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Registration Using Robust Kernel Principal Component for Object-Based Change Detection

机译:使用稳健的内核主组件进行基于对象的更改检测的注册

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摘要

Postclassification comparison provides a feasible approach to detect the changes of remote sensing images which have strongly inhomogeneous scenes. For pre- and postevent scenarios, registration is a challenging task because variform classifications may result in a dearth of homologous points to be used as tie points. In this letter, we show how the variform objects can be precisely registered using their robust kernel principal components (RKPCs). The contribution can be divided into two parts. First, a robust kernel principal component analysis (RKPCA) method is proposed to capture the common pattern of the variform objects. Second, a registration approach based on the implicit RKPCs is derived. We demonstrate the power of the proposed approach using two real cases: one for lake monitoring in the Jiayu region, and the other for damage mapping of earthquake-induced barrier lake at Tangjiashan. The results show that the method is effective in capturing structural pattern and generalizes well for registration.
机译:后分类比较提供了一种可行的方法来检测具有强烈不均匀场景的遥感图像的变化。对于事前和事后场景,注册是一项具有挑战性的任务,因为变量形式分类可能会导致缺乏用作关联点的同源点。在这封信中,我们展示了如何使用变量的强大内核主成分(RKPC)精确注册变量对象。贡献可以分为两个部分。首先,提出了一种鲁棒的核主成分分析(RKPCA)方法来捕获变量对象的通用模式。其次,推导了基于隐式RKPC的注册方法。我们使用两种实际情况证明了该方法的强大功能:一种用于嘉yu地区的湖泊监测,另一种用于唐家山地震诱发的障碍湖的破坏图。结果表明,该方法能有效地捕获结构图案,并能很好地推广配准。

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