UAV- and Random-Forest-AdaBoost (RFA)-Based Estimation of Rice Plant Traits

Rapid, accurate and inexpensive methods are required to analyze plant traits throughout all crop growth stages for plant phenotyping. Few studies have comprehensively evaluated plant traits from multispectral cameras onboard UAV platforms. Additionally, machine learning algorithms tend to over- or u...

Full description

Bibliographic Details
Main Authors: Farrah Melissa Muharam, Khairudin Nurulhuda, Zed Zulkafli, Mohamad Arif Tarmizi, Asniyani Nur Haidar Abdullah, Muhamad Faiz Che Hashim, Siti Najja Mohd Zad, Derraz Radhwane, Mohd Razi Ismail
Format: Article
Language:English
Published: MDPI AG 2021-05-01
Series:Agronomy
Subjects:
Online Access:https://www.mdpi.com/2073-4395/11/5/915
id doaj-7c1076fa104a49d1b7af67b4025a436b
record_format Article
spelling doaj-7c1076fa104a49d1b7af67b4025a436b2021-05-31T23:21:51ZengMDPI AGAgronomy2073-43952021-05-011191591510.3390/agronomy11050915UAV- and Random-Forest-AdaBoost (RFA)-Based Estimation of Rice Plant TraitsFarrah Melissa Muharam0Khairudin Nurulhuda1Zed Zulkafli2Mohamad Arif Tarmizi3Asniyani Nur Haidar Abdullah4Muhamad Faiz Che Hashim5Siti Najja Mohd Zad6Derraz Radhwane7Mohd Razi Ismail8Department of Agriculture Technology, Faculty of Agriculture, Universiti Putra Malaysia, Serdang 43400, MalaysiaDepartment of Biological and Agricultural Engineering, Faculty of Engineering, Universiti Putra Malaysia, Serdang 43400, MalaysiaDepartment of Civil Engineering, Faculty of Engineering, Universiti Putra Malaysia, Serdang 43400, MalaysiaUnmanned Innovations Sdn. Bhd. 1–47, Jalan PUJ 3/9, Taman Puncak Jalil, Seri Kembangan 43300, MalaysiaDepartment of Agriculture Technology, Faculty of Agriculture, Universiti Putra Malaysia, Serdang 43400, MalaysiaDepartment of Biological and Agricultural Engineering, Faculty of Engineering, Universiti Putra Malaysia, Serdang 43400, MalaysiaDepartment of Civil Engineering, Faculty of Engineering, Universiti Putra Malaysia, Serdang 43400, MalaysiaDepartment of Agriculture Technology, Faculty of Agriculture, Universiti Putra Malaysia, Serdang 43400, MalaysiaInstitute of Tropical Agriculture and Food Security (ITAFoS), Universiti Putra Malaysia, Serdang 43400, MalaysiaRapid, accurate and inexpensive methods are required to analyze plant traits throughout all crop growth stages for plant phenotyping. Few studies have comprehensively evaluated plant traits from multispectral cameras onboard UAV platforms. Additionally, machine learning algorithms tend to over- or underfit data and limited attention has been paid to optimizing their performance through an ensemble learning approach. This study aims to (1) comprehensively evaluate twelve rice plant traits estimated from aerial unmanned vehicle (UAV)-based multispectral images and (2) introduce Random Forest AdaBoost (RFA) algorithms as an optimization approach for estimating plant traits. The approach was tested based on a farmer’s field in Terengganu, Malaysia, for the off-season from February to June 2018, involving five rice cultivars and three nitrogen (N) rates. Four bands, thirteen indices and Random Forest-AdaBoost (RFA) regression models were evaluated against the twelve plant traits according to the growth stages. Among the plant traits, plant height, green leaf and storage organ biomass, and foliar nitrogen (N) content were estimated well, with a coefficient of determination (R<sup>2</sup>) above 0.80. In comparing the bands and indices, red, Normalized Difference Vegetation Index (NDVI), Ratio Vegetation Index (RVI), Red-Edge Wide Dynamic Range Vegetation Index (REWDRVI) and Red-Edge Soil Adjusted Vegetation Index (RESAVI) were remarkable in estimating all plant traits at tillering, booting and milking stages with R<sup>2</sup> values ranging from 0.80–0.99 and root mean square error (RMSE) values ranging from 0.04–0.22. Milking was found to be the best growth stage to conduct estimations of plant traits. In summary, our findings demonstrate that an ensemble learning approach can improve the accuracy as well as reduce under/overfitting in plant phenotyping algorithms.https://www.mdpi.com/2073-4395/11/5/915ricephenotypingmultispectral imagesmachine learningboosting algorithm
collection DOAJ
