COSΦ: Vision-based artificial pheromone system for robotic swarms

Krajnik, Tomas, Arvin, Farshad, Turgut, Ali Emre , Yue, Shigang and Duckett, Tom (2015) COSΦ: Vision-based artificial pheromone system for robotic swarms. In: IEEE International Conference on Robotics and Automation (ICRA 2015), 26 - 30 May 2015, Seattle, USA.

Documents
main.pdf
[img]
[Download]
icra_2015_lbp_colias.pdf
[img]
[Download]
[img]
Preview
PDF
main.pdf - Whole Document

660kB
[img]
Preview
PDF
icra_2015_lbp_colias.pdf - Whole Document

1MB
Item Type:Conference or Workshop contribution (Poster)
Item Status:Live Archive

Abstract

We propose a novel spatio-temporal mobile-robot exploration method for dynamic, human-populated environments. In contrast to other exploration methods that model the environment as being static, our spatio-temporal exploration method creates and maintains a world model that not only represents the environment's structure, but also its dynamics over time. Consideration of the world dynamics adds an extra, temporal dimension to the explored space and makes the exploration task a never-ending data-gathering process to keep the robot's environment model up-to-date.
Thus, the crucial question is not only where, but also when to observe the explored environment.
We address the problem by application of information-theoretic exploration to world representations that model the environment states' uncertainties as probabilistic functions of time. The predictive ability of the spatio-temporal model allows the exploration method to decide not only where, but also when to make environment observations.

To verify the proposed approach, an evaluation of several exploration strategies and spatio-temporal models was carried out using real-world data gathered over several months. The evaluation indicates that through understanding of the environment dynamics, the proposed spatio-temporal exploration method could predict which locations were going to change at a specific time and use this knowledge to guide the robot. Such an ability is crucial for long-term deployment of mobile robots in human-populated spaces that change over time.

Keywords:swarm robotics, visual localization, artificial pheromone
Subjects:H Engineering > H670 Robotics and Cybernetics
Divisions:College of Science > School of Computer Science
Related URLs:
ID Code:17952
Deposited On:22 Jul 2015 14:39

Repository Staff Only: item control page