Building detection in high resolution remotely sensed images based on morphological operators

O. Aytekin, ilkay Ulusoy, Esra Zeynep Abacioglu, Erhan Gokcay
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引用次数: 14

Abstract

Information retrieval from high resolution remotely sensed images is a challenging issue due to the inherent complexity and the curse of dimensionality of data under study. This paper presents an approach for building detection in high resolution remotely sensed images incorporating structural information of spatial data into spectral information. The proposed approach moves along eliminating irrelevant areas in a hierarchical manner. As a first step, pan-sharpened image is obtained from multi-spectral and panchromatic bands of Quickbird image. Vegetation and shadow regions are masked out by using Normalized Difference Vegetation Index (NDVI) and ratio of hue to intensity in YIQ model, respectively. Then, panchromatic band is filtered by mean shift filtering for smoothing structures while preserving the discontinuities near boundaries. Next, differential morphological profile (DMP) is calculated for each pixel and a relative measure of structure size is recorded as the first maximum value of DMP which generates a labeled image representing connected components according to sizes of structures. However, there appear some connected components which are irrelevant to buildings in shape. To eliminate those connected components, their skeletons are obtained via thinning to get a relative length measure along with measuring areas of connected components. These measures are compared to a threshold individually, which provides a cue for a candidate building structure.
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基于形态学算子的高分辨率遥感图像建筑检测
高分辨率遥感影像的信息检索由于其固有的复杂性和所研究数据的维数诅咒,是一个具有挑战性的问题。本文提出了一种将空间数据结构信息与光谱信息相结合的高分辨率遥感影像中建筑物检测方法。所提出的方法以分层的方式消除不相关的区域。首先,从Quickbird图像的多光谱和全色波段得到泛锐化图像。在YIQ模型中,分别使用归一化植被指数(NDVI)和色度比掩盖植被和阴影区域。然后,对全色波段进行均值移位滤波,使其平滑,同时保持边界附近的不连续。接下来,计算每个像素的差分形态轮廓(DMP),并将结构尺寸的相对度量记录为DMP的第一个最大值,该DMP根据结构的尺寸生成表示连接组件的标记图像。然而,出现了一些与建筑形状无关的连接组件。为了消除这些连接的组件,通过细化它们的骨架来获得相对长度测量以及连接组件的测量面积。这些度量分别与阈值进行比较,这为候选建筑结构提供了线索。
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