Multiscale underwater descattering

Ancuti, Cosmin;Ancuti, Codruta;De Vleeschouwer, Christophe;Garcia, Rafael;Bovik, Alan
(2016) IAPR International Conference on Pattern Recognition — Location: Cancun, Mexico (4.December.2016)

Files

Underwater_Descattering-submitted.pdf
  • Open Access
  • Adobe PDF
  • 5.1 MB

Details

Authors
Abstract
Underwater images suffer from severe perceptual/visual degradation, due to the dense and non-uniform medium, causing scattering and attenuation of the propagated light that is sensed. Typical restoration methods rely on the popular dark channel prior to estimate the light attenuation factor, and subtract the back-scattered light influence to invert the underwater imaging model. However, as a consequence of using approximate and global estimates of the back-scattering light, most existing single-image underwater descattering techniques perform poorly when restoring non-uniformly illuminated scenes. To mitigate this problem, we introduce a novel approach that estimates the back-scattered light locally, based on the observation of a neighborhood around the pixel of interest. To circumvent issue related to selection of the neighborhood size, we propose to fusion the images obtained over both small and large neighborhoods, each capturing distinct features from the input image. In addition, the Laplacian of the original image is provided as a third input to the fusion process, to enhance texture details in the reconstructed image. These three derived inputs. are seamlessly blended via a multi-scale fusion approach, using saliency, contrast, and saturation metrics to weight each input. We perform an extensive qualitative and quantitative evaluation against several specialized techniques. In addition to its simplicity, our method outperforms the previous art on extreme underwater cases of artificial ambient illumination and high water turbidity.
Affiliations

Citations

Ancuti, C., Ancuti, C., De Vleeschouwer, C., Garcia, R., & Bovik, A. (2016). Multiscale underwater descattering. Proceedings of the International Conference on Pattern Recognition. Published. IAPR International Conference on Pattern Recognition, Cancun, Mexico. https://hdl.handle.net/2078.5/220537