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增强用于自动驾驶的YOLOv5:边缘设备上基于注意力的高效目标检测

Enhancing YOLOv5 for Autonomous Driving: Efficient Attention-Based Object Detection on Edge Devices.

作者信息

Adam Mortda A A, Tapamo Jules R

机构信息

School of Engineering, Howard College Campus, University of KwaZulu-Natal, Durban 4041, South Africa.

出版信息

J Imaging. 2025 Aug 8;11(8):263. doi: 10.3390/jimaging11080263.

Abstract

On-road vision-based systems rely on object detection to ensure vehicle safety and efficiency, making it an essential component of autonomous driving. Deep learning methods show high performance; however, they often require special hardware due to their large sizes and computational complexity, which makes real-time deployment on edge devices expensive. This study proposes lightweight object detection models based on the YOLOv5s architecture, known for its speed and accuracy. The models integrate advanced channel attention strategies, specifically the ECA module and SE attention blocks, to enhance feature selection while minimizing computational overhead. Four models were developed and trained on the KITTI dataset. The models were analyzed using key evaluation metrics to assess their effectiveness in real-time autonomous driving scenarios, including precision, recall, and mean average precision (mAP). BaseECAx2 emerged as the most efficient model for edge devices, achieving the lowest GFLOPs (13) and smallest model size (9.1 MB) without sacrificing performance. The BaseSE-ECA model demonstrated outstanding accuracy in vehicle detection, reaching a precision of 96.69% and an mAP of 98.4%, making it ideal for high-precision autonomous driving scenarios. We also assessed the models' robustness in more challenging environments by training and testing them on the BDD-100K dataset. While the models exhibited reduced performance in complex scenarios involving low-light conditions and motion blur, this evaluation highlights potential areas for improvement in challenging real-world driving conditions. This study bridges the gap between affordability and performance, presenting lightweight, cost-effective solutions for integration into real-time autonomous vehicle systems.

摘要

基于道路视觉的系统依靠目标检测来确保车辆安全和效率,使其成为自动驾驶的重要组成部分。深度学习方法表现出高性能;然而,由于其规模大且计算复杂,它们通常需要特殊硬件,这使得在边缘设备上进行实时部署成本高昂。本研究提出了基于YOLOv5s架构的轻量级目标检测模型,该架构以其速度和准确性而闻名。这些模型集成了先进的通道注意力策略,特别是ECA模块和SE注意力块,以增强特征选择,同时将计算开销降至最低。开发了四个模型并在KITTI数据集上进行训练。使用关键评估指标对这些模型进行分析,以评估它们在实时自动驾驶场景中的有效性,包括精度、召回率和平均精度均值(mAP)。BaseECAx2成为边缘设备最有效的模型,在不牺牲性能的情况下实现了最低的GFLOP(13)和最小的模型大小(9.1MB)。BaseSE-ECA模型在车辆检测中表现出出色的准确性,精度达到96.69%,mAP达到98.4%,使其成为高精度自动驾驶场景的理想选择。我们还通过在BDD-100K数据集上对模型进行训练和测试,评估了它们在更具挑战性环境中的鲁棒性。虽然这些模型在涉及低光照条件和运动模糊的复杂场景中性能有所下降,但该评估突出了在具有挑战性的现实世界驾驶条件下潜在的改进领域。本研究弥合了可承受性和性能之间的差距,提出了轻量级、经济高效的解决方案,以集成到实时自动驾驶车辆系统中。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1b77/12387144/965df8a106e9/jimaging-11-00263-g001.jpg

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