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Driving-Video Dehazing with Non-Aligned Regularization for Safety Assistance

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Real driving-video dehazing poses a significant challenge due to the inherent difficulty in acquiring precisely aligned hazy/clear video pairs for effective model training, especially in dynamic driving scenarios with unpredictable weather conditions. In this paper, we propose a pioneering approach that addresses this challenge through a nonaligned regularization strategy. Our core concept involves identifying clear frames that closely match hazy frames, serving as references to supervise a video dehazing network. Our approach comprises two key components: reference matching and video dehazing. Firstly, we introduce a non-aligned reference frame matching module, leveraging an adaptive sliding window to match high-quality reference frames from clear videos. Video dehazing incorporates flow-guided cosine attention sampler and deformable cosine attention fusion modules to enhance spatial multiframe alignment and fuse their improved information. To validate our approach, we collect a GoProHazy dataset captured effortlessly with GoPro cameras in diverse rural and urban road environments. Extensive experiments demonstrate the superiority of the proposed method over current state-of-the-art methods in the challenging task of real driving-video dehazing. Project page.

Junkai Fan, Jiangwei Weng, Kun Wang, Yijun Yang, Jianjun Qian, Jun Li, Jian Yang• 2024

Related benchmarks

TaskDatasetResultRank
Video DehazingUHV-4K
PSNR21.02
18
Video DehazingHazeWorld
PSNR27.05
18
Video DehazingUHV-4K (test)
tOF0.0046
13
DehazingDrivingHazy NoRef (test)
FADE82.07
10
DehazingInternetHazy (test)
FADE0.8745
10
Video DehazingREVIDE
PSNR24.34
10
DehazingGoProHazy (test)
FADE0.7598
10
Object DetectionUHV-4K
Detection Rate14.7
6
Semantic segmentationUHV-4K
Boundary Error (BdryE)0.0079
6
Image Quality AssessmentUHV-4K
NIQE10.43
6
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