Self-supervised few-shot learning for real-time traffic sign classification

Anh-Khoa Tho Nguyen, Tin Tran, Phuc Hong Nguyen, V. Q. Dinh
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引用次数: 0

Abstract

Although supervised approaches for traffic sign classification have demonstrated excellent performance, they are limited to classifying several traffic signs defined in the training dataset. This prevents them from being applied to different domains, i.e., different countries. Herein, we propose a self-supervised approach for few-shot learning-based traffic sign classification. A center-awareness similarity network is designed for the traffic sign problem and trained using an optical flow dataset. Unlike existing supervised traffic sign classification methods, the proposed method does not depend on traffic sign categories defined by the training dataset. It applies to any traffic signs from different countries. We construct a Korean traffic sign classification (KTSC) dataset, including 6000 traffic sign samples and 59 categories. We evaluate the proposed method with baseline methods using the KTSC, German traffic sign, and Belgian traffic sign classification datasets. Experimental results show that the proposed method extends the ability of existing supervised methods and can classify any traffic sign, regardless of region/country dependence. Furthermore, the proposed approach significantly outperforms baseline methods for patch similarity. This approach provides a flexible and robust solution for classifying traffic signs, allowing for accurate categorization of every traffic sign, regardless of regional or national differences.
用于实时交通标志分类的自监督少量学习
虽然用于交通标志分类的监督式方法表现出色,但它们仅限于对训练数据集中定义的若干交通标志进行分类。这使得它们无法应用于不同的领域,即不同的国家。在此,我们提出了一种基于少量学习的交通标志分类自监督方法。我们针对交通标志问题设计了中心感知相似性网络,并使用光流数据集进行训练。与现有的监督式交通标志分类方法不同,所提出的方法不依赖于由训练数据集定义的交通标志类别。它适用于不同国家的任何交通标志。我们构建了一个韩国交通标志分类(KTSC)数据集,其中包括 6000 个交通标志样本和 59 个类别。我们使用 KTSC、德国交通标志和比利时交通标志分类数据集,对提出的方法和基准方法进行了评估。实验结果表明,所提出的方法扩展了现有监督方法的能力,可以对任何交通标志进行分类,而不受地区/国家依赖性的影响。此外,在补丁相似性方面,所提出的方法明显优于基准方法。这种方法为交通标志分类提供了一种灵活、稳健的解决方案,可对每种交通标志进行准确分类,而不受地区或国家差异的影响。
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
CiteScore
3.00
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