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Modelling search with a binary sensor utilizing self-conjugacy of the exponential family

机译:利用二叉传感器利用指数族的自共轭对搜索进行建模

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In this paper, we consider the problem of an autonomous robot searching for a target object whose position is characterized by a prior probability distribution over the workspace (the object prior). We consider the case of a continuous search domain, and a robot equipped with a single binary sensor whose ability to recognize the target object varies probabilistically as a function of the distance from the robot to the target (the sensor model). We show that when the object prior and sensor model are taken from the exponential family of distributions, the searcher's posterior probability map for the object location belongs to a finitely parameterizable class of functions, admitting an exact representation of the searcher's evolving belief. Unfortunately, the cost of the representation grows exponentially with the number of stages in the search. For this reason, we develop an approximation scheme that exploits regularized particle filtering methods. We present simulation studies for several scenarios to demonstrate the effectiveness of our approach using a simple, greedy search strategy.
机译:在本文中,我们考虑了自主机器人搜索目标对象的问题,该目标对象的位置由工作空间中的先验概率分布(对象先验)表征。我们考虑连续搜索域的情况,以及配备单个二进制传感器的机器人,其识别目标对象的能力根据从机器人到目标的距离(传感器​​模型)的概率而变化。我们显示出,当对象先验模型和传感器模型取自指数分布族时,搜索者针对对象位置的后验概率图属于函数的有限可参数化类,从而承认了搜索者不断发展的信念的精确表示。不幸的是,表示的成本随着搜索阶段的数量呈指数增长。因此,我们开发了一种利用正则化粒子滤波方法的近似方案。我们目前针对几种情况进行仿真研究,以证明我们的方法使用简单,贪婪的搜索策略的有效性。

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