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Distinguishing tree species from in situ hyperspectral and temporal measurements through ensemble statistical learning

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dc.contributor.author Dudeni-Tlhone, Nontembeko
dc.contributor.author Mutanga, O
dc.contributor.author Debba, Pravesh
dc.contributor.author Cho, Moses A
dc.date.accessioned 2023-10-24T07:34:45Z
dc.date.available 2023-10-24T07:34:45Z
dc.date.issued 2023-08
dc.identifier.citation Dudeni-Tlhone, N., Mutanga, O., Debba, P. & Cho, M.A. 2023. Distinguishing tree species from in situ hyperspectral and temporal measurements through ensemble statistical learning. <i>Remote Sensing, 15(17).</i> http://hdl.handle.net/10204/13171 en_ZA
dc.identifier.issn 2072-4292
dc.identifier.uri https://doi.org/10.3390/rs15174117
dc.identifier.uri http://hdl.handle.net/10204/13171
dc.description.abstract Hyperspectral sensors capture and compute spectral reflectance of objects over many wavelength bands, resulting in a high-dimensional space with enough information to differentiate between spectrally similar objects. Due to the curse of dimensionality, high spectral dimensionality can also be difficult to handle and analyse, demanding complex processing and the use of advanced analytical techniques. Moreover, when hyperspectral measurements are taken at different temporal frequencies, separation is likely to improve; however, additional complexities in modelling time variability concurrently with this high spectral dimensionality may be created. As a result, the applicability of ensemble-based techniques suitable for high-dimensional data is examined in this research, together with the statistical evaluation of time-induced variability, since spectral measurements of tree species were taken at different time periods. Classification errors for the stochastic gradient boosting (SGB) and random forest (RF) methods ranged between 5.6% and 13.5%, respectively. Differences in classification accuracy or errors were also accounted for in the assessment of the models, with up to 46% of variation in classification error due to the effect of time in the RF model, indicating that measurement time is important in improving discrimination between tree species. This is because optical leaf characteristics can vary during the course of the year due to seasonal effects, health status, or the developmental stage of a tree. Different spectral properties (assumed from relevant wavelength bands) were found to be key factors impacting the models’ discrimination performance at various measurement times. en_US
dc.format Fulltext en_US
dc.language.iso en en_US
dc.relation.uri https://www.mdpi.com/2072-4292/15/17/4117 en_US
dc.source Remote Sensing, 15(17) en_US
dc.subject Classification errors en_US
dc.subject Gradient boosting en_US
dc.subject Measurement time en_US
dc.subject Optical leaf reflectance characteristics en_US
dc.subject Random forest en_US
dc.subject Temporal-hyperspectral data and seasonal variability en_US
dc.subject Tree-based classification en_US
dc.title Distinguishing tree species from in situ hyperspectral and temporal measurements through ensemble statistical learning en_US
dc.type Article en_US
dc.description.pages 24 en_US
dc.description.note Copyright: © 2022 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/) en_US
dc.description.cluster Next Generation Enterprises & Institutions en_US
dc.description.cluster Advanced Agriculture & Food en_US
dc.description.cluster Smart Places en_US
dc.description.impactarea Data Science en_US
dc.description.impactarea ISSR Management Area en_US
dc.description.impactarea Precision Agriculture en_US
dc.identifier.apacitation Dudeni-Tlhone, N., Mutanga, O., Debba, P., & Cho, M. A. (2023). Distinguishing tree species from in situ hyperspectral and temporal measurements through ensemble statistical learning. <i>Remote Sensing, 15(17)</i>, http://hdl.handle.net/10204/13171 en_ZA
dc.identifier.chicagocitation Dudeni-Tlhone, Nontembeko, O Mutanga, Pravesh Debba, and Moses A Cho "Distinguishing tree species from in situ hyperspectral and temporal measurements through ensemble statistical learning." <i>Remote Sensing, 15(17)</i> (2023) http://hdl.handle.net/10204/13171 en_ZA
dc.identifier.vancouvercitation Dudeni-Tlhone N, Mutanga O, Debba P, Cho MA. Distinguishing tree species from in situ hyperspectral and temporal measurements through ensemble statistical learning. Remote Sensing, 15(17). 2023; http://hdl.handle.net/10204/13171. en_ZA
dc.identifier.ris TY - Article AU - Dudeni-Tlhone, Nontembeko AU - Mutanga, O AU - Debba, Pravesh AU - Cho, Moses A AB - Hyperspectral sensors capture and compute spectral reflectance of objects over many wavelength bands, resulting in a high-dimensional space with enough information to differentiate between spectrally similar objects. Due to the curse of dimensionality, high spectral dimensionality can also be difficult to handle and analyse, demanding complex processing and the use of advanced analytical techniques. Moreover, when hyperspectral measurements are taken at different temporal frequencies, separation is likely to improve; however, additional complexities in modelling time variability concurrently with this high spectral dimensionality may be created. As a result, the applicability of ensemble-based techniques suitable for high-dimensional data is examined in this research, together with the statistical evaluation of time-induced variability, since spectral measurements of tree species were taken at different time periods. Classification errors for the stochastic gradient boosting (SGB) and random forest (RF) methods ranged between 5.6% and 13.5%, respectively. Differences in classification accuracy or errors were also accounted for in the assessment of the models, with up to 46% of variation in classification error due to the effect of time in the RF model, indicating that measurement time is important in improving discrimination between tree species. This is because optical leaf characteristics can vary during the course of the year due to seasonal effects, health status, or the developmental stage of a tree. Different spectral properties (assumed from relevant wavelength bands) were found to be key factors impacting the models’ discrimination performance at various measurement times. DA - 2023-08 DB - ResearchSpace DP - CSIR J1 - Remote Sensing, 15(17) KW - Classification errors KW - Gradient boosting KW - Measurement time KW - Optical leaf reflectance characteristics KW - Random forest KW - Temporal-hyperspectral data and seasonal variability KW - Tree-based classification LK - https://researchspace.csir.co.za PY - 2023 SM - 2072-4292 T1 - Distinguishing tree species from in situ hyperspectral and temporal measurements through ensemble statistical learning TI - Distinguishing tree species from in situ hyperspectral and temporal measurements through ensemble statistical learning UR - http://hdl.handle.net/10204/13171 ER - en_ZA
dc.identifier.worklist 27062 en_US


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