Bayesian Networks for Path-Based Sensors: Gathering Information and Path Planning in Communication Denied Environments
Alkesh K. Srivastava, George P. Kontoudis, Donald Sofge, Michael Otte

TL;DR
This paper introduces a Bayesian Network approach for updating belief maps and planning paths using path-based sensor data in communication-denied environments, improving hazard detection efficiency.
Contribution
It presents a novel Bayesian Network formulation for belief updates and path planning with path-based sensors, outperforming previous averaging methods.
Findings
Quicker convergence of belief maps with the new method.
Improved hazard detection in static environments.
Enhanced multi-robot information gathering efficiency.
Abstract
A "path-based sensor" produces a single observation along a continuous path. For example, a boolean path-based sensor returns a single "1" if an event of interest is detected at any point along the path and a "0" otherwise. Notably, a "1" provides no direct information about where along the path the event(s) may have occurred. Previous work has demonstrated that observations from multiple path-based sensors can be fused to create a Bayesian belief map over the spatial locations of the underlying event or phenomenon. Moreover, path planning can employ Shannon information theory to accelerate the rate of convergence of the belief map. In this paper, we present a new method to update the belief map based on a path-based sensor observation, and then plan paths to increase information gain. In contrast to prior work that approximates the posterior by averaging over the alternative event…
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