language English
format Article
sources DOAJ
author Farrah Melissa Muharam
Khairudin Nurulhuda
Zed Zulkafli
Mohamad Arif Tarmizi
Asniyani Nur Haidar Abdullah
Muhamad Faiz Che Hashim
Siti Najja Mohd Zad
Derraz Radhwane
Mohd Razi Ismail
spellingShingle Farrah Melissa Muharam
Khairudin Nurulhuda
Zed Zulkafli
Mohamad Arif Tarmizi
Asniyani Nur Haidar Abdullah
Muhamad Faiz Che Hashim
Siti Najja Mohd Zad
Derraz Radhwane
Mohd Razi Ismail
UAV- and Random-Forest-AdaBoost (RFA)-Based Estimation of Rice Plant Traits
Agronomy
rice
phenotyping
multispectral images
machine learning
boosting algorithm
author_facet Farrah Melissa Muharam
Khairudin Nurulhuda
Zed Zulkafli
Mohamad Arif Tarmizi
Asniyani Nur Haidar Abdullah
Muhamad Faiz Che Hashim
Siti Najja Mohd Zad
Derraz Radhwane
Mohd Razi Ismail
author_sort Farrah Melissa Muharam
title UAV- and Random-Forest-AdaBoost (RFA)-Based Estimation of Rice Plant Traits
title_short UAV- and Random-Forest-AdaBoost (RFA)-Based Estimation of Rice Plant Traits
title_full UAV- and Random-Forest-AdaBoost (RFA)-Based Estimation of Rice Plant Traits
title_fullStr UAV- and Random-Forest-AdaBoost (RFA)-Based Estimation of Rice Plant Traits
title_full_unstemmed UAV- and Random-Forest-AdaBoost (RFA)-Based Estimation of Rice Plant Traits
title_sort uav- and random-forest-adaboost (rfa)-based estimation of rice plant traits
publisher MDPI AG
series Agronomy
issn 2073-4395
publishDate 2021-05-01
description Rapid, accurate and inexpensive methods are required to analyze plant traits throughout all crop growth stages for plant phenotyping. Few studies have comprehensively evaluated plant traits from multispectral cameras onboard UAV platforms. Additionally, machine learning algorithms tend to over- or underfit data and limited attention has been paid to optimizing their performance through an ensemble learning approach. This study aims to (1) comprehensively evaluate twelve rice plant traits estimated from aerial unmanned vehicle (UAV)-based multispectral images and (2) introduce Random Forest AdaBoost (RFA) algorithms as an optimization approach for estimating plant traits. The approach was tested based on a farmer’s field in Terengganu, Malaysia, for the off-season from February to June 2018, involving five rice cultivars and three nitrogen (N) rates. Four bands, thirteen indices and Random Forest-AdaBoost (RFA) regression models were evaluated against the twelve plant traits according to the growth stages. Among the plant traits, plant height, green leaf and storage organ biomass, and foliar nitrogen (N) content were estimated well, with a coefficient of determination (R<sup>2</sup>) above 0.80. In comparing the bands and indices, red, Normalized Difference Vegetation Index (NDVI), Ratio Vegetation Index (RVI), Red-Edge Wide Dynamic Range Vegetation Index (REWDRVI) and Red-Edge Soil Adjusted Vegetation Index (RESAVI) were remarkable in estimating all plant traits at tillering, booting and milking stages with R<sup>2</sup> values ranging from 0.80–0.99 and root mean square error (RMSE) values ranging from 0.04–0.22. Milking was found to be the best growth stage to conduct estimations of plant traits. In summary, our findings demonstrate that an ensemble learning approach can improve the accuracy as well as reduce under/overfitting in plant phenotyping algorithms.
topic rice
phenotyping
multispectral images
machine learning
boosting algorithm
url https://www.mdpi.com/2073-4395/11/5/915
work_keys_str_mv AT farrahmelissamuharam uavandrandomforestadaboostrfabasedestimationofriceplanttraits
AT khairudinnurulhuda uavandrandomforestadaboostrfabasedestimationofriceplanttraits
AT zedzulkafli uavandrandomforestadaboostrfabasedestimationofriceplanttraits
AT mohamadariftarmizi uavandrandomforestadaboostrfabasedestimationofriceplanttraits
AT asniyaninurhaidarabdullah uavandrandomforestadaboostrfabasedestimationofriceplanttraits
AT muhamadfaizchehashim uavandrandomforestadaboostrfabasedestimationofriceplanttraits
AT sitinajjamohdzad uavandrandomforestadaboostrfabasedestimationofriceplanttraits
AT derrazradhwane uavandrandomforestadaboostrfabasedestimationofriceplanttraits
AT mohdraziismail uavandrandomforestadaboostrfabasedestimationofriceplanttraits
_version_ 1721417729251999744