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Early Diagnosis of Vegetation Health From High-Resolution Hyperspectral and Thermal Imagery: Lessons Learned From Empirical Relationships and Radiative Transfer Modelling

机译:高分辨率高光谱和热图像的早期诊断植被健康:从经验关系和辐射转移建模中汲取的经验教训

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Purpose of Review We provide a comprehensive review of the empirical and modelling approaches used to quantify the radiation-vegetation interactions related to vegetation temperature, leaf optical properties linked to pigment absorption and chlorophyll fluorescence emission, and of their capability to monitor vegetation health. Part 1 provides an overview of the main physiological indicators (PIs) applied in remote sensing to detect alterations in plant functioning linked to vegetation diseases and decline processes. Part 2 reviews the recent advances in the development of quantitative methods to assess PI through hyperspectral and thermal images. Recent Findings In recent years, the availability of high-resolution hyperspectral and thermal images has increased due to the extraordinary progress made in sensor technology, including the miniaturization of advanced cameras designed for unmanned aerial vehicle (UAV) systems and lightweight aircrafts. This technological revolution has contributed to thewider use of hyperspectral imaging sensors by the scientific community and industry; it has led to better modelling and understanding of the sensitivity of different ranges of the electromagnetic spectrum to detect biophysical alterations used as earlywarning indicators of vegetation health.Summary The review deals with the capability of PIs such as vegetation temperature, chlorophyll fluorescence, photosynthetic energy downregulation and photosynthetic pigments detected through remote sensing to monitor the early responses of plants to different stressors. Various methods for the detection of PI alterations have recently been proposed and validated to monitor vegetation health. The greatest challenges for the remote sensing community today are (i) the availability of high spatial, spectral and temporal resolution image data; (ii) the empirical validation of radiation-vegetation interactions; (iii) the upscaling of physiological alterations from the leaf to the canopy, mainly in complex heterogeneous vegetation landscapes; and (iv) the temporal dynamics of the PIs and the interaction between physiological changes.
机译:审查目的我们提供了对用于量化与植被温度相关的辐射 - 植被相互作用的实证和建模方法,与颜料吸收和叶绿素荧光发射相关的辐射 - 植被相互作用,以及它们监测植被健康的能力。第1部分概述了应用于遥感中的主要生理指标(PIS),以检测与植被疾病和衰减过程相关的植物功能的改变。第2部分审查最近通过高光谱和热图像进行评估PI的定量方法的最新进展。近年来最近的发现,由于传感器技术的非凡进展,高分辨率高光谱和热图像的可用性增加,包括专为无人机(UAV)系统和轻量级飞机设计的先进摄像机的小型化。这种技术革命对科学界和行业的驾驶高光谱成像传感器做出了贡献;它导致了对电磁谱不同范围的敏感性的更好的建模和理解,以检测用作植被健康的早期装备指标的生物物理改变。审查涉及PI等植被温度,叶绿素荧光,光合能量下调的能力。通过遥感检测到光合色素,以监测植物的早期响应到不同的压力源。最近提出并验证了检测PI改变的各种方法,以监测植被健康。今天遥感社区的最大挑战是(i)高空间,光谱和时间分辨率图像数据的可用性; (ii)辐射 - 植被相互作用的实证验证; (iii)从叶片到树冠的生理改变的上升,主要是复杂的异构植被景观; (iv)PIS的时间动态和生理变化之间的相互作用。

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