Achieving Turbidity Robustness on Underwater Images Local Feature Detection
Felipe Codevilla, Joel De O. Gaya, Nelson Duarte Filho and Silvia S. C. Costa Botelho
Abstract
Methods to detect local features have been made to be invariant to many transformations. So far, the vast majority of feature detectors consider robustness just to over-land effects. However, when capturing pictures in underwater environments, there are media specific properties that can degrade the visual quality the captured images. Little work has been made in order to study the robustness that the popular feature detectors have to underwater environment image conditions. We develop a new dataset, called TURBID, where we produced real seabed images with different amounts of degradation. On this dataset, we search over multiple feature detectors from the literature to indicate the ones with more robust properties. We concluded that scale-invariant detectors are more robust to degradation of underwater images. Finally, we elected Center Surround Extremas, KAZE, Difference of Gaussians and the Hessian-Laplace as the best detectors for this environment on all tested scenes.
Session
Poster 2
Files
Extended Abstract (PDF, 1423K)
Paper (PDF, 6M)
DOI
10.5244/C.29.154
https://dx.doi.org/10.5244/C.29.154
Citation
Felipe Codevilla, Joel De O. Gaya, Nelson Duarte Filho and Silvia S. C. Costa Botelho. Achieving Turbidity Robustness on Underwater Images Local Feature Detection. In Xianghua Xie, Mark W. Jones, and Gary K. L. Tam, editors, Proceedings of the British Machine Vision Conference (BMVC), pages 154.1-154.13. BMVA Press, September 2015.
Bibtex
@inproceedings{BMVC2015_154,
title={Achieving Turbidity Robustness on Underwater Images Local Feature Detection},
author={Felipe Codevilla and Joel De O. Gaya and Nelson Duarte Filho and Silvia S. C. Costa Botelho},
year={2015},
month={September},
pages={154.1-154.13},
articleno={154},
numpages={13},
booktitle={Proceedings of the British Machine Vision Conference (BMVC)},
publisher={BMVA Press},
editor={Xianghua Xie, Mark W. Jones, and Gary K. L. Tam},
doi={10.5244/C.29.154},
isbn={1-901725-53-7},
url={https://dx.doi.org/10.5244/C.29.154}
}