HLA-HOD: Joint High-Low Adaptation for Object Detection in Hazy Weather Conditions

INTERNATIONAL JOURNAL OF INTELLIGENT SYSTEMS(2023)

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摘要
Object detection remains challenging in hazy weather conditions due to the poor visibility of captured images. There are currently two types of detectors capable of adapting to varying weather conditions: (i) low-level adaptation methods that combine one detector with an additional dehazing network and (ii) high-level adaptation methods that explore various kinds of domain adaptation knowledge. However, neither of these approaches can achieve desirable performance due to their inherent limitations. We raise an intriguing question-if combining both low-level adaptation and high-level adaptation, can improve the generalization ability of a detector in hazy weather conditions? To answer it, we propose a Joint High-Low Adaptation Object Detection paradigm (HLA-HOD) in hazy weather conditions. By combining both low-level adaptation and high-level adaptation, HLA-HOD achieves superior performance on hazy images without requiring ground-truth bounding boxes or clean images. Extensive experiments demonstrate that our method outperforms state-of-the-art low-level and high-level adaptation methods by a large margin both quantitatively and qualitatively.
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关键词
hazy weather conditions,object detection,hla-hod,high-low
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