Litcius/Paper detail

UGIF-Net: An Efficient Fully Guided Information Flow Network for Underwater Image Enhancement

Jingchun Zhou, Boshen Li, Dehuan Zhang, Jieyu Yuan, Weishi Zhang, Zhanchuan Cai, Jinyu Shi

2023IEEE Transactions on Geoscience and Remote Sensing144 citationsDOI

Abstract

Light traveling through water results in strong scattering across color channels, restricting visibility in underwater images. Many cutting-edge underwater image enhancement methods encounter limitations in color recovery accuracy and resilience against irrelevant feature interference. To tackle these degradation challenges, we propose an efficient and fully guided information flow network called UGIF-Net, for enhancing underwater images. Specifically, we propose a multi-color space-guided color estimation module that accurately approximates color information by incorporating features from two color spaces within a unified network. Subsequently, we employ a dense attention block to guide the network in thoroughly extracting color information from both color spaces while adaptively perceiving crucial color information. Moreover, we devise a color-guided map to steer the network’s focus toward color information and augment its response to color quality degradation. We incorporate the guided map into a guide color restoration module to achieve visually appealing enhancement results. Comprehensive experiments indicate that our approach surpasses state-of-the-art methods, showcasing favorable image restoration effects and their potential to aid other high-level vision tasks.

Topics & Concepts

UnderwaterComputer scienceImage (mathematics)Net (polyhedron)Information flowComputer visionFlow (mathematics)Artificial intelligenceRemote sensingGeologyMathematicsLinguisticsOceanographyGeometryPhilosophyImage Enhancement TechniquesImage and Signal Denoising MethodsAdvanced Image Processing Techniques