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EvMetro5K

  • RGB-Event HyperGraph Prompt for Kilometer Marker Recognition based on Pre-trained Foundation Models, Xiaoyu Xian, Shiao Wang, Xiao Wang, Daxin Tian, Yan Tian, arXiv:2602.22026 [Paper] [IEEE]

Metro trains often operate in highly complex environments, characterized by illumination variations, high-speed motion, and adverse weather conditions. These factors pose significant challenges for visual perception systems, especially those relying solely on conventional RGB cameras. To tackle these difficulties, we explore the integration of event cameras into the perception system, leveraging their advantages in low-light conditions, high-speed scenarios, and low power consumption. Specifically, we focus on Kilometer Marker Recognition (KMR), a critical task for autonomous metro localization under GNSS-denied conditions. In this context, we propose a robust baseline method based on a pre-trained RGB OCR foundation model, enhanced through multi-modal adaptation. Furthermore, we construct the first large-scale RGB-Event dataset, EvMetro5K, containing 5,599 pairs of synchronized RGB-Event samples, split into 4,479 training and 1,120 testing samples. Extensive experiments on EvMetro5K and other widely used benchmarks demonstrate the effectiveness of our approach for KMR. Both the dataset and source code will be released on this https URL

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  • This work is accepted by IEEE Transactions on Cognitive and Developmental Systems (IEEE TCDS) 2026

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Dataset

💾 Baidu Netdisk: https://pan.baidu.com/s/12_t08av0h1YtlGIzZLm_KA?pwd=AHUE

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If you find this work useful for your research, please cite the following works and give us a star.

@misc{xian2026EvMetro5K, 
      title={RGB-Event HyperGraph Prompt for Kilometer Marker Recognition based on Pre-trained Foundation Models}, 
      author={Xiaoyu Xian and Shiao Wang and Xiao Wang and Daxin Tian and Yan Tian},
      year={2026},
      eprint={2602.22026},
      archivePrefix={arXiv},
      primaryClass={cs.CV},
      url={https://arxiv.org/abs/2602.22026}, 
}

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