| 注册
首页|期刊导航|湖南工业大学学报|融入注意力机制的交通标志检测算法

融入注意力机制的交通标志检测算法

彭杰 于惠钧

湖南工业大学学报2026,Vol.40Issue(3):63-69,7.
湖南工业大学学报2026,Vol.40Issue(3):63-69,7.DOI:10.20271/j.cnki.1673-9833.2026.3009

融入注意力机制的交通标志检测算法

Traffic Sign Detection Algorithm with Attention Mechanism Incorporated

彭杰 1于惠钧1

作者信息

  • 1. 湖南工业大学 交通与电气工程学院,湖南 株洲 412007
  • 折叠

摘要

Abstract

In view of the flaws of low recognition accuracy and incomplete detection of traffic signs in existing target detection algorithms,a traffic sign detection algorithm has thus been proposed with an attention mechanism incorporated into YOLO11n.Firstly,the convolution and attention fusion module(CAFM)is integrated with the YOLO11n backbone,so as to effectively model both global and local features of images by combining convolution operations with attention mechanisms to enhance detection accuracy.Secondly,by incorporating the global attention mechanism module into the YOLO11n neck,the model is enabled to extract semantic and positional information from features more fully,thereby improving the feature expression ability of the model.Finally,a small target detection layer is added to retain more shallow detail information to enhance the fusion of deep and shallow semantic information,thus overcoming the incomplete detection of small targets.The experimental results show that the improved algorithm is characterized with a good accuracy,recall,and mean average precision(mAP)of 83.9%,70.7%,and 82.4%,respectively,in the TT100K dataset.Compared with the original model YOLO11n,it improves by 5.7,2.7,and 6.3 percentage points,verifying the effectiveness of the improvement.

关键词

交通标志检测/YOLO11/CAFM注意力机制/GAM注意力机制

Key words

traffic sign detection/YOLO11/CAFM attention mechanism/GAM attention mechanism

分类

信息技术与安全科学

引用本文复制引用

彭杰,于惠钧..融入注意力机制的交通标志检测算法[J].湖南工业大学学报,2026,40(3):63-69,7.

湖南工业大学学报

1673-9833

访问量1
|
下载量0
段落导航相关论文