Reference:
A. Ilioudi,
B.J. Wolf,
A. Dabiri, and
B. De Schutter,
"Towards establishing an automated selection framework for underwater
image enhancement methods," Proceedings of the OCEANS 2023,
Limerick, Ireland, June 2023.
Abstract:
The majority of computer vision architectures are developed based on
the assumption of the availability of good quality data. However, this
is a particularly hard requirement to achieve in underwater
conditions. To address this limitation, plenty of underwater image
enhancement methods have received considerable attention during the
last decades, but due to the lack of a commonly accepted framework to
systematically evaluate them and to determine the likely optimal one
for a given image, their adoption in practice is hindered, since it is
not clear which one can achieve the best results. In this paper, we
propose a standardized selection framework to evaluate the quality of
an underwater image and to estimate the most suitable image
enhancement technique based on its impact on the image classification
performance.