核gpa:一个可变形的SLAM后端

Fang Bai, A. Bartoli
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引用次数: 1

摘要

在可变形环境中的同步定位和映射(SLAM)遇到了几个障碍。其中之一是缺乏全局注册技术。因此,当前的SLAM系统严重依赖于基于模板的方法。我们提出了一种新的全局配准技术KernelGPA来弥补这一差距。我们使用核方法定义了非刚性变换,并证明了映射的主轴可以以封闭形式全局求解,直至沿每个轴的全局范围模糊。我们建议在统一的优化框架中解决全局范围的模糊性和刚性姿态,从而产生可以很容易地纳入传感器融合框架的成本。我们使用各种数据集演示了KernelGPA的配准性能,特别关注计算机断层扫描(CT)配准。我们发布代码1和数据,以促进这一方向的未来研究。在所有情况下,CVE-Gfold在大多数情况下。这清楚地表明
本文章由计算机程序翻译,如有差异,请以英文原文为准。
KernelGPA: A Deformable SLAM Back-end
—Simultaneous localization and mapping (SLAM) in the deformable environment has encountered several barricades. One of them is the lack of a global registration technique. Thus current SLAM systems heavily rely on template based methods. We propose KernelGPA, a novel global registration technique to bridge the gap. We define nonrigid transformations using a kernel method, and show that the principal axes of the map can be solved globally in closed-form, up to a global scale ambiguity along each axis. We propose to solve both the global scale ambiguity and rigid poses in a unified optimization framework, yielding a cost that can be readily incorporated in sensor fusion frameworks. We demonstrate the registration performance of KernelGPA using various datasets, with a special focus on computerized tomography (CT) registration. We release our code 1 and data to foster future research in this direction. in all cases, and the CVE-Gfold for most of cases. This clearly shows that
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