Fusion-based variational image dehazing

Authors: Galdran, A., Vazquez-Corral, J., Pardo, D. and Bertalmio, M.

Journal: IEEE Signal Processing Letters

Volume: 24

Issue: 2

Pages: 151-155

ISSN: 1070-9908

DOI: 10.1109/LSP.2016.2643168

Abstract:

We propose a novel image-dehazing technique based on the minimization of two energy functionals and a fusion scheme to combine the output of both optimizations. The proposed fusion-based variational image-dehazing (FVID) method is a spatially varying image enhancement process that first minimizes a previously proposed variational formulation that maximizes contrast and saturation on the hazy input. The iterates produced by this minimization are kept, and a second energy that shrinks faster intensity values of well-contrasted regions is minimized, allowing to generate a set of difference-of-saturation (DiffSat) maps by observing the shrinking rate. The iterates produced in the first minimization are then fused with these DiffSat maps to produce a haze-free version of the degraded input. The FVID method does not rely on a physical model from which to estimate a depth map, nor it needs a training stage on a database of human-labeled examples. Experimental results on a wide set of hazy images demonstrate that FVID better preserves the image structure on nearby regions that are less affected by fog, and it is successfully compared with other current methods in the task of removing haze degradation from faraway regions.

Source: Scopus

Fusion-Based Variational Image Dehazing

Authors: Galdran, A., Vazquez-Corral, J., Pardo, D. and Bertalmio, M.

Journal: IEEE SIGNAL PROCESSING LETTERS

Volume: 24

Issue: 2

Pages: 151-155

eISSN: 1558-2361

ISSN: 1070-9908

DOI: 10.1109/LSP.2016.2643168

Source: Web of Science (Lite)

Fusion-Based Variational Image Dehazing.

Authors: Galdran, A., Vazquez-Corral, J., Pardo, D. and Bertalmío, M.

Journal: IEEE Signal Process. Lett.

Volume: 24

Pages: 151-155

DOI: 10.1109/LSP.2016.2643168

Source: DBLP