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Information Gain-based Exploration Using Rao-Blackwellized Particle Filters

机译:使用Rao-Blackwellized粒子滤波器的基于信息增益的探索

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This paper presents an integrated approach to exploration, mapping, and localization. Our algorithm uses a highly efficient Rao-Blackwellized particle filter to represent the posterior about maps and poses. It applies a decision-theoretic framework which simultaneously considers the uncertainty in the map and in the pose of the vehicle to evaluate potential actions. Thereby, it trades off the cost of executing an action with the expected information gain and takes into account possible sensor measurements gathered along the path taken by the robot. We furthermore describe how to utilize the properties of the Rao-Blackwellization to efficiently compute the expected information gain. We present experimental results obtained in the real world and in simulation to demonstrate the effectiveness of our approach.
机译:本文提出了一种探索,制图和定位的综合方法。我们的算法使用高效的Rao-Blackwellized粒子滤波器来表示关于地图和姿势的后验。它采用了决策理论框架,该框架同时考虑了地图和车辆姿态中的不确定性,以评估潜在的动作。因此,它权衡了以预期的信息增益执行动作的成本,并考虑了沿机器人采取的路径收集的可能的传感器测量值。我们进一步描述了如何利用Rao-Blackwellization的属性来有效地计算预期的信息增益。我们介绍了在现实世界和模拟中获得的实验结果,以证明我们的方法的有效性。

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