Simultaneous Enhancement and Super-Resolution of Underwater Imagery for Improved Visual Perception

4 Feb 2020 Md Jahidul Islam Peigen Luo Junaed Sattar

In this paper, we introduce and tackle the simultaneous enhancement and super-resolution (SESR) problem for underwater robot vision and provide an efficient solution for near real-time applications. We present Deep SESR, a residual-in-residual network-based generative model that can learn to restore perceptual image qualities at 2x, 3x, or 4x higher spatial resolution... (read more)

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