Detailed Investigation of Spectral Vegetation Indices for Fine Field-Scale Phenotyping

Maria Polivova, A. Brook
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引用次数: 3

Abstract

Spectral vegetation indices (VIs) are a well-known and widely used method for crop state estimation. These technologies have great importance for plant state monitoring, especially for agriculture. The main aim is to assess the performance level of the selected VIs calculated from space-borne multispectral imagery and point-based field spectroscopy in application to crop state estimation. The results obtained indicate that space-borne VIs react on phenology. This feature makes it an appropriate data source for monitoring crop development, crop water needs and yield prediction. Field spectrometer VIs were sensitive for estimating pigment concentration and photosynthesis rate. Yet, a hypersensitivity of field spectral measures might lead to a very high variability of the calculated values. The results obtained in the second part of the presented study were reported on crop state estimated by 17 VIs known as sensitive to plant drought. An alternative approach for identification early stress by VIs proposed in this study is Principal Component Analysis (PCA). The results show that PCA has identified the degree of similarity of the different states and together with reference stress states from the control plot clearly estimated stress in the actual irrigated field, which was hard to detect by VIs values only.
精细场尺度表型的光谱植被指数详细研究
光谱植被指数(VIs)是一种众所周知且应用广泛的作物状态估计方法。这些技术对植物状态监测,特别是农业监测具有重要意义。主要目的是评估从星载多光谱图像和基于点的场光谱计算的选定VIs在作物状态估计中的应用性能水平。结果表明,星载VIs对物候有一定的影响。这一特性使其成为监测作物发育、作物需水量和产量预测的合适数据源。现场分光光度计对色素浓度和光合速率的测定较为敏感。然而,场光谱测量的高度敏感性可能导致计算值的非常高的变异性。在本研究的第二部分中获得的结果报告了17个VIs对植物干旱敏感的作物状态估计。本研究提出的另一种识别VIs早期应力的方法是主成分分析(PCA)。结果表明,主成分分析法识别了不同状态的相似程度,并结合对照图的参考应力状态,清晰地估计了实际灌区的应力,这是仅用VIs值难以检测的。
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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