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首页> 外文期刊>IEEE Transactions on Robotics >Exactly Sparse Delayed-State Filters for View-Based SLAM
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Exactly Sparse Delayed-State Filters for View-Based SLAM

机译:基于视图的SLAM的完全稀疏延迟状态滤波器

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摘要

This paper reports the novel insight that the simultaneous localization and mapping (SLAM) information matrix is exactly sparse in a delayed-state framework. Such a framework is used in view-based representations of the environment that rely upon scan-matching raw sensor data to obtain virtual observations of robot motion with respect to a place it has previously been. The exact sparseness of the delayed-state information matrix is in contrast to other recent feature-based SLAM information algorithms, such as sparse extended information filter or thin junction-tree filter, since these methods have to make approximations in order to force the feature-based SLAM information matrix to be sparse. The benefit of the exact sparsity of the delayed-state framework is that it allows one to take advantage of the information space parameterization without incurring any sparse approximation error. Therefore, it can produce equivalent results to the full-covariance solution. The approach is validated experimentally using monocular imagery for two datasets: a test-tank experiment with ground truth, and a remotely operated vehicle survey of the RMS Titanic
机译:本文报道了新颖的见解,即同时定位和映射(SLAM)信息矩阵在延迟状态框架中正好稀疏。在依赖于扫描匹配原始传感器数据的环境的基于视图的表示中,使用了这样的框架,以获得相对于先前位置的机器人运动的虚拟观察。延迟状态信息矩阵的精确稀疏度与其他最近的基于特征的SLAM信息算法(例如稀疏扩展信息滤波器或稀疏结树滤波器)形成对比,因为这些方法必须进行逼近才能强制特征-基于稀疏的SLAM信息矩阵。延迟状态框架的精确稀疏性的好处在于,它允许人们利用信息空间参数化的优势,而不会引起任何稀疏的近似误差。因此,它可以产生与全协方差解决方案等效的结果。使用单眼影像对两个数据集进行了实验验证,该方法是具有地面真实性的测试罐实验以及RMS Titanic的远程车辆勘测

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