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Visual-Quality-driven Learning for Underwater Vision Enhancement

Citation Author(s):
Walysson V Barbosa, Henrique G B Amaral, Thiago L Rocha, Erickson R Nascimento
Submitted by:
Walysson Vital ...
Last updated:
8 October 2018 - 2:42am
Document Type:
Poster
Document Year:
2018
Event:
Presenters:
Walysson Vital Barbosa
Paper Code:
ICIP2686
 

The image processing community has witnessed remarkable advances in enhancing and restoring images. Nevertheless, restoring the visual quality of underwater images remains a great challenge. End-to-end frameworks might fail to enhance the visual quality of underwater images since in several scenarios it is not feasible to provide the ground truth of the scene radiance. In this work, we propose a CNN-based approach that does not require ground truth data since it uses a set of image quality metrics to guide the restoration learning process. The experiments showed that our method improved the visual quality of underwater images preserving their edges and also performed well considering the UCIQE metric.

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