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VDFP: Video Deflickering with Flicker-banding Priors | Academic Research

VDFP: Video Deflickering with Flicker-banding Priors

1Shanghai Jiao Tong University
arXiv preprint 2026

*Indicates Equal Contribution

Abstract

Capturing digital screens with smartphones frequently induces severe banding due to hardware synchronization mismatches. Existing video restoration methods struggle with these structured, periodic luminance fluctuations, often resulting in residual artifacts or over-smoothed textures. We firstly construct DeViD, a real-world dataset in various scenes to deal with the lack of available datasets. Then we propose VDFP (Video Deflickering with Flicker-banding Priors), a novel perception-guided generation framework. First, we introduce a Degradation Field Modeling Based on Rolling Shutter Mechanism (DFM) capable of synthesizing complex multi-banding scenarios. Second, we present a spatial-temporal continuous prior perception (CPP). Unlike traditional binary segmentation, this module is optimized via a Flicker-Aware Mean Squared Error (FA-MSE) to capture the luminance transitions. By zero-initializing an augmented input layer, our model preserves pre-trained generative priors as well as spatial-temporal prior perception. Extensive experiments demonstrate that VDFP significantly outperforms other methods, eliminating complex banding with high-fidelity spatial details and temporal consistency.

Methods

Experimental Results

Quantitative Comparisons (Table)

Visual Comparisons (Figures)

BibTeX

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@article{Zhou26VDFP, title={{VDFP}: Video Deflickering with Flicker-banding Priors}, author={Zhiyi, Zhou and Libo, Zhu and Zihan, Zhou and Yulun, Zhang and Xiaokang, Yang}, journal={arXiv preprint arXiv:2605.21079}, year={2026} }

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