorepository.dlsu.edu.ph:conf_shsrescon-10902023-02-12T13:11:04Z Evaluation of the Success of Biological Control Approach for the Control of Aspidiotus rigidus Reyne, Invasive Pest of Coconut, through the Development of an Innovative Automated Pest Infestation and Parasitism Level Estimator (AutoPPLeX) in Smart Farming Applications Batac, Joshua Brian A. De Los Reyes, Diane Ruth M. Dumale, Marco Eraño A. Rousseau, Estelle Dorothy F. The Philippines, as an agricultural country in the age of modernization, is constantly striving for technological integrations that can enhance the agricultural sector in areas like production security and sustainability. The overarching goal of this study is to hasten the transition from traditional to smart farming by aiding in the development of agricultural tools that accurately describe pest infestation level and presence of biological control agents essential in increasing crop productivity and sustainability. This study contributed to the development of the Agricultural Database for the Automated Pest Infestation and Parasitism Level Estimator (AutoPPLeX) through the expert annotation and interpretation of leaf segments gathered directly from Zamboanga and Basilan. Additionally, the researchers explored how image specifications like focus, lighting, and shooting angle can maximize annotation accuracy. The research team underwent quantitative and qualitative assessments of coconut segments with the pest, Aspidiotus rigidus Reyne and its known natural enemy, Comperiella calauanica using LabelMe, a proprietary annotation tool developed by Taiwan National University specifically for the study. Through manual annotation, the researchers delivered six data sets for the development of AutoPPLeX complete with total pest count and percent parasitization. Aside from this, the researchers concluded that C. calauanica had been effective in parasitizing A. rigidus in the majority of the image segments provided. Further, the researchers highlighted that to minimize human error in future manual annotation pursuits, there must be consistent and level lighting, high resolution, and close angle for all leaf segments. 2022-05-13T17:30:00Z text application/pdf https://animorepository.dlsu.edu.ph/conf_shsrescon/2022/paper_see/15 https://animorepository.dlsu.edu.ph/cgi/viewcontent.cgi?article=1090&context=conf_shsrescon DLSU Senior High School Research Congress Animo Repository agricultural sector artificial intelligence Automated Pest Infestation and Parasitism Level Estimator (AutoPPLeX) image annotation smart farming
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 agricultural sector
artificial intelligence
Automated Pest Infestation and Parasitism Level Estimator (AutoPPLeX)
image annotation
smart farming
spellingShingle agricultural sector
artificial intelligence
Automated Pest Infestation and Parasitism Level Estimator (AutoPPLeX)
image annotation
smart farming
Batac, Joshua Brian A.
De Los Reyes, Diane Ruth M.
Dumale, Marco Eraño A.
Rousseau, Estelle Dorothy F.
Evaluation of the Success of Biological Control Approach for the Control of Aspidiotus rigidus Reyne, Invasive Pest of Coconut, through the Development of an Innovative Automated Pest Infestation and Parasitism Level Estimator (AutoPPLeX) in Smart Farming Applications
description The Philippines, as an agricultural country in the age of modernization, is constantly striving for technological integrations that can enhance the agricultural sector in areas like production security and sustainability. The overarching goal of this study is to hasten the transition from traditional to smart farming by aiding in the development of agricultural tools that accurately describe pest infestation level and presence of biological control agents essential in increasing crop productivity and sustainability. This study contributed to the development of the Agricultural Database for the Automated Pest Infestation and Parasitism Level Estimator (AutoPPLeX) through the expert annotation and interpretation of leaf segments gathered directly from Zamboanga and Basilan. Additionally, the researchers explored how image specifications like focus, lighting, and shooting angle can maximize annotation accuracy. The research team underwent quantitative and qualitative assessments of coconut segments with the pest, Aspidiotus rigidus Reyne and its known natural enemy, Comperiella calauanica using LabelMe, a proprietary annotation tool developed by Taiwan National University specifically for the study. Through manual annotation, the researchers delivered six data sets for the development of AutoPPLeX complete with total pest count and percent parasitization. Aside from this, the researchers concluded that C. calauanica had been effective in parasitizing A. rigidus in the majority of the image segments provided. Further, the researchers highlighted that to minimize human error in future manual annotation pursuits, there must be consistent and level lighting, high resolution, and close angle for all leaf segments.
format text
author Batac, Joshua Brian A.
De Los Reyes, Diane Ruth M.
Dumale, Marco Eraño A.
Rousseau, Estelle Dorothy F.
author_facet Batac, Joshua Brian A.
De Los Reyes, Diane Ruth M.
Dumale, Marco Eraño A.
Rousseau, Estelle Dorothy F.
author_sort Batac, Joshua Brian A.
title Evaluation of the Success of Biological Control Approach for the Control of Aspidiotus rigidus Reyne, Invasive Pest of Coconut, through the Development of an Innovative Automated Pest Infestation and Parasitism Level Estimator (AutoPPLeX) in Smart Farming Applications
title_short Evaluation of the Success of Biological Control Approach for the Control of Aspidiotus rigidus Reyne, Invasive Pest of Coconut, through the Development of an Innovative Automated Pest Infestation and Parasitism Level Estimator (AutoPPLeX) in Smart Farming Applications
title_full Evaluation of the Success of Biological Control Approach for the Control of Aspidiotus rigidus Reyne, Invasive Pest of Coconut, through the Development of an Innovative Automated Pest Infestation and Parasitism Level Estimator (AutoPPLeX) in Smart Farming Applications
title_fullStr Evaluation of the Success of Biological Control Approach for the Control of Aspidiotus rigidus Reyne, Invasive Pest of Coconut, through the Development of an Innovative Automated Pest Infestation and Parasitism Level Estimator (AutoPPLeX) in Smart Farming Applications
title_full_unstemmed Evaluation of the Success of Biological Control Approach for the Control of Aspidiotus rigidus Reyne, Invasive Pest of Coconut, through the Development of an Innovative Automated Pest Infestation and Parasitism Level Estimator (AutoPPLeX) in Smart Farming Applications
title_sort evaluation of the success of biological control approach for the control of aspidiotus rigidus reyne, invasive pest of coconut, through the development of an innovative automated pest infestation and parasitism level estimator (autopplex) in smart farming applications
publisher Animo Repository
publishDate 2022
url https://animorepository.dlsu.edu.ph/conf_shsrescon/2022/paper_see/15
https://animorepository.dlsu.edu.ph/cgi/viewcontent.cgi?article=1090&context=conf_shsrescon
_version_ 1759060041473720320