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Leveraging Probabilistic Reasoning in Deterministic Planning for Large-Scale Autonomous Search-and-Tracking

机译:利用大规模自主搜查和跟踪的确定性规划中的概率推理

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Search-And-Tracking (SaT) is the problem of searching for a mobile target and tracking it once it is found. Since SaT platforms face many sources of uncertainty and operational constraints, progress in the field has been restricted to simple and unrealistic scenarios. In this paper, we propose a new hybrid approach to SaT that allows us to successfully address large-scale and complex SaT missions. The probabilistic structure of SaT is compiled into a deterministic planning model and Bayesian inference is directly incorporated in the planning mechanism. Thanks to this tight integration between automated planning and probabilistic reasoning, we are able to exploit the power of both approaches. Planning provides the tools to efficiently explore big search spaces, while Bayesian inference, by readily combining prior knowledge with observable data, allows the planner to make more informed and effective decisions. We offer experimental evidence of the potential of our approach.
机译:搜索和跟踪(SAT)是搜索移动目标并在找到后跟踪它的问题。由于SAT平台面临许多不确定性和操作约束的来源,因此该领域的进展仅限于简单而不切实际的情况。在本文中,我们提出了一种新的混合方法来坐下来允许我们成功地解决大规模和复杂的SAT任务。 SAT的概率结构被编译成确定性规划模型,并且在规划机制中直接纳入贝叶斯推断。由于自动化规划与概率推理之间的这种紧张整合,我们能够利用两种方法的力量。规划提供了有效地探索大搜索空间的工具,而贝叶斯推断,通过随时将先验知识与可观察数据结合起来,允许规划师做出更明智和有效的决策。我们提供了我们方法潜力的实验证据。

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