Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4948906 | Robotics and Autonomous Systems | 2016 | 12 Pages |
Abstract
We introduce a novel approach to controlling the motion of a team of agents so that they jointly minimize a cost function utilizing Bayes risk. Bayes risk is a useful measure of performance for applications where agents must perform a classification task, but is often difficult to compute analytically for many applications involving agent state variables. We use a particle-based approach that allows us to approximate Bayes risk and express the optimization problem as a mixed-integer linear program. By minimizing Bayes risk, agents are able to account explicitly for the costs associated with correct and incorrect classification. We illustrate our approach with a target interception problem in which a team of mobile agents must intercept mobile targets that are likely to enter a specified area in the near future. We show that the cooperative agent motion that minimizes a cost function utilizing Bayes risk is an efficient way to achieve selective interception.
Related Topics
Physical Sciences and Engineering
Computer Science
Artificial Intelligence
Authors
Matthew J. Bays, Apoorva Shende, Daniel J. Stilwell,