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Object based building footprint detection from high resolution multispectral satellite image using K-means clustering algorithm and shape parameters

机译:基于对象的基于高分辨率多光谱卫星图像的构建占用算法使用K-means聚类算法和形状参数

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摘要

Object-based image analysis (OBIA) has been a new area of research in satellite image processing applications, since it improves the quality of information acquisition about geospatial objects and also enables to add spatial and contextual information to the objects of interest. The extraction of buildings from High Resolution Satellite (HRS) image in an urban scenario has been an intricate problem due to their different size, shape, varying rooftop textures and low contrast between building and surrounding region. In this study, a new object-based automatic building extraction technique has been proposed to extract building footprints from HRS pan sharpened IKONOS multispectral image. The study is mainly emphasizing on obtaining optimal values for segmentation parameters, shape parameters, and defining rule set to extract buildings and eliminate misclassified other urban features. The suitability of the technique has been judged using different indicators, such as, completeness, correctness and quality.
机译:基于对象的图像分析(OBIA)是卫星图像处理应用中的新研究领域,因为它提高了关于地理空间对象的信息采集质量,并且还可以将空间和上下文信息添加到感兴趣的对象。在城市情景中,从高分辨率卫星(HRS)图像的建筑物的建筑物的提取是由于其不同的大小,形状,不同的屋顶纹理和建筑物和周围地区之间的低对比度是复杂的问题。在这项研究中,已经提出了一种新的基于对象的自动建筑提取技术,以从HRS Pan锐化的Ikonos多光谱图像中提取建筑占地面积。该研究主要是强调获得分割参数,形状参数和定义规则集的最佳值,以提取建筑物并消除错误分类的其他城市特征。使用不同的指标判断该技术的适用性,例如完整性,正确性和质量。

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