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Modeling maize above-ground biomass based on machine learning approaches using UAV remote-sensing data

机译:基于无人机学习数据的机器学习方法对玉米地上生物量建模

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摘要

BackgroundAbove-ground biomass (AGB) is a basic agronomic parameter for field investigation and is frequently used to indicate crop growth status, the effects of agricultural management practices, and the ability to sequester carbon above and below ground. The conventional way to obtain AGB is to use destructive sampling methods that require manual harvesting of crops, weighing, and recording, which makes large-area, long-term measurements challenging and time consuming. However, with the diversity of platforms and sensors and the improvements in spatial and spectral resolution, remote sensing is now regarded as the best technical means for monitoring and estimating AGB over large areas.
机译:背景技术地上生物量(AGB)是田间调查的基本农学参数,通常用于指示作物生长状况,农业管理实践的影响以及在地下和地下隔离碳的能力。获得AGB的常规方法是使用破坏性采样方法,这些方法需要人工收割农作物,称重和记录,这使得大面积,长期测量具有挑战性且耗时。但是,随着平台和传感器的多样性以及空间和光谱分辨率的提高,如今,遥感已被视为监视和估算大面积AGB的最佳技术手段。

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