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Automated Subpixel Surface Water Mapping from Heterogeneous Urban Environments Using Landsat 8 OLI Imagery

机译:使用Landsat 8 OLI图像从异类城市环境自动绘制亚像素表面水图

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Water bodies are a fundamental element of urban ecosystems, and water mapping is critical for urban and landscape planning and management. Remote sensing has increasingly been used for water mapping in rural areas; however, when applied to urban areas, this spatially- explicit approach is a challenging task due to the fact that the water bodies are often of a small size and spectral confusion is common between water and the complex features in the urban environment. Water indexes are the most common method of water extraction at the pixel level. More recently, spectral mixture analysis (SMA) has been widely employed in analyzing the urban environment at the subpixel level. The objective of this study is to develop an automatic subpixel water mapping method (ASWM) which can achieve a high accuracy in urban areas. Specifically, we first apply a water index for the automatic extraction of mixed land-water pixels, and the pure water pixels that are generated in this process are exported as the final result. Secondly, the SMA technique is applied to the mixed land-water pixels for water abundance estimation. As for obtaining the most representative endmembers, we propose an adaptive iterative endmember selection method based on the spatial similarity of adjacent ground surfaces. One classical water index method (the modified normalized difference water index (MNDWI)), a pixel-level target detection method (constrained energy minimization (CEM)), and two widely used SMA methods (fully constrained least squares (FCLS) and multiple endmember spectral mixture analysis (MESMA)) were chosen for the water mapping comparison in the experiments. The results indicate that the proposed ASWM was able to detect water pixels more efficiency than other unsupervised water extraction methods, and the water fractions estimated by the proposed ASWM method correspond closely to the reference fractions with the slopes of 0.97, 1.02, 1.04, and 0.98 and the R-squared values of 0.9454, 0.9486, 0.9665, and 0.9607 in regression analysis corresponding to different test regions. In the quantitative accuracy assessment, the ASWM method shows the best performance in water mapping with the mean kappa coefficient of 0.862, mean producer’s accuracy of 82.8%, and mean user’s accuracy of 91.8% for test regions.
机译:水体是城市生态系统的基本要素,水位图对于城市和景观规划与管理至关重要。遥感已越来越多地用于农村地区的水测绘;然而,当应用于城市地区时,由于水体的体积通常很小,并且水与城市环境中复杂特征之间的光谱混淆是常见的,因此这种在空间上明确的方法是一项具有挑战性的任务。水指数是在像素级别提取水的最常用方法。最近,光谱混合分析(SMA)已被广泛用于分析亚像素级别的城市环境。这项研究的目的是开发一种可以在城市地区实现高精度的自动亚像素水测图方法(ASWM)。具体来说,我们首先应用水指标来自动提取混合的陆地水像素,然后将在此过程中生成的纯水像素导出为最终结果。其次,将SMA技术应用于混合的陆地-水像素,以进行水丰度估算。为了获得最具代表性的端构件,我们提出了一种基于相邻地面空间相似性的自适应迭代端构件选择方法。一种经典的水指数方法(改进的归一化差异水指数(MNDWI)),像素级目标检测方法(约束能量最小化(CEM))和两种广泛使用的SMA方法(完全约束最小二乘(FCLS)和多个末端成员光谱混合分析(MESMA))被选作实验中的水图比较。结果表明,提出的ASWM能够比其他无监督的水提取方法更有效地检测水像素,并且通过提出的ASWM方法估计的水分数与参考分数非常接近,斜率分别为0.97、1.02、1.04和0.98。回归分析的R平方值分别为0.9454、0.9486、0.9665和0.9607,对应于不同的测试区域。在定量精度评估中,ASWM方法在水测图中显示出最佳性能,在测试区域中,平均kappa系数为0.862,平均生产者的精度为82.8%,平均用户的精度为91.8%。

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