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A Generalized Physical-knowledge-guided Dynamic Model for Underwater Image Enhancement

Pan Mu, Hanning Xu, Zheyuan Liu, Zheng Wang, Sixian Chan, Cong Bai

202335 citationsDOI

Abstract

Underwater images often suffer from color distortion and low contrast resulting in various image types, due to the scattering and absorption of light by water. While it is difficult to obtain high-quality paired training samples with a generalized model. To tackle these challenges, we design a Generalized Underwater image enhancement method via a Physical-knowledge-guided Dynamic Model (short for GUPDM). In particular, to cover complex underwater scenes, this study changes the global atmosphere light and the transmission to simulate various underwater image types through the formation model. We then design an Atmosphere-based Dynamic Structure (ADS) and Transmission-guided Dynamic Structure (TDS) that use dynamic convolutions to adaptively extract prior information from underwater images and generate parameters for Prior-based Multi-scale Structure (PMS). These two modules enable the network to select appropriate parameters for various water types adaptively. Besides, the multi-scale feature extraction module in PMS uses convolution blocks with different kernel sizes and obtains weights for each feature map via channel attention block. The source code will be available at https://github.com/shiningZZ/GUPDM

Topics & Concepts

UnderwaterComputer scienceKernel (algebra)Distortion (music)Feature (linguistics)Block (permutation group theory)Convolution (computer science)Transmission (telecommunications)Artificial intelligenceFeature extractionComputer visionChannel (broadcasting)Code (set theory)Pattern recognition (psychology)Artificial neural networkGeologyMathematicsTelecommunicationsLinguisticsGeometryCombinatoricsBandwidth (computing)Programming languageOceanographyAmplifierSet (abstract data type)PhilosophyImage Enhancement TechniquesAdvanced Vision and ImagingComputer Graphics and Visualization Techniques