English

Controlling a Robotic Stereo Camera Under Image Quantization Noise

Robotics 2018-01-16 v2

Abstract

In this paper, we address the problem of controlling a mobile stereo camera under image quantization noise. Assuming that a pair of images of a set of targets is available, the camera moves through a sequence of Next-Best-Views (NBVs), i.e., a sequence of views that minimize the trace of the targets' cumulative state covariance, constructed using a realistic model of the stereo rig that captures image quantization noise and a Kalman Filter (KF) that fuses the observation history with new information. The proposed algorithm decomposes control into two stages: first the NBV is computed in the camera relative coordinates, and then the camera moves to realize this view in the fixed global coordinate frame. This decomposition allows the camera to drive to a new pose that effectively realizes the NBV in camera coordinates while satisfying Field-of-View constraints in global coordinates, a task that is particularly challenging using complex sensing models. We provide simulations and real experiments that illustrate the ability of the proposed mobile camera system to accurately localize sets of targets. We also propose a novel data-driven technique to characterize unmodeled uncertainty, such as calibration errors, at the pixel level and show that this method ensures stability of the KF.

Cite

@article{arxiv.1706.01966,
  title  = {Controlling a Robotic Stereo Camera Under Image Quantization Noise},
  author = {Charles Freundlich and Yan Zhang and Alex Zihao Zhu and Philippos Mordohai and Michael M. Zavlanos},
  journal= {arXiv preprint arXiv:1706.01966},
  year   = {2018}
}

Comments

International Journal of Robotics Research, October 2017

R2 v1 2026-06-22T20:11:09.344Z