Research on the Optimization of Traffic Sign Recognition Technology based on Deep Learning in Higher Vocational Computer Application Majors

Authors

  • Dan Lian

DOI:

https://doi.org/10.54691/vyefb967

Keywords:

Higher Vocational Computer Application Major; Object Detection Model; Deep Learning; Traffic Sign Recognition.

Abstract

This paper takes the computer application major in higher vocational and technical colleges as the research background and focuses on the application of deep learning - related knowledge in the field of traffic sign recognition. The paper selects images from traffic scene environments, constructs relevant object detection models such as YOLO and Faster R - CNN, and trains and optimizes these models. By drawing charts of the model convergence process and comparing the performance indicators of different models, it elaborates on the performance of different models in traffic sign recognition. The research process and the idea of comparative analysis are applied to the computer application major in higher vocational education, hoping to improve students' practical application ability of deep - learning object detection technology and provide references for industry practitioners and researchers.

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References

[1] Yang Guangzhu, Long Zelian, Li Yi, et al. Research Progress on Traffic Sign Recognition Technology Based on Deep Learning [J]. Western China Communication Science & Technology, 2023,(12):194 - 197. DOI:10.13282/j.cnki.wccst.2023.12.059.

[2] Dong Xiaohua, Wei Yuke. Review of Traffic Sign Recognition Technology Methods [J]. Computer Knowledge and Technology, 2020,16(25):193 - 194 + 199. DOI:10.14004/j.cnki.ckt.2020.3029.

[3] Gao Mingyue, Dong Quande. Research on Traffic Sign Recognition Technology Based on Deep Learning [J]. Journal of Lanzhou University of Arts and Science (Natural Science Edition), 2020,34(03):93 - 97. DOI:10.13804/j.cnki.2095 - 6991.2020.03.019.

[4] Zhong Huijuan. Application Research on Traffic Sign Recognition Technology Based on Feature Reuse [J]. Digital Technology and Application, 2020,38(02):24 - 26. DOI:10.19695/j.cnki.cn12 - 1369.2020.02.14.

[5] Yu Jincheng, Xie Guanghan, Luo Fang. Exploration of Digital Recognition Technology for Road Traffic Signs Based on Deep Learning [J]. Digital Technology and Application, 2013,(12):62 - 63 + 66. DOI:10.19695/j.cnki.cn12 - 1369.2013.12.038.

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Published

2025-06-02

Issue

Section

Articles

How to Cite

Lian, Dan. 2025. “Research on the Optimization of Traffic Sign Recognition Technology Based on Deep Learning in Higher Vocational Computer Application Majors”. Scientific Journal of Intelligent Systems Research 7 (5): 6-10. https://doi.org/10.54691/vyefb967.