BI-TST_YOLOv5:基于改进的 YOLOv5 模型的地面缺陷识别算法

IF 2.6 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Jiahao Qin, Xiaofeng Yang, Tianyi Zhang, Shuilan Bi
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引用次数: 0

摘要

路面缺陷检测技术是智能驾驶系统的重要组成部分,要求更高的精度和更快的检测率。针对不同缺陷类型和复杂的视觉传感背景所带来的复杂性,本研究引入了一种增强型方法,以增强基础 YOLOv5 算法中的网络结构和激活函数。首先,对 YOLOv5 架构进行修改,调整 Leaky ReLU 激活函数,从而提高回归的稳定性和准确性。随后,将双层路由注意力整合到网络的头部层,优化了注意力机制,显著提高了整体效率。此外,用 C3-TST 模块替换了 YOLOv5 主干层的 C3 模块,提高了目标检测的初始收敛效率。与原始 YOLOv5s 网络的对比分析表明,map50 提高了 2%,F1 提高了 1.8%,这表明网络性能有了全面提升。算法的初始收敛率得到了提高,准确性和运行效率也得到了极大改善,尤其是在训练集规模较小的模型上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BI-TST_YOLOv5: Ground Defect Recognition Algorithm Based on Improved YOLOv5 Model
Pavement defect detection technology stands as a pivotal component within intelligent driving systems, demanding heightened precision and rapid detection rates. Addressing the complexities arising from diverse defect types and intricate backgrounds in visual sensing, this study introduces an enhanced approach to augment the network structure and activation function within the foundational YOLOv5 algorithm. Initially, modifications to the YOLOv5’s architecture incorporate an adjustment to the Leaky ReLU activation function, thereby enhancing regression stability and accuracy. Subsequently, the integration of bi-level routing attention into the network’s head layer optimizes the attention mechanism, notably improving overall efficiency. Additionally, the replacement of the YOLOv5 backbone layer’s C3 module with the C3-TST module enhances initial convergence efficiency in target detection. Comparative analysis against the original YOLOv5s network reveals a 2% enhancement in map50 and a 1.8% improvement in F1, signifying an overall advancement in network performance. The initial convergence rate of the algorithm has been improved, and the accuracy and operational efficiency have also been greatly improved, especially on models with small-scale training sets.
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来源期刊
World Electric Vehicle Journal
World Electric Vehicle Journal Engineering-Automotive Engineering
CiteScore
4.50
自引率
8.70%
发文量
196
审稿时长
8 weeks
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