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

Author:

Dominiak-Świgoń Martyna1ORCID,Olejniczak Paweł2ORCID,Nowak Maciej3ORCID,Lembicz Marlena1ORCID

Affiliation:

1. Department of Plant Taxonomy, Faculty of Biology , Adam Mickiewicz University , Poznań, Uniwersytetu Poznańskiego 6, 61-614 Poznań , Poland

2. Center for Research and Conservation of Mountain Plants, Institute of Nature Conservation PAS , Al. Adama Mickiewicza 33, 31-120 Kraków , Poland

3. Laboratory of Biological Spatial Information , Faculty of Biology , Adam Mickiewicz University , Poznań, Uniwersytetu Poznańskiego 6, 61-614 Poznań , Poland

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.

Publisher

Walter de Gruyter GmbH

Cited by 2 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Assessment of Adjusted and Normalized Mutual Information Variants for Band Selection in Hyperspectral Imagery;Supervised and Unsupervised Data Engineering for Multimedia Data;2024-04

2. The Effects of Atmospheric Modeling Covariance on Ground-Based Hyperspectral Measurements of Surface Reflectance;2021 11th Workshop on Hyperspectral Imaging and Signal Processing: Evolution in Remote Sensing (WHISPERS);2021-03-24

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