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Main Authors: Liu, Enqi, Pan, Liyuan, Gao, Zhi, Li, Lingzhi, Li, Qing
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.20645
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author Liu, Enqi
Pan, Liyuan
Gao, Zhi
Li, Lingzhi
Li, Qing
author_facet Liu, Enqi
Pan, Liyuan
Gao, Zhi
Li, Lingzhi
Li, Qing
contents Foggy conditions are commonly encountered in real-world applications; however, existing action recognition approaches typically assume favorable weather and high-quality video inputs. On foggy days, unpredictable visibility degradation and reduced contrast obstruct the extraction of semantic cues, posing significant challenges for current action recognition methods. In this paper, we mitigate the issues faced in action recognition under foggy conditions by employing two strategies. First, we present FogAct, the first benchmark dataset for foggy action recognition, consisting of paired clean and foggy videos captured with a stereo camera system. The dataset spans 10 scenes and 55 action categories, comprising nearly 10,000 video clips. Second, we propose FogNet, a two-stream CLIP model that discovers fog-invariant semantic information hidden behind the degraded videos. FogNet learns robust representations of foggy videos with guidance from clean videos, effectively capturing shared structural and motion cues between clean and foggy videos. Extensive experiments on FogAct and three other popular datasets demonstrate that our method achieves competitive performance compared with state-of-the-art (SOTA) approaches. Our FogAct and FogNet are given in our project page.
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publishDate 2026
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spellingShingle Seeing Through Fog: Towards Fog-Invariant Action Recognition
Liu, Enqi
Pan, Liyuan
Gao, Zhi
Li, Lingzhi
Li, Qing
Computer Vision and Pattern Recognition
Foggy conditions are commonly encountered in real-world applications; however, existing action recognition approaches typically assume favorable weather and high-quality video inputs. On foggy days, unpredictable visibility degradation and reduced contrast obstruct the extraction of semantic cues, posing significant challenges for current action recognition methods. In this paper, we mitigate the issues faced in action recognition under foggy conditions by employing two strategies. First, we present FogAct, the first benchmark dataset for foggy action recognition, consisting of paired clean and foggy videos captured with a stereo camera system. The dataset spans 10 scenes and 55 action categories, comprising nearly 10,000 video clips. Second, we propose FogNet, a two-stream CLIP model that discovers fog-invariant semantic information hidden behind the degraded videos. FogNet learns robust representations of foggy videos with guidance from clean videos, effectively capturing shared structural and motion cues between clean and foggy videos. Extensive experiments on FogAct and three other popular datasets demonstrate that our method achieves competitive performance compared with state-of-the-art (SOTA) approaches. Our FogAct and FogNet are given in our project page.
title Seeing Through Fog: Towards Fog-Invariant Action Recognition
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.20645