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Generalizing corrective gradient refinement in RBPF for occupancy grid LIDAR SLAM

机译:占用栅格LIDAR SLAM中RBPF中的校正梯度细化的广义化

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Rao-Backwellized Particle Filter (RBPF) has shown to be a successful framework for Simultaneous Localization and Mapping (SLAM). It is successful because of its non-parametric property in which avoid the local minimum, in turn, excels in the mapping application. However, researches that aim to improve RBPF is declining due to the randomness in the mapping solution and its memory consumption, where the current pervasive approach is the pose-graph SLAM. Recently, Corrective Gradient Refinement (CGR) - a new approach for improving particle filter-based localization - was proposed. In this paper, the traditional RBPF SLAM is augmented with CGR algorithm, and generalized so that it is able to be applied to any kind of robotic sensors. The occupancy grid map structure and LIDAR sensor are used as an implementation case of proposed generalized SLAM algorithm. In the future, this algorithm will be used as a basis for the pose-graph construction.
机译:Rao Backwellized粒子滤波器(RBPF)已被证明是同时定位和制图(SLAM)的成功框架。它之所以成功是因为它具有非参数属性,该属性避免了局部最小值,从而在映射应用程序中表现出色。但是,由于映射解决方案中的随机性及其内存消耗,旨在提高RBPF的研究正在减少,其中目前普遍使用的方法是姿态图SLAM。最近,提出了校正梯度细化(CGR)-一种新的改进基于粒子过滤器的定位的方法。本文对传统的RBPF SLAM进行了CGR算法的扩充和推广,使其可以应用于任何一种机器人传感器。占用栅格地图结构和激光雷达传感器被用作提出的广义SLAM算法的一个实现案例。将来,该算法将用作姿势图构造的基础。

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