Image-based field plant phenotyping approaches for modern agriculture

W. Guo, Kazuhiro Nishioka, Kyosuke Ymamoto, T. Fukatsu, S. Ninomiya
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引用次数: 2

Abstract

Plant phenotyping becoming increasingly important in modern agriculture, it investigates how a plant's genome, interacting with the environment, affects the observable traits of a plant. To solve the destructive and labor-intensive limitations of phenotyping, new technique known as “image-based Phenotyping” is being conducted successfully under controlled environment such as breeding industry. However, in real agricultural field the plant phenotype is formed under the dynamic interaction between genotype and environment, phenotypes generated from controlled environments experiments do not always correlate well with typical field behavior of plants. Moreover, different from the situation of plants grown individually in pots under controlled environment, plants in the field do not grow isolated but instead are free to interact with neighboring plants, for example via their root systems. Therefore, phenotypic characteristics such as canopy configuration measured in plants communities grown under uncontrolled outdoor environments are different those of individual plants. Thus, there is a strong need to establish high-throughput phenotyping methods that can be used to screen crop populations under natural environmental conditions in the field. In this paper, we introduce several approaches that aimed to contribute to field phenotyping system that will be usable in natural environments, particularly based on RGB images collected by low cost field monitoring systems.
现代农业中基于图像的田间植物表型分析方法
植物表型在现代农业中变得越来越重要,它研究植物的基因组如何与环境相互作用,影响植物的可观察性状。为了解决表型分析的破坏性和劳动密集型的局限性,一种被称为“基于图像的表型分析”的新技术正在育种行业等受控环境下成功进行。然而,在实际的农业田间,植物表型是在基因型与环境的动态相互作用下形成的,受控环境实验产生的表型并不总是与植物的典型田间行为有很好的相关性。此外,与受控环境下盆栽植物单独生长的情况不同,田间植物不是孤立生长,而是自由地与邻近植物相互作用,例如通过它们的根系。因此,在不受控制的室外环境下生长的植物群落中测量的冠层构型等表型特征与单株不同。因此,迫切需要建立高通量表型方法,用于筛选田间自然环境条件下的作物群体。在本文中,我们介绍了几种旨在为自然环境中可用的现场表型系统做出贡献的方法,特别是基于低成本现场监测系统收集的RGB图像。
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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