Affiliation:
1. School of Software, Henan Polytechnic University, Jiaozuo 454000, China
Abstract
In recent years, significant progress has been witnessed in the field of deep learning-based object detection. As a subtask in the field of object detection, traffic sign detection has great potential for development. However, the existing object detection methods for traffic sign detection in real-world scenes are plagued by issues such as the omission of small objects and low detection accuracies. To address these issues, a traffic sign detection model named YOLOv7-Traffic Sign (YOLOv7-TS) is proposed based on sub-pixel convolution and feature fusion. Firstly, the up-sampling capability of the sub-pixel convolution integrating channel dimension is harnessed and a Feature Map Extraction Module (FMEM) is devised to mitigate the channel information loss. Furthermore, a Multi-feature Interactive Fusion Network (MIFNet) is constructed to facilitate enhanced information interaction among all feature layers, improving the feature fusion effectiveness and strengthening the perception ability of small objects. Moreover, a Deep Feature Enhancement Module (DFEM) is established to accelerate the pooling process while enriching the highest-layer feature. YOLOv7-TS is evaluated on two traffic sign datasets, namely CCTSDB2021 and TT100K. Compared with YOLOv7, YOLOv7-TS, with a smaller number of parameters, achieves a significant enhancement of 3.63% and 2.68% in the mean Average Precision (mAP) for each respective dataset, proving the effectiveness of the proposed model.
Funder
National Natural Science Foundation of China
Henan Science and Technology Planning Program
Reference54 articles.
1. Benallal, M., and Meunier, J. (2003, January 4–7). Real-time color segmentation of road signs. Proceedings of the CCECE 2003-Canadian Conference on Electrical and Computer Engineering toward a Caring and Humane Technology (Cat. No. 03CH37436), Montreal, QC, Canada.
2. Real-time traffic sign recognition from video by class-specific discriminative features;Ruta;Pattern Recognit.,2010
3. Nguwi, Y.-Y., and Kouzani, A.Z. (2006, January 16–21). Automatic road sign recognition using neural networks. Proceedings of the The 2006 IEEE International Joint Conference on Neural Network Proceedings, Vancouver, BC, Canada.
4. Fleyeh, H., Biswas, R., and Davami, E. (2013, January 1–4). Traffic sign detection based on AdaBoost color segmentation and SVM classification. Proceedings of the Eurocon 2013, Zagreb, Croatia.
5. Yang, Y., and Wu, F. (2014, January 17–19). Real-time traffic sign detection via color probability model and integral channel features. Proceedings of the Pattern Recognition: 6th Chinese Conference, CCPR 2014, Changsha, China. Proceedings, Part II 6, 2014.
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