Lettuce life stage classification from texture attributes using machine learning estimators and feature selection processes

Classification of lettuce life or growth stages is an effective tool for measuring the performance of an aquaponics system. It determines the balance in water nutrients, adequate temperature and lighting, other environmental factors, and the system’s productivity to sustain cultivars. This paper pro...

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Main Authors: Lauguico, Sandy C., Concepcion, Ronnie Sabino, II, Alejandrino, Jonnel D., Tobias, Rogelio Ruzcko, Dadios, Elmer Jose P.
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Published: Animo Repository 2020
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Online Access:https://animorepository.dlsu.edu.ph/faculty_research/3944
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Institution: De La Salle University
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spelling oai:animorepository.dlsu.edu.ph:faculty_research-48962022-08-21T06:59:13Z Lettuce life stage classification from texture attributes using machine learning estimators and feature selection processes Lauguico, Sandy C. Concepcion, Ronnie Sabino, II Alejandrino, Jonnel D. Tobias, Rogelio Ruzcko Dadios, Elmer Jose P. Classification of lettuce life or growth stages is an effective tool for measuring the performance of an aquaponics system. It determines the balance in water nutrients, adequate temperature and lighting, other environmental factors, and the system’s productivity to sustain cultivars. This paper proposes a classification of lettuce life stages planted in an aquaponics system. The classification was done using the texture features of the leaves derived from machine vision algorithms. The attributes underwent three different feature selection processes, namely: Univariate Selection (US), Recursive Feature Elimination (RFE), and Feature Importance (FI) to determine the four most significant features from the original eight attributes. The features selected were used for training four estimators from Decision Trees Classifier (DTC), Gaussian Naïve Bayes (GNB), Stochastic Gradient Descent (SGD), and Linear Discriminant Analysis (LDA). The models trained using DTC and SGD were then optimized as they have hyperparameters for tuning. A comparative analysis among Machine Learning (ML) algorithms was conducted to identify the best-performing model with the given application. The best features were derived from US and FI as they have the same top four features using the DTC estimator optimized with the hyperparameters tuned to max depth having 5, criterion equated to ‘Gini', and splitter was set to 'Best'. The accuracy obtained from cross-validation evaluation resulted in 87.92%. Considering consistency with hold-out validation, LDA outperforms optimized DTC even with lower accuracy of 86.67%. This accuracy of LDA outperformed DTC due to its sufficient fit for generalizing the testing data on classifying lettuce growth stage. © 2020, Universitas Ahmad Dahlan. All rights reserved. 2020-07-01T07:00:00Z text https://animorepository.dlsu.edu.ph/faculty_research/3944 info:doi/10.26555/ijain.v6i2.466 Faculty Research Work Animo Repository Aquaponics Lettuce—Growth Computer vision Machine learning Electrical and Electronics Systems and Communications
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 Aquaponics
Lettuce—Growth
Computer vision
Machine learning
Electrical and Electronics
Systems and Communications
spellingShingle Aquaponics
Lettuce—Growth
Computer vision
Machine learning
Electrical and Electronics
Systems and Communications
Lauguico, Sandy C.
Concepcion, Ronnie Sabino, II
Alejandrino, Jonnel D.
Tobias, Rogelio Ruzcko
Dadios, Elmer Jose P.
Lettuce life stage classification from texture attributes using machine learning estimators and feature selection processes
description Classification of lettuce life or growth stages is an effective tool for measuring the performance of an aquaponics system. It determines the balance in water nutrients, adequate temperature and lighting, other environmental factors, and the system’s productivity to sustain cultivars. This paper proposes a classification of lettuce life stages planted in an aquaponics system. The classification was done using the texture features of the leaves derived from machine vision algorithms. The attributes underwent three different feature selection processes, namely: Univariate Selection (US), Recursive Feature Elimination (RFE), and Feature Importance (FI) to determine the four most significant features from the original eight attributes. The features selected were used for training four estimators from Decision Trees Classifier (DTC), Gaussian Naïve Bayes (GNB), Stochastic Gradient Descent (SGD), and Linear Discriminant Analysis (LDA). The models trained using DTC and SGD were then optimized as they have hyperparameters for tuning. A comparative analysis among Machine Learning (ML) algorithms was conducted to identify the best-performing model with the given application. The best features were derived from US and FI as they have the same top four features using the DTC estimator optimized with the hyperparameters tuned to max depth having 5, criterion equated to ‘Gini', and splitter was set to 'Best'. The accuracy obtained from cross-validation evaluation resulted in 87.92%. Considering consistency with hold-out validation, LDA outperforms optimized DTC even with lower accuracy of 86.67%. This accuracy of LDA outperformed DTC due to its sufficient fit for generalizing the testing data on classifying lettuce growth stage. © 2020, Universitas Ahmad Dahlan. All rights reserved.
format text
author Lauguico, Sandy C.
Concepcion, Ronnie Sabino, II
Alejandrino, Jonnel D.
Tobias, Rogelio Ruzcko
Dadios, Elmer Jose P.
author_facet Lauguico, Sandy C.
Concepcion, Ronnie Sabino, II
Alejandrino, Jonnel D.
Tobias, Rogelio Ruzcko
Dadios, Elmer Jose P.
author_sort Lauguico, Sandy C.
title Lettuce life stage classification from texture attributes using machine learning estimators and feature selection processes
title_short Lettuce life stage classification from texture attributes using machine learning estimators and feature selection processes
title_full Lettuce life stage classification from texture attributes using machine learning estimators and feature selection processes
title_fullStr Lettuce life stage classification from texture attributes using machine learning estimators and feature selection processes
title_full_unstemmed Lettuce life stage classification from texture attributes using machine learning estimators and feature selection processes
title_sort lettuce life stage classification from texture attributes using machine learning estimators and feature selection processes
publisher Animo Repository
publishDate 2020
url https://animorepository.dlsu.edu.ph/faculty_research/3944
_version_ 1767196002373074944