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- Title
Reliable pose estimation of underwater dock using single camera: a scene invariant approach.
- Authors
Ghosh, Shatadal; Ray, Ranjit; Vadali, Siva; Shome, Sankar; Nandy, Sambhunath
- Abstract
It is well known that docking of Autonomous Underwater Vehicle (AUV) provides scope to perform long duration deep-sea exploration. A large amount of literature is available on vision-based docking which exploit mechanical design, colored markers to estimate the pose of a docking station. In this work, we propose a method to estimate the relative pose of a circular-shaped docking station (arranged with LED lights on periphery) up to five degrees of freedom (5-DOF, neglecting roll effect). Generally, extraction of light markers from underwater images is based on fixed/adaptive choice of threshold, followed by mass moment-based computation of individual markers as well as center of the dock. Novelty of our work is the proposed highly effective scene invariant histogram-based adaptive thresholding scheme (HATS) which reliably extracts positions of light sources seen in active marker images. As the perspective projection of a circle features a family of ellipses, we then fit an appropriate ellipse for the markers and subsequently use the ellipse parameters to estimate the pose of a circular docking station with the help of a well-known method in Safaee-Rad et al. (IEEE Trans Robot Autom 8(5):624-640, ). We analyze the effectiveness of HATS as well as proposed approach through simulations and experimentation. We also compare performance of targeted curvature-based pose estimation with a non-iterative efficient perspective-n-point (EPnP) method. The paper ends with a few interesting remarks on vantages with ellipse fitting for markers and utility of proposed method in case of non-detection of all the light markers.
- Subjects
POSE estimation (Computer vision); AUTONOMOUS underwater vehicles; MOTORBOAT docking; UNDERWATER imaging systems; THRESHOLDING algorithms
- Publication
Machine Vision & Applications, 2016, Vol 27, Issue 2, p221
- ISSN
0932-8092
- Publication type
Article
- DOI
10.1007/s00138-015-0736-4