基于核偏最小二乘的高分辨率航空图像和激光雷达数据分层建筑变化检测

Kaibin Zong, A. Sowmya, J. Trinder
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引用次数: 7

摘要

由于频繁发生的变化,地图数据库经常会出现场景细节过时的问题,因此自动变化检测变得至关重要。最近,研究人员探索了将高分辨率图像与机载激光雷达数据相结合的变化检测方法,以克服单独使用图像的缺点。然而,不同特征之间的多重相关性往往被忽略,虚警会进一步降低最终检测结果的价值。在本文中,我们提出了一个分层框架,通过融合高分辨率航空图像和提供高程信息的机载激光雷达数据来进行建筑变化检测。引入核偏最小二乘(KPLS)方法处理特征相关性,在单个学习过程中同时进行降维和像素级变化检测。为了解决虚警率较高的问题,提出了一种基于对象的后处理技术,进一步消除虚警。在这一步中,所有的光谱、结构和上下文信息被组合在一起。实验结果证明了该方法对建筑物变更检测的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kernel Partial Least Squares Based Hierarchical Building Change Detection Using High Resolution Aerial Images and Lidar Data
Map databases usually suffer from obsolete scene details due to frequently occurring changes, therefore automatic change detection has become vital. Recently, researchers have explored change detection by combining high resolution images with airborne lidar data to overcome the disadvantages of using images alone. However, multiple correlations between different features are usually ignored and false alarms will further depress the value of final detection result. In this paper, we propose an hierarchical framework for building change detection by fusing high resolution aerial images with airborne lidar data that provides elevation information. The kernel partial least squares (KPLS) method is introduced for dealing with feature correlations, and dimension reduction and pixel level change detection are conducted simultaneously in a single learning process. To address the relatively high false alarm rate, an object based post processing technique is proposed to further eliminate those pseudo candidates. All spectral, structural and contextual information are combined together in this step. Experimental results demonstrate the capability of our proposed method for building change detection.
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