Safe contact-based robot active search using Bayesian optimization and control barrier functions

Front Robot AI. 2024 Apr 29:11:1344367. doi: 10.3389/frobt.2024.1344367. eCollection 2024.

Abstract

In robotics, active exploration and learning in uncertain environments must take into account safety, as the robot may otherwise damage itself or its surroundings. This paper presents a method for safe active search using Bayesian optimization and control barrier functions. As robot paths undertaken during sampling are continuous, we consider an informative continuous expected improvement acquisition function. To safely bound the contact forces between the robot and its surroundings, we leverage exponential control barrier functions, utilizing the derivative of the force in the contact model to increase robustness to uncertainty in the contact boundary. Our approach is demonstrated on a fully autonomous robot for ultrasound scanning of rheumatoid arthritis (RA). Here, active search is a critical component of ensuring high image quality. Furthermore, bounded contact forces between the ultrasound probe and the patient ensure patient safety and better scan quality. To the best of our knowledge, our results are both the first demonstration of safe active search on a fully autonomous robot for ultrasound scanning of rheumatoid arthritis and the first experimental evaluation of bounding contact forces in the context of medical robotics using control barrier functions. The results show that when search time is limited to less than 60 s, informative continuous expected improvement leads to a 92% success, a 13% improvement compared to expected improvement. Meanwhile, exponential control barrier functions can limit the force applied by the robot to under 5 N, even in cases where the contact boundary is specified incorrectly by -1 or +4 mm.

Keywords: Bayesian optimization; active search; autonomous ultrasound scanning; control barrier function; robot force control.

Grants and funding

The author(s) declare that financial support was received for the research, authorship, and/or publication of this article. The work undertaken in this paper was supported by the Odense Robotics Control and Learning of Contact Transitions (CoLeCT) project, funded by the Danish Ministry of Higher Education and Science, and by the SDU I4.0Lab at the University of Southern Denmark.