Collaborative infotaxis:Searching for a signal-emitting source based on particle filter and Gaussian fitting
- 所属单位:
- 其他
- 发表刊物:
- Robotics and Autonomous Systems
- 关键字:
- Cognition difference;Bayesian estimation;Collaborative infotaxis;Particle filter;Gaussian fitting
- 摘要:
- To effectively leverage the spatio-temporal sensing capabilities of the team searching for a signalemitting source, this paper presents a collaborative search method, in which each robot employs the weighted social Bayesian estimation and executes the distributed infotaxis search for the source.Cognition difference between robots, measuring the dissimilarity of probability maps, is specially introduced to obtain the heterogeneous weights of Bayesian estimation. However, the requirement of exchanging the whole probability map presents additional challenges in computation and communication for real-time applications. In this work, a solution for fast low-cost collaborative infotaxis method based on a combination of particle filter and Gaussian fitting is proposed. A particle filter is first employed for the representation of the source probability distribution, which makes the infotaxis strategy computationally tractable for large complex spaces using the limited and tractable amount of randomly drawn particles. By fitting a Gaussian density to the particles, each robot obtains the likelihood weight for social Bayesian estimation by only reporting the mean and the covariance matrix of Gaussian distribution rather than exchanging the whole probability maps. The simulation shows the proposed collaborative infotaxis can achieve an efficient search behavior in complex environments using a small number of particles and a lower communication bandwidth.
- 合写作者:
- 贺煜曜,Branko Ristic
- 第一作者:
- 雷小康
- 论文类型:
- 期刊论文
- 是否译文:
- 否
- 发表时间:
- 2023-01-03
- 上一条:建筑机器人研究现状与展望
- 下一条:基于认知差异的多机器人协同信息趋向烟羽源搜索方法


