Abstract:
Camera-based localization techniques must be robust to correspondence errors, i.e., when visual features (landmarks)are matched incorrectly. The two primary techniques to...Show MoreMetadata
Abstract:
Camera-based localization techniques must be robust to correspondence errors, i.e., when visual features (landmarks)are matched incorrectly. The two primary techniques to address this issue are RANSAC and robust M-estimation -- each more appropriate for different applications. This paper investigates the use of different robust cost functions for M-estimation to deal with correspondence outliers, and assesses their performance under varying degrees of data corruption. Experimental results show that using an aggressive red ascending cost function (e.g., Dynamic Covariance Scaling (DCS) or Geman-McClure (G-M)) best improves accuracy by excluding outliers almost entirely. Additionally, adjusting an error-scaling parameter for the robust cost function over the course of the optimization improves convergence with poor initial conditions.
Published in: 2015 12th Conference on Computer and Robot Vision
Date of Conference: 03-05 June 2015
Date Added to IEEE Xplore: 16 July 2015
Electronic ISBN:978-1-4799-1986-4