Total carbon mapping with hyperspectral unmixing techniques

H. Soydan, A. Koz, H. S. Düzgün, Aydin Alatan
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Abstract

Depending on the ground sampling distance of a remote sensor, a pixel of a spectral data cube is represented as a combination of the reflected signals of the materials which constitutes the observed pixel. Hyperspectral unmixing algorithms model the pixel of a data cube to determine and extract the spectral signatures of its components, namely endmembers, with their corresponding abundance fractions. This study first reviews the interaction and mitigation mechanisms of heavy metals with carbon content in soil, specifically due to coal mining activities and thermal plants. Such mechanism is then investigated with hyperspectral unmixing techniques by producing total carbon maps for an abandoned coal mine site. The utilized data for the study area is obtained on August 2013 with multispectral Worldview-2 satellite sensor. The acquired image is orthorectified and atmospherically corrected for radiance to reflectance conversion prior to the analysis. The soil samples are mainly collected from the problematic regions in terms of soil pollution. The samples are analyzed with LECO TrueSpec CHN_S device to measure total carbon levels, which are employed as ground truth to assess the performance of unmixing algorithms. The resulting abundance maps for carbon content are found to have a high compatibility with each other and the ground truth data, which effectively point out the regions of high carbon content.
用高光谱分解技术绘制全碳图
根据遥感器的地面采样距离,光谱数据立方体的像素表示为构成观测像素的材料的反射信号的组合。高光谱解混算法对数据立方体的像素进行建模,以确定并提取其组成部分(即端元)及其相应丰度分数的光谱特征。本研究首先回顾了土壤中重金属与碳含量的相互作用和减缓机制,特别是由于煤炭开采活动和火力发电厂。然后,利用高光谱分解技术,通过对一个废弃的煤矿场地制作总碳图来研究这种机制。研究区利用的数据是2013年8月用多光谱Worldview-2卫星传感器获取的。在分析之前,对获得的图像进行正校正和大气校正,以进行辐射到反射率的转换。土壤样本主要采集于土壤污染较为严重的地区。使用LECO TrueSpec CHN_S装置对样品进行分析,测量总碳含量,并将其作为评估解混算法性能的基础真值。所得的碳含量丰度图与地面真值数据具有较高的兼容性,有效地指出了高碳含量的区域。
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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