Online Continuous Stereo Extrinsic Parameter Estimation - Robotics Institute Carnegie Mellon University

Online Continuous Stereo Extrinsic Parameter Estimation

Peter Hansen, Hatem Said Alismail, Peter Rander, and Brett Browning
Conference Paper, Proceedings of (CVPR) Computer Vision and Pattern Recognition, pp. 1059 - 1066, June, 2012

Abstract

Stereo visual odometry and dense scene reconstruction depend critically on accurate calibration of the extrinsic (relative) stereo camera poses. We present an algorithm for continuous, online stereo extrinsic re-calibration operating only on sparse stereo correspondences on a per-frame basis. We obtain the 5 degree of freedom extrinsic pose for each frame, with a fixed baseline, making it possible to model time-dependent variations. The initial extrinsic estimates are found by minimizing epipolar errors, and are refined via a Kalman Filter (KF). Observation covariances are derived from the Cr ́ mer-Rao lower bound of the solution uncertainty. The algorithm operates at frame rate with unoptimized Matlab code with over 1000 correspondences per frame. We validate its performance using a variety of real stereo datasets and simulations.

BibTeX

@conference{Hansen-2012-7502,
author = {Peter Hansen and Hatem Said Alismail and Peter Rander and Brett Browning},
title = {Online Continuous Stereo Extrinsic Parameter Estimation},
booktitle = {Proceedings of (CVPR) Computer Vision and Pattern Recognition},
year = {2012},
month = {June},
pages = {1059 - 1066},
keywords = {recalibration, stereo, stereo extrinsics},
}