Hyperspectral imaging in assessing the condition of plants: strengths and weaknesses

Martyna Dominiak-Świgoń, P. Olejniczak, M. Nowak, M. Lembicz
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Abstract

Abstract Hyperspectral remote sensing of plants is widely used in agriculture and forestry. Fast, large-area monitoring is applied, among others, in detecting and diagnosing diseases, stress conditions or predicting the yields. Using available tools to increase the yields of most important crop plants (wheat, rice, corn) without posing threat to food security is essential in the situation of current climate changes. Spectral plant indices are associated with biochemical and biophysical plant characteristics. Using the plant spectral properties (mainly chlorophyll red light absorption and near-infrared range light reflectance in leaf intercellular spaces), it is possible to estimate plant condition, water and carotenoid contents or detect disease. More and more often, based on commonly used hyperspectral vegetation indices, new, more sensitive indices are introduced. Furthermore, to facilitate data processing, artificial intelligence is employed, i.e., neural networks and deep convolutional neural networks. It is important in ecological research to carry out long-term observations and measurements of organisms throughout their lifespan. A non-invasive, quick method ensures that it may be used many times and at each stage of plant development.
高光谱成像技术在植物状况评估中的应用:优势和劣势
摘要植物高光谱遥感在农业和林业中有着广泛的应用。除其他外,快速、大面积的监测应用于检测和诊断疾病、胁迫条件或预测产量。在当前气候变化的情况下,利用现有工具在不威胁粮食安全的情况下提高最重要作物(小麦、水稻、玉米)的产量至关重要。植物光谱指数与植物的生化和生物物理特性有关。利用植物的光谱特性(主要是叶绿素红光吸收和叶片细胞间隙近红外范围的光反射率),可以估计植物状况、水分和类胡萝卜素含量或检测病害。在常用的高光谱植被指数的基础上,越来越多地引入新的、灵敏度更高的高光谱植被指数。此外,为了方便数据处理,采用了人工智能,即神经网络和深度卷积神经网络。在生态学研究中,对生物体的整个生命周期进行长期观察和测量是很重要的。一种非侵入性、快速的方法确保它可以在植物发育的每个阶段多次使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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