A critical review on applications of hyperspectral remote sensing in crop monitoring

IF 1.6 4区 农林科学 Q1 Agricultural and Biological Sciences Experimental Agriculture Pub Date : 2022-07-25 DOI:10.1017/S0014479722000278
Huan Yu, B. Kong, Yuting Hou, Xiaoyu Xu, Tao Chen, Xiangmeng Liu
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引用次数: 7

Abstract

Summary Numerous technologies have contributed to the recent development of agriculture, especially the advancement in hyperspectral remote sensing (HRS) constituted a revolution in crop monitoring. The widespread use of HRS to obtain crop parameters suggests the need for a review of research advances in this area. HRS offers new theories and methods for studying crop parameters, but much work needs to be done both experimentally and theoretically before we can truly understand the physical and chemical processes that predict these crop parameters. The study focuses on the following elements: 1) The article provides a relatively comprehensive introduction to HRS and how it can be applied to crop monitoring; 2) Current state-of-the-art techniques are summarized and analyzed to inform further advances in crop monitoring; 3) Opportunities and challenges for crop monitoring applications using HRS are discussed, and future research is summarized. Finally, through a comprehensive discussion and analysis, the article proposes new directions for using HRS to study crop characteristics, such as new data mining techniques including deep learning provide opportunities for efficient processing of large amounts of HRS data; combining the temporal and dynamic characteristics of crop parameters and vegetation growth processes will greatly improve the accuracy of crop parameter detection and monitoring; multidata fusion and multiscale data assimilation will become HRS monitoring. Multidata fusion and multiscale data assimilation will become another research hotspot for HRS monitoring of crop parameters.
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高光谱遥感在作物监测中的应用综述
摘要许多技术为农业的最新发展做出了贡献,特别是高光谱遥感技术的进步构成了作物监测的一场革命。HRS用于获取作物参数的广泛使用表明,有必要对该领域的研究进展进行审查。HRS为研究作物参数提供了新的理论和方法,但在我们真正了解预测这些作物参数的物理和化学过程之前,还需要进行大量的实验和理论工作。本研究主要集中在以下几个方面:1)本文对HRS及其在作物监测中的应用进行了较为全面的介绍;2) 对当前最先进的技术进行了总结和分析,为作物监测的进一步进展提供信息;3) 讨论了利用HRS进行作物监测应用的机遇和挑战,并总结了未来的研究。最后,通过全面的讨论和分析,文章提出了利用HRS研究作物特征的新方向,例如包括深度学习在内的新数据挖掘技术为高效处理大量HRS数据提供了机会;将作物参数和植被生长过程的时间和动态特征相结合,将大大提高作物参数检测和监测的准确性;多数据融合和多尺度数据同化将成为HRS监测。多数据融合和多尺度数据同化将成为HRS作物参数监测的又一研究热点。
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来源期刊
Experimental Agriculture
Experimental Agriculture 农林科学-农艺学
CiteScore
2.50
自引率
6.20%
发文量
29
审稿时长
24 months
期刊介绍: With a focus on the tropical and sub-tropical regions of the world, Experimental Agriculture publishes the results of original research on field, plantation and herbage crops grown for food or feed, or for industrial purposes, and on farming systems, including livestock and people. It reports experimental work designed to explain how crops respond to the environment in biological and physical terms, and on the social and economic issues that may influence the uptake of the results of research by policy makers and farmers, including the role of institutions and partnerships in delivering impact. The journal also publishes accounts and critical discussions of new quantitative and qualitative methods in agricultural and ecosystems research, and of contemporary issues arising in countries where agricultural production needs to develop rapidly. There is a regular book review section and occasional, often invited, reviews of research.
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