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A Framework for Rice Heavy Metal Stress Monitoring Based on Phenological Phase Space and Temporal Profile Analysis

机译:基于物候相空间和时间剖面分析的水稻重金属胁迫监测框架

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摘要

Previous studies make it possible to use remote sensing techniques to monitor heavy metal stress of rice synchronously and continuously. However, most studies mainly focus on the analysis of rice’s visual symptoms and physiological functions rather than temporal information during the growth period, which may reflect significant changes of rice under heavy metal stress. In this paper, an enhanced spatial and temporal adaptive reflectance fusion model was used to generate synthetic Landsat time series. A normalized difference water index and an enhanced vegetation index were employed to build phenological phase space. Then, the ratio of the rice growth rate fluctuation (GRFI Ratio) was constructed for discriminating the different heavy metal stress levels on rice. Results suggested that the trajectories of rice growth in phenological phase space can depict the similarities and differences of rice growth under different heavy metal stress levels. The most common phenological parameters in the phase space cannot accurately discriminate the heavy metal stress level. However, the GRFI Ratio that we proposed outperformed in discriminating different levels of heavy metal stress. This study suggests that this framework of detecting the heavy metal pollution in paddy filed based on phenological phase space and temporal profile analysis is promising.
机译:以前的研究使利用遥感技术同步连续地监测水稻的重金属胁迫成为可能。但是,大多数研究主要集中在分析水稻在生长期间的视觉症状和生理功能,而不是时间信息,这可能反映了重金属胁迫下水稻的显着变化。在本文中,使用增强的时空自适应反射融合模型来生成合成的Landsat时间序列。采用归一化差异水指数和增强植被指数来建立物候相空间。然后,构建水稻生长速率波动的比率(GRFI比率)以区分水稻上不同的重金属胁迫水平。结果表明,物候相空间中水稻生长的轨迹可以反映出不同重金属胁迫水平下水稻生长的异同。相空间中最常见的物候参数无法准确地区分重金属应力水平。但是,我们提出的GRFI比率在区分不同水平的重金属应力方面表现出色。这项研究表明,这种基于物候相空间和时间剖面分析的稻田重金属污染检测框架是有前途的。

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