Planning to Perceive: Exploiting Mobility for Robust Object Detection

Authors

  • Javier Velez Massachusetts Institute of Technology
  • Garrett Hemann Massachusetts Institute of Technology
  • Albert Huang Massachusetts Institute of Technology
  • Ingmar Posner Department of Engineering Science, University of Oxford
  • Nicholas Roy Massachusetts Institute of Technology

DOI:

https://doi.org/10.1609/icaps.v21i1.13471

Abstract

Consider the task of a mobile robot autonomously navigating through an environment while detecting and mapping objects of interest using a noisy object detector. The robot must reach its destination in a timely manner, but is rewarded for correctly detecting recognizable objects to be added to the map, and penalized for false alarms. However, detector performance typically varies with vantage point, so the robot benefits from planning trajectories which maximize the efficacy of the recognition system. This work describes an online, any-time planning framework enabling the active exploration of possible detections provided by an off-the-shelf object detector. We present a probabilistic approach where vantage points are identified which provide a more informative view of a potential object. The agent then weighs the benefit of increasing its confidence against the cost of taking a detour to reach each identified vantage point. The system is demonstrated to significantly improve detection and trajectory length in both simulated and real robot experiments.

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Published

2011-03-22

How to Cite

Velez, J., Hemann, G., Huang, A., Posner, I., & Roy, N. (2011). Planning to Perceive: Exploiting Mobility for Robust Object Detection. Proceedings of the International Conference on Automated Planning and Scheduling, 21(1), 266-273. https://doi.org/10.1609/icaps.v21i1.13471