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Step-wise Land-class Elimination Approach for extracting mixed-type built-up areas of Kolkata megacity

机译:提取加尔各答巨型性混合型建筑面积的逐步落地陆级消除方法

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摘要

The extraction of urban built-up areas is an important aspect of urban planning and understanding the complex drivers and biophysical mechanism of urban climate processes. However, built-up area extraction using Landsat data is a challenging task due to spatio-temporal dynamics and spatially intermixed nature of Land Use and Land Cover (LULC) in the cities of the developing countries, particularly in tropics. In the light of advantages and drawbacks of the Normalized Difference Built-up Index (NDBI) and Built-up Area Extraction Method (BAEM), a new and simple method i.e. Step-wise Land-class Elimination Approach (SLEA) is proposed for rapid and accurate mapping of urban built-up areas without depending exclusively on the band specific normalized indices, in order to pursue a more generalized approach. It combines the use of a single band layer, Normalized Difference Vegetation Index (NDVI) image and another binary image obtained through Logit model. Based on the spectral designation of the satellite image in use, a particular band is chosen for identification of water pixels. The Double-window Flexible Pace Search (DFPS) approach is employed for finding the optimum threshold value that segments the selected band image into water and non-water categories. The water pixels are then eliminated from the original image. The vegetation pixels are similarly identified using the NDVI image and eliminated. The residual pixels left after elimination of water and vegetation categories belong either to the built-up areas or to bare land categories. Logit model is used for separation of the built-up areas from bare lands. The effectiveness of this method was tested through the mapping of built-up areas of the Kolkata Metropolitan Area (KMA), India from Thematic Mapper (TM) images of 2000, 2005 and 2010, and Operational Land Imager (OLI) image of 2015. Results of the proposed SLEA were 95.33% accurate on the whole, while those derived by the NDBI and BAEM approaches returned an o
机译:城市建设领域的提取是城市规划的一个重要方面,了解城市气候过程的复杂司机和生物物理机制。然而,由于发展中国家城市城市的时空动态和土地利用和土地覆盖(LULC)的时空动态和空间混合性质,采用Landsat数据的内置区域是一项挑战性的任务,特别是在热带地区。鉴于归一化差异建筑指数(NDBI)和内置区域提取方法(BAEM)的优点和缺点,提出了一种新的简单方法,即迅速并准确地绘制了城市建筑区域,而无需独家比标准化指标,以追求更广泛的方法。它结合了单个带层,归一化差异植被指数(NDVI)图像和通过Logit模型获得的另一二进制图像的使用。基于使用中的卫星图像的光谱指定,选择特定频带以识别水像素。采用双窗口灵活的步伐搜索(DFPS)方法来查找将所选带图像分成水和非水分类别的最佳阈值。然后从原始图像中消除水像素。使用NDVI图像类似地识别植被像素并消除。消除水和植被类别后留下的残余像素属于内置区域或裸机类别。 LogIT模型用于分离来自裸机的内置区域。通过2000,2005和2010年的专题映射器(TM)图像的Kolkata Metropolitan地区(KMA),印度的内置区域的映射测试了这种方法的有效性。拟议的SLEA的结果整体准确为95.33%,而NDBI和BAEM方法的那些返回O.

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