Automatic building change detection in wide area surveillance

P. Sidike, Almabrok E. Essa, Fatema A. Albalooshi, V. Asari, V. Santhaseelan
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引用次数: 3

Abstract

We present an automated mechanism that can detect and characterize the building changes by analyzing airborne or satellite imagery. The proposed framework can be categorized into three stages: building detection, boundary extraction and change identification. To detect the buildings, we utilize local phase and local amplitude from monogenic signal to extract building features for addressing issues of varying illumination. Then a support vector machine with Radial basis kernel is used for classification. In the boundary extraction stage, a level-set function with self-organizing map based segmentation method is used to find the building boundary and compute physical area of the building segments. In the last stage, the change of the detected building is identified by computing the area differences of the same building that captured at different times. The experiments are conducted on a set of real-life aerial imagery to show the effectiveness of the proposed method.
广域监控中楼宇变化自动检测
我们提出了一种自动化机制,可以通过分析航空或卫星图像来检测和表征建筑物的变化。该框架可分为三个阶段:建筑检测、边界提取和变化识别。为了检测建筑物,我们利用单基因信号的局部相位和局部幅度来提取建筑物特征,以解决光照变化的问题。然后采用径向基核支持向量机进行分类。在边界提取阶段,采用水平集函数和基于自组织映射的分割方法寻找建筑边界,计算建筑段的物理面积。在最后阶段,通过计算在不同时间捕获的同一建筑物的面积差来识别被检测建筑物的变化。在一组真实的航拍图像上进行了实验,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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