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Hyperspectral sensing of heavy metals in soil and vegetation: Feasibility and challenges

机译:土壤和植被中重金属的高光谱传感:可行性和挑战

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摘要

Remote sensing of heavy metal contamination of soils has been widely studied. These studies concentrate heavily on the hyperspectral reflectance of typical metals in soils and in plants measured either in situ or in the laboratory. The most used wavebands lie within the visible-near infrared portion of the spectrum, especially the red edge. In comparison, mid- and far-infrared wavelengths are used far less frequently. Hyperspectral data are optimized to suppress noises and enhance the signal of the targeted metals through spectral derivatives and vegetation indexing. It is found that only subtle disparity exists in spectral responses for some metals at a sufficiently high content level. Not all metals have their own unique spectral response. Their detection has to rely on their co-variation with the spectrally responsive metals or organic matter in the soils. The closeness of the correlation dictates the accuracy of prediction. Without any theoretical grounding, this correlation is site-specific. Various analytical methods, including stepwise multi-linear regression, partial least squares regression, and neural networks have been used to model metal content level from the identified spectrally sensitive bands and/or their transformed indices. Both the model and the explanatory variables vary with the metal under detection and the area from which in situ samples are collected. Despite the amply demonstrated feasibility of estimating several metals by a large number of authors, only a few have succeeded in mapping the spatial distribution of metals from HyMAP, HJ-1A and Hyperion images to a satisfactory accuracy using complex algorithms and after taking environmental variables into account. The large number of reported failures testifies the difficulty in the detection of heavy metals in soils and plants, especially when their concentration level is low. The reasons or factors responsible for the success or failure have not been systematically analyzed, including the minimal spectral resolution required. (C) 2017 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:对土壤中重金属污染的遥感已被广泛研究。这些研究主要集中于土壤和植物中原位或实验室测量的典型金属的高光谱反射率。最常用的波段位于光谱的近红外部分,尤其是红色边缘。相比之下,中红外和远红外波长的使用频率要低得多。优化了高光谱数据,以抑制噪声并通过光谱导数和植被索引增强目标金属的信号。发现在足够高的含量水平下,某些金属的光谱响应中仅存在细微的差异。并非所有的金属都有自己独特的光谱响应。它们的检测必须依赖于它们与土壤中光谱响应性金属或有机物的协变。相关性的紧密程度决定了预测的准确性。没有任何理论基础,这种关联是特定于站点的。各种分析方法,包括逐步多线性回归,偏最小二乘回归和神经网络,已被用来根据识别出的光谱敏感带和/或其变换的指数对金属含量水平进行建模。模型和解释变量都随被检测金属以及收集原位样品的区域而变化。尽管大量作者充分证明了估算几种金属的可行性,但只有少数人使用复杂算法并考虑了环境变量,成功地将HyMAP,HJ-1A和Hyperion图像中金属的空间分布图绘制到令人满意的精度。帐户。大量报道的失败证明了土壤和植物中重金属的检测困难,特别是当它们的浓度较低时。尚未成功分析导致成功或失败的原因或因素,包括所需的最低光谱分辨率。 (C)2017国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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