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Robust structure and motion recovery for monocular vision systems with noisy measurements
Authors:J Keshavan  JS Humbert
Affiliation:Department of Aerospace Engineering, Autonomous Vehicles Laboratory, University of Maryland, College Park, MD, USA,
Abstract:This study proposes a novel complete-order nonlinear structure and motion observer for monocular vision systems subjected to significant measurement noise. In contrast with previous studies that assume noise-free measurements, and require prior knowledge of either the relative motion of the camera or scene geometry, the proposed scheme assumes a single component of linear velocity as known. Under a persistency of excitation condition, the observer then relies on filtered estimates of optical flow to yield exponentially convergent estimates of the unknown motion parameters and feature depth that converge to a uniform, ultimate bound in the presence of measurement noise. The unknown linear and angular velocities are assumed to be generated using an imperfectly known model that incorporates a bounded uncertainty, and optical flow estimation is accomplished using a robust differentiator that is based on the sliding-mode technique. Numerical results are used to validate and demonstrate superior observer performance compared to an alternative leading design in the presence of model uncertainty and measurement noise.
Keywords:Range identification  motion estimation  complete-order observer  monocular vision systems  optical flow
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