This paper addresses the considerations that comes along with adopting decentralized communication for multi-agent localization applications in discrete state spaces. In this framework, we extend the original formulation of the Bayes filter, a foundational probabilistic tool for discrete state estimation, by appending a step of greedy belief sharing as a method to propagate information and improve local estimates' posteriors. We apply our work in a model-based multi-agent grid-world setting, where each agent maintains a belief distribution for every agents' state. Our results affirm the utility of our proposed extensions for decentralized collaborative tasks. The code base for this work is available in the following repo
翻译:本文讨论了在离散州空间采用分散的多试剂本地化应用的多试剂化应用信息传播的考虑。在此框架内,我们扩展了Bayes过滤器的最初设计,这是分散州估算的基本概率工具,我们附加了贪婪的信仰共享步骤,作为传播信息和改善当地估算子孙的方法。我们的工作是在基于模型的多试剂网络-世界环境中进行,每个代理商都对每个代理商的国家进行信仰分布。我们的结果确认,我们提议的分散合作任务扩展的效用。