Applying remote sensing expertise to crop improvement: progress and challenges to scale up high throughput field phenotyping from research to industry

D. Gouache, Katia Beauchêne, Agathe Mini, A. Fournier, Benoit de Solan, F. Baret, A. Comar
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引用次数: 3

Abstract

Digital and image analysis technologies in greenhouses have become commonplace in plant science research and started to move into the plant breeding industry. However, the core of plant breeding work takes place in fields. We will present successive technological developments that have allowed the migration and application of remote sensing approaches at large into the field of crop genetics and physiology research, with a number of projects that have taken place in France. These projects have allowed us to develop combined sensor plus vector systems, from tractor mounted and UAV (unmanned aerial vehicle) mounted spectroradiometry to autonomous vehicle mounted spectroradiometry, RGB (red-green-blue) imagery and Lidar. We have tested these systems for deciphering the genetics of complex plant improvement targets such as the robustness to nitrogen and water deficiency of wheat and maize. Our results from wheat experiments indicate that these systems can be used both to screen genetic diversity for nitrogen stress tolerance and to decipher the genetics behind this diversity. We will present our view on the next critical steps in terms of technology and data analysis that will be required to reach cost effective implementation in industrial plant breeding programs. If this can be achieved, these technologies will largely contribute to resolving the equation of increasing food supply in the resource limited world that lies ahead.
将遥感专业知识应用于作物改良:从研究到工业扩大高通量田间表型的进展和挑战
温室数字和图像分析技术在植物科学研究中已经司空见惯,并开始进入植物育种行业。然而,植物育种工作的核心在田间进行。我们将介绍连续不断的技术发展,这些技术发展使遥感方法在作物遗传学和生理学研究领域的迁移和应用成为可能,其中包括在法国开展的一些项目。这些项目使我们能够开发传感器加矢量组合系统,从拖拉机安装和无人机(无人机)安装的光谱辐射测量到自动车载光谱辐射测量、RGB(红绿蓝)图像和激光雷达。我们已经对这些系统进行了测试,以破译复杂植物改良目标的遗传学,例如小麦和玉米对氮和缺水的稳健性。我们的小麦实验结果表明,这些系统既可以用来筛选氮胁迫耐受性的遗传多样性,也可以用来破译这种多样性背后的遗传。我们将在技术和数据分析方面提出我们对下一步关键步骤的看法,这些步骤将需要在工业植物育种计划中实现成本效益的实施。如果能够实现这一点,这些技术将在很大程度上有助于解决未来资源有限的世界中增加粮食供应的问题。
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