Plant optics: underlying mechanisms in remotely sensed signals for phenotyping applications.

IF 2.6 3区 生物学 Q2 ECOLOGY AoB Plants Pub Date : 2023-07-01 DOI:10.1093/aobpla/plad039
Christopher Y S Wong
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Abstract

Optical-based remote sensing offers great potential for phenotyping vegetation traits and functions for a range of applications including vegetation monitoring and assessment. A key strength of optical-based approaches is the underlying mechanistic link to vegetation physiology, biochemistry, and structure that influences a spectral signal. By exploiting spectral variation driven by plant physiological response to environment, remotely sensed products can be used to estimate vegetation traits and functions. However, oftentimes these products are proxies based on covariance, which can lead to misinterpretation and decoupling under certain scenarios. This viewpoint will discuss (i) the optical properties of vegetation, (ii) applications of vegetation indices, solar-induced fluorescence, and machine-learning approaches, and (iii) how covariance can lead to good empirical proximation of plant traits and functions. Understanding and acknowledging the underlying mechanistic basis of plant optics must be considered as remotely sensed data availability and applications continue to grow. Doing so will enable appropriate application and consideration of limitations for the use of optical-based remote sensing for phenotyping applications.

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植物光学:表型应用中遥感信号的潜在机制。
基于光学的遥感技术为植被特征和功能的表型分析提供了巨大的潜力,可用于包括植被监测和评估在内的一系列应用。基于光学的方法的一个关键优势是与影响光谱信号的植被生理学、生物化学和结构的潜在机制联系。通过利用植物对环境的生理响应驱动的光谱变化,遥感产品可以用来估计植被的性状和功能。然而,这些产品通常是基于协方差的代理,在某些情况下可能导致误解和解耦。本观点将讨论(i)植被的光学特性,(ii)植被指数,太阳诱导荧光和机器学习方法的应用,以及(iii)协方差如何导致植物性状和功能的良好经验近似。随着遥感数据的可用性和应用的不断增长,必须考虑理解和承认植物光学的潜在机制基础。这样做将能够适当地应用并考虑到利用光学遥感进行表型分析的限制。
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来源期刊
AoB Plants
AoB Plants PLANT SCIENCES-
CiteScore
4.80
自引率
0.00%
发文量
54
审稿时长
20 weeks
期刊介绍: AoB PLANTS is an open-access, online journal that has been publishing peer-reviewed articles since 2010, with an emphasis on all aspects of environmental and evolutionary plant biology. Published by Oxford University Press, this journal is dedicated to rapid publication of research articles, reviews, commentaries and short communications. The taxonomic scope of the journal spans the full gamut of vascular and non-vascular plants, as well as other taxa that impact these organisms. AoB PLANTS provides a fast-track pathway for publishing high-quality research in an open-access environment, where papers are available online to anyone, anywhere free of charge.
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