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Rural impervious surfaces extraction from Landsat 8 imagery and rural impervious surface index

机译:从Landsat 8影像中提取农村不透水面和农村不透水面指数

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There is an increasing need to understand pattern and growth of impervious surfaces in rural regions. However, studies using remote sensing of impervious surfaces have often focused on mapping impervious surfaces in urban regions with less emphasis placed on the rural impervious surfaces. In this paper, we proposed a new index, Rural Impervious Surface Index (RISI) by taking advantage of narrow spectral bands of Landsat 8 OLI for estimating impervious surfaces within rural land covers. This index is based on the combination of Normalized Difference Built-up Index (NDBI), Soil Adjusted Vegetation Index (SAVI) and Soil Index (SI). Respectively, these represent the three major rural land covers components: impervious surfaces, vegetation, and soil. The index was further used for estimating fraction of impervious surfaces using fuzzy KNN classifier. The performance of this technique was also compared with Linear Spectral Mixture Analysis (LSMA). Our results showed that RISI could accurately detect spatial pattern of rural impervious surfaces due to the suppressing background noise and minimizing spectral confusion. Accuracy assessment revealed that incorporation of RISI with fuzzy KNN classification generates higher correlation coefficient, lower root mean square and systematic error compared to the LSMA technique.
机译:人们越来越需要了解农村地区不透水表面的形态和生长情况。然而,使用不透水表面的遥感研究通常集中于在城市地区绘制不透水表面的地图,而对农村不透水表面的关注较少。在本文中,我们通过利用Landsat 8 OLI的窄谱带来估算农村土地覆盖物中的不渗透表面,提出了一个新的指数,农村不渗透表面指数(RISI)。该指数基于归一化差异累积指数(NDBI),土壤调整植被指数(SAVI)和土壤指数(SI)的组合。这些分别代表了三个主要的农村土地覆盖组成部分:不透水的表面,植被和土壤。使用模糊KNN分类器将该指数进一步用于估计不透水表面的分数。还将该技术的性能与线性光谱混合分析(LSMA)进行了比较。我们的结果表明,由于抑制了背景噪声并最大程度地减少了光谱混淆,RISI可以准确地检测出农村不透水表面的空间格局。准确性评估表明,与LSMA技术相比,将RISI与模糊KNN分类结合使用可产生更高的相关系数,更低的均方根值和系统误差。

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