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SNR-Prior Guided Trajectory-Aware Transformer for Low-Light Video Enhancement

Jing Ye, Changzhen Qiu, Zhiyong Zhang

2023IEEE Transactions on Circuits and Systems for Video Technology12 citationsDOI

Abstract

Recently, deep learning has been widely employed to improve the quality of low-light videos. However, most existing low-light video enhancement methods fail to effectively explore temporal dependence, and the enhanced videos may suffer from severe noise, loss of detailed texture, and temporal inconsistency. In this paper, we propose a novel SNR-prior Guided Trajectory-aware Transformer (SGTT) to enable effective video representation learning for low-light video enhancement. Specifically, signal-to-noise ratio prior and cosine similarity are introduced to build the trajectory-aware dual-attention for exploiting the dependence of long-range spatio-temporal information, which searches for sharper and highly correlated patches within the same trajectory to assist in enhancing the target frames. Moreover, to adaptively fuse spatio-temporal information of support frames propagated bidirectionally, an attention-guided spatio-temporal feature aggregation module is proposed to perceive and enhance the specific high-quality features. The evaluation of both dynamic and static videos shows the effectiveness of our network, which significantly outperforms the state-of-the-art methods.

Topics & Concepts

Computer scienceArtificial intelligenceTrajectoryComputer visionCosine similarityFuse (electrical)High dynamic rangeDeep learningTransformerPattern recognition (psychology)Dynamic rangeQuantum mechanicsElectrical engineeringAstronomyEngineeringVoltagePhysicsImage Enhancement TechniquesAdvanced Vision and ImagingVideo Surveillance and Tracking Methods
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