Nonmyopic Distilled Data Association Belief Space Planning Under Budget Constraints

Moshe Shienman, V. Indelman
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引用次数: 5

Abstract

Autonomous agents operating in perceptually aliased environments should ideally be able to solve the data association problem. Yet, planning for future actions while considering this problem is not trivial. State of the art approaches therefore use multi-modal hypotheses to represent the states of the agent and of the environment. However, explicitly considering all possible data associations, the number of hypotheses grows exponentially with the planning horizon. As such, the corresponding Belief Space Planning problem quickly becomes unsolvable. Moreover, under hard computational budget constraints, some non-negligible hypotheses must eventually be pruned in both planning and inference. Nevertheless, the two processes are generally treated separately and the effect of budget constraints in one process over the other was barely studied. We present a computationally efficient method to solve the nonmyopic Belief Space Planning problem while reasoning about data association. Moreover, we rigorously analyze the effects of budget constraints in both inference and planning.
预算约束下的非近视眼数据关联信念空间规划
理想情况下,在感知别名环境中操作的自主代理应该能够解决数据关联问题。然而,在考虑这个问题的同时计划未来的行动并不是微不足道的。因此,最先进的方法使用多模态假设来表示代理和环境的状态。然而,明确考虑所有可能的数据关联,假设的数量随着规划范围呈指数增长。因此,相应的信念空间规划问题很快变得无法解决。此外,在硬计算预算约束下,一些不可忽略的假设最终必须在规划和推理中被修剪。然而,这两个过程通常是分开处理的,预算限制在一个过程中对另一个过程的影响几乎没有研究。在数据关联推理中,提出了一种计算效率高的方法来解决非近视眼信念空间规划问题。此外,我们严格地分析了预算约束在推理和规划中的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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