使用视觉变压器识别交通标志

Haolan Wang
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引用次数: 2

摘要

交通标志识别是未来自动驾驶系统的重要组成部分。深度学习已应用于该任务,而最近的视觉变形金刚的性能尚未得到探索。在本研究中,首次在三个真实的交通标志数据集中验证了八种不同的视觉变形器。实验结果表明,最佳视觉变压器在预训练的DenseNet和从头训练的DenseNet之间具有良好的性能。此外,与DenseNet相比,最佳视觉变形金刚模型的训练时间更短。
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Traffic Sign Recognition with Vision Transformers
Traffic sign recognition is an integral part of future autonomous driving systems. Deep learning has been applied in this task, while the performance of the recent vision Transformers is unexplored. In this study, eight different vision Transformers are validated in three real-world traffic sign datasets for the first time. The experimental results demonstrate that the best vision Transformer has a performance between the pre-trained DenseNet and the DenseNet trained from scratch. Besides, the best vision Transformers model has less training time compared to DenseNet.
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