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Extraction of urban built-up surfaces and its subclasses using existing built-up indices with separability analysis of spectrally mixed classes in AVIRIS-NG imagery

机译:使用现有的内置索引提取城市内置曲面及其子类,具有Aviris-NG Imagery的谱混合类别的可分离分析

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Understanding the urban environments and their spatio-temporal behavior is necessary for local and regional planning along with environmental management. For monitoring and analyzing the urban environment, remote sensing imagery has been widely used due to its ability for repetitive coverage over large geographical areas. Compared with conventional per-pixel and sub-pixel analysis of remote sensing imagery, spectral indices have noticeable advantages because of their easy implementation and fast execution. However, most of the spectral indices are designed for multispectral imagery to extract only one land cover class, and confusion between other land cover classes still persists. This research explores the most significant spectral bands in AVIRIS-NG hyperspectral imagery for detection of built-up surfaces and its subclasses i.e. roads and roofs. Further, this study utilizes existing built-up indices for detection of urban built-up surfaces in the first level followed by its subcategories in the second level. Finally, a separability analysis between spectrally mixed urban land cover classes using various measures is also addressed. Results of the analysis indicate that BSI, NBI, and BAEI can prove to be effective for extraction of built-up surfaces with an overall accuracy (OA) of 93.89%, 90.11%, and 85.15%, respectively. Further, REI with OA of 94.40% appears to be suitable for extraction of road surfaces while NBAI with 95% OA can prove its efficacy for extraction of rooftops in AVIRIS-NG imagery. It also concludes that, for aforesaid indices, built-up surfaces (Level-1 and 2) can be effectively separated from the bare soil in hyperspectral imagery with slight confusion between road and roof surfaces.
机译:理解城市环境及其时空行为是地方和区域规划以及环境管理所必需的。为了监测和分析城市环境,由于其在大地理区域重复覆盖能力,遥感图像已被广泛使用。与遥感图像的传统每个像素和子像素分析相比,光谱指数具有明显的优点,因为它们易于实现和快速执行。然而,大多数光谱指数都是为多光谱图像设计的,以仅提取一个陆地覆盖类,而其他陆地覆盖类之间的混乱仍然存在。该研究探讨了Aviris-NG高光谱图像中最重要的光谱带,用于检测内置表面及其子类,即道路和屋顶。此外,本研究利用现有的内置指数用于检测第一级城市内置表面,然后是其子类别在第二级。最后,还解决了使用各种措施的频谱混合城市土地覆盖类别之间的可分离分析。分析结果表明BSI,NBI和Baei可以证明分别为93.89%,90.11%和85.15%的整体精度(OA)提取内置表面。此外,具有94.40%的OA的REI似乎适用于提取道路表面,而NBAI具有95%OA可以证明其在Aviris-NG Imagery中提取屋顶的功效。它还得出结论,对于上述指标,可以有效地与高光谱图像中的裸露土壤有效地分离出来的地面(1和2),并且在道路和屋顶表面之间轻微混淆。

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