Semi-automated plant growth monitoring system for cherry tomatoes (Solanum Lycopersicum var Cerasiforme)

Plant growth monitoring system (PGMS) is a platform that assists agriculturalists in monitoring the current state of the crops. However, commonly existing PGMS solely employ either sensor-based or image-based approaches. Given the equal importance of environmental and plant phenotype data to optimiz...

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Main Authors: Dimaculangan, William Mitchell C., Hacinas, Eros Allan S., Que, Simon Justin C., Tendido, Ma. Isabel M.
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Language:English
Published: Animo Repository 2023
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Online Access:https://animorepository.dlsu.edu.ph/etdb_comtech/16
https://animorepository.dlsu.edu.ph/context/etdb_comtech/article/1014/viewcontent/Semi_automated_plant_growth_monitoring_system_for_cherry_tomatoes.pdf
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Institution: De La Salle University
Language: English
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spelling oai:animorepository.dlsu.edu.ph:etdb_comtech-10142023-09-12T00:44:37Z Semi-automated plant growth monitoring system for cherry tomatoes (Solanum Lycopersicum var Cerasiforme) Dimaculangan, William Mitchell C. Hacinas, Eros Allan S. Que, Simon Justin C. Tendido, Ma. Isabel M. Plant growth monitoring system (PGMS) is a platform that assists agriculturalists in monitoring the current state of the crops. However, commonly existing PGMS solely employ either sensor-based or image-based approaches. Given the equal importance of environmental and plant phenotype data to optimize the growing conditions of the crops, there is a need for a system that integrates both sensor and image-based approaches to enable agriculturalists in performing experimentations, eliciting knowledge, and making data-driven decisions. Thus, the developed system is a semi-automated PGMS with the objective of periodically collecting sensor and image data from the monitored cherry tomato crops, extrapolating soil moisture and nutrient solution pH, and determining plant productivity using deep learning. The reliability of the system was evaluated through precision, recall, f1-score, and mean absolute percentage error (MAPE) while, the acceptance of agriculturalists to the system was evaluated through a user acceptance form. Based on the results, with f1-scores of 0.83, 0.93, and 0.95 for leaves, owers, and tomatoes respectively, the system detection pipeline to acquire plant productivity information achieves competitive performance. Furthermore, the extrapolation system was able to achieve a MAPE of 11.96% for soil moisture using SVR methods, while a MAPE of 5.60% for nutrient solution pH was achieved using LR methods. Lastly, with a mean score of 4.58, 4.33, and 4.38 out of 5.00 for the usefulness of data, user interface, and system usability, the system was highly satisfactory and approved by the agriculturalist. In conclusion, the developed PGMS provides agriculturalists a reliable and quantitative platform for crop monitoring and experimentation. 2023-08-09T07:00:00Z text application/pdf https://animorepository.dlsu.edu.ph/etdb_comtech/16 https://animorepository.dlsu.edu.ph/context/etdb_comtech/article/1014/viewcontent/Semi_automated_plant_growth_monitoring_system_for_cherry_tomatoes.pdf Computer Technology Bachelor's Theses English Animo Repository Growth (Plants) Vegetation monitoring Tomatoes--Monitoring Computer Sciences Databases and Information Systems
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
language English
topic Growth (Plants)
Vegetation monitoring
Tomatoes--Monitoring
Computer Sciences
Databases and Information Systems
spellingShingle Growth (Plants)
Vegetation monitoring
Tomatoes--Monitoring
Computer Sciences
Databases and Information Systems
Dimaculangan, William Mitchell C.
Hacinas, Eros Allan S.
Que, Simon Justin C.
Tendido, Ma. Isabel M.
Semi-automated plant growth monitoring system for cherry tomatoes (Solanum Lycopersicum var Cerasiforme)
description Plant growth monitoring system (PGMS) is a platform that assists agriculturalists in monitoring the current state of the crops. However, commonly existing PGMS solely employ either sensor-based or image-based approaches. Given the equal importance of environmental and plant phenotype data to optimize the growing conditions of the crops, there is a need for a system that integrates both sensor and image-based approaches to enable agriculturalists in performing experimentations, eliciting knowledge, and making data-driven decisions. Thus, the developed system is a semi-automated PGMS with the objective of periodically collecting sensor and image data from the monitored cherry tomato crops, extrapolating soil moisture and nutrient solution pH, and determining plant productivity using deep learning. The reliability of the system was evaluated through precision, recall, f1-score, and mean absolute percentage error (MAPE) while, the acceptance of agriculturalists to the system was evaluated through a user acceptance form. Based on the results, with f1-scores of 0.83, 0.93, and 0.95 for leaves, owers, and tomatoes respectively, the system detection pipeline to acquire plant productivity information achieves competitive performance. Furthermore, the extrapolation system was able to achieve a MAPE of 11.96% for soil moisture using SVR methods, while a MAPE of 5.60% for nutrient solution pH was achieved using LR methods. Lastly, with a mean score of 4.58, 4.33, and 4.38 out of 5.00 for the usefulness of data, user interface, and system usability, the system was highly satisfactory and approved by the agriculturalist. In conclusion, the developed PGMS provides agriculturalists a reliable and quantitative platform for crop monitoring and experimentation.
format text
author Dimaculangan, William Mitchell C.
Hacinas, Eros Allan S.
Que, Simon Justin C.
Tendido, Ma. Isabel M.
author_facet Dimaculangan, William Mitchell C.
Hacinas, Eros Allan S.
Que, Simon Justin C.
Tendido, Ma. Isabel M.
author_sort Dimaculangan, William Mitchell C.
title Semi-automated plant growth monitoring system for cherry tomatoes (Solanum Lycopersicum var Cerasiforme)
title_short Semi-automated plant growth monitoring system for cherry tomatoes (Solanum Lycopersicum var Cerasiforme)
title_full Semi-automated plant growth monitoring system for cherry tomatoes (Solanum Lycopersicum var Cerasiforme)
title_fullStr Semi-automated plant growth monitoring system for cherry tomatoes (Solanum Lycopersicum var Cerasiforme)
title_full_unstemmed Semi-automated plant growth monitoring system for cherry tomatoes (Solanum Lycopersicum var Cerasiforme)
title_sort semi-automated plant growth monitoring system for cherry tomatoes (solanum lycopersicum var cerasiforme)
publisher Animo Repository
publishDate 2023
url https://animorepository.dlsu.edu.ph/etdb_comtech/16
https://animorepository.dlsu.edu.ph/context/etdb_comtech/article/1014/viewcontent/Semi_automated_plant_growth_monitoring_system_for_cherry_tomatoes.pdf
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