Towards Robust Alignment for Video Dehazing with Temporal Lookup Table.

IF 13.7
Haoyou Deng, Zhiqiang Li, Feng Zhang, Bin Xu, Qingbo Lu, Changxin Gao, Nong Sang
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Abstract

Video dehazing aims to restore clean scenarios from a sequence of hazy frames, where frame alignment is a critical stage for leveraging temporal information. However, haze degrades contrast and obscures details, making alignment challenging. Existing methods ignore the impairment of haze on alignment and thus struggle to align frames accurately. To address this challenge, we propose an alignment network with the temporal lookup table (temporal-LUT), which effectively enhances the haze-degraded frames and provides vivid cues for precise alignment. Specifically, to tackle the color degradation of haze, we employ a learnable lookup table (LUT) to enhance hazy color. The color mapping nature of LUT favorably preserves the naturalness of enhanced outcomes. Besides, we introduce a temporal weight prediction strategy to strengthen inter-frame interaction, which ensures temporal consistency across enhanced results and thereby benefits alignment. Extensive experimental results on two widely used benchmarks and real-world scenes demonstrate the superiority of our method.

基于时间查找表的视频去雾鲁棒对齐。
视频去雾旨在从一系列模糊帧中恢复干净的场景,其中帧对齐是利用时间信息的关键阶段。然而,雾霾降低了对比度和模糊的细节,使对齐具有挑战性。现有的方法忽略了雾对对齐的损害,因此难以准确对齐帧。为了解决这一挑战,我们提出了一种具有时间查找表(temporal- lut)的对齐网络,该网络有效地增强了雾退化帧,并为精确对齐提供了生动的线索。具体来说,为了解决雾霾的颜色退化问题,我们采用了可学习查找表(LUT)来增强雾霾的颜色。LUT的颜色映射特性有利于保留增强结果的自然性。此外,我们引入了时间权重预测策略来加强帧间的交互,从而确保增强结果的时间一致性,从而有利于对齐。在两个广泛使用的基准测试和真实场景上的大量实验结果证明了我们的方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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