In this paper we present an information-theoretic approach to distributively control multiple robots equipped with sensors to infer the state of an environment. The robots iteratively estimate the environment state using a sequential Bayesian filter, while continuously moving along the gradient of mutual information to maximize the informativeness of the observations provided by their sensors. The gradient-based controller is proven to be convergent between observations and, in its most general form, locally optimal. However, the computational complexity of the general form is shown to be intractable, and thus non-parametric methods are incorporated to allow the controller to scale with respect to the number of robots. For decentralized ope...
We present a robust distributed algorithm for approximate probabilistic inference in dynamical syste...
Many recent works have proposed algorithms for information gathering that benefit from multi-robot c...
Distributed algorithms have pervaded many aspects of control engineering with applications for multi...
This paper presents a scalable information theoretic approach to infer the state of an environment ...
This paper presents a scalable information theoretic approach to infer the state of an environment b...
This paper presents non-parametric methods to infer the state of an environment by distributively co...
Mobile robots that communicate and cooperate to achieve a common task have been the subject of an in...
Mobile robots that communicate and cooperate to achieve a common task have been the subject of an in...
Multi-robot teams that intelligently gather information have the potential to transform industries a...
Multi-robot teams that intelligently gather information have the potential to transform industries a...
The increasing prevalence of distributed and autonomous systems is transforming decision making in i...
This paper presents a scalable Bayesian technique for decentralized state estimation from multiple...
Abstract — A decentralized, adaptive control law is presented to drive a network of mobile robots to...
Abstract — This paper proposes an algorithm for driving a group of resource-constrained robots with ...
We present a robust distributed algorithm for approximate probabilistic inference in dynamical syste...
We present a robust distributed algorithm for approximate probabilistic inference in dynamical syste...
Many recent works have proposed algorithms for information gathering that benefit from multi-robot c...
Distributed algorithms have pervaded many aspects of control engineering with applications for multi...
This paper presents a scalable information theoretic approach to infer the state of an environment ...
This paper presents a scalable information theoretic approach to infer the state of an environment b...
This paper presents non-parametric methods to infer the state of an environment by distributively co...
Mobile robots that communicate and cooperate to achieve a common task have been the subject of an in...
Mobile robots that communicate and cooperate to achieve a common task have been the subject of an in...
Multi-robot teams that intelligently gather information have the potential to transform industries a...
Multi-robot teams that intelligently gather information have the potential to transform industries a...
The increasing prevalence of distributed and autonomous systems is transforming decision making in i...
This paper presents a scalable Bayesian technique for decentralized state estimation from multiple...
Abstract — A decentralized, adaptive control law is presented to drive a network of mobile robots to...
Abstract — This paper proposes an algorithm for driving a group of resource-constrained robots with ...
We present a robust distributed algorithm for approximate probabilistic inference in dynamical syste...
We present a robust distributed algorithm for approximate probabilistic inference in dynamical syste...
Many recent works have proposed algorithms for information gathering that benefit from multi-robot c...
Distributed algorithms have pervaded many aspects of control engineering with applications for multi...