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基于改进YOLOv8的复杂场景同步端到端车辆行人检测算法

Synchronous End-to-End Vehicle Pedestrian Detection Algorithm Based on Improved YOLOv8 in Complex Scenarios.

作者信息

Lei Shi, Yi He, Sarmiento Jeffrey S

机构信息

Computer Engineering Department, Batangas State University, Batangas City 4200, Philippines.

College of Electrical and Control Engineering, Henan University of Urban Construction, Pingdingshan City 467000, China.

出版信息

Sensors (Basel). 2024 Sep 22;24(18):6116. doi: 10.3390/s24186116.

Abstract

In modern urban traffic, vehicles and pedestrians are fundamental elements in the study of traffic dynamics. Vehicle and pedestrian detection have significant practical value in fields like autonomous driving, traffic management, and public security. However, traditional detection methods struggle in complex environments due to challenges such as varying scales, target occlusion, and high computational costs, leading to lower detection accuracy and slower performance. To address these challenges, this paper proposes an improved vehicle and pedestrian detection algorithm based on YOLOv8, with the aim of enhancing detection in complex traffic scenes. The motivation behind our design is twofold: first, to address the limitations of traditional methods in handling targets of different scales and severe occlusions, and second, to improve the efficiency and accuracy of real-time detection. The new generation of dense pedestrian detection technology requires higher accuracy, less computing overhead, faster detection speed, and more convenient deployment. Based on the above background, this paper proposes a synchronous end-to-end vehicle pedestrian detection algorithm based on improved YOLOv8, aiming to solve the detection problem in complex scenes. First of all, we have improved YOLOv8 by designing a deformable convolutional improved backbone network and attention mechanism, optimized the network structure, and improved the detection accuracy and speed. Secondly, we introduced an end-to-end target search algorithm to make the algorithm more stable and accurate in vehicle and pedestrian detection. The experimental results show that, using the algorithm designed in this paper, our model achieves an 11.76% increase in precision and a 6.27% boost in mAP. In addition, the model maintains a real-time detection speed of 41.46 FPS, ensuring robust performance even in complex scenarios. These optimizations significantly enhance both the efficiency and robustness of vehicle and pedestrian detection, particularly in crowded urban environments. We further apply our improved YOLOv8 model for real-time detection in intelligent transportation systems and achieve exceptional performance with a mAP of 95.23%, outperforming state-of-the-art models like YOLOv5, YOLOv7, and Faster R-CNN.

摘要

在现代城市交通中,车辆和行人是交通动力学研究的基本要素。车辆和行人检测在自动驾驶、交通管理和公共安全等领域具有重要的实用价值。然而,传统检测方法在复杂环境中面临诸如尺度变化、目标遮挡和高计算成本等挑战,导致检测精度较低且性能较慢。为应对这些挑战,本文提出一种基于YOLOv8的改进型车辆和行人检测算法,旨在增强复杂交通场景中的检测能力。我们设计背后的动机有两个方面:第一,解决传统方法在处理不同尺度目标和严重遮挡方面的局限性;第二,提高实时检测的效率和准确性。新一代密集行人检测技术需要更高的准确性、更低的计算开销、更快的检测速度以及更便捷的部署。基于上述背景,本文提出一种基于改进YOLOv8的同步端到端车辆行人检测算法,旨在解决复杂场景中的检测问题。首先,我们通过设计可变形卷积改进主干网络和注意力机制对YOLOv8进行了改进,优化了网络结构,提高了检测精度和速度。其次,我们引入了一种端到端目标搜索算法,使算法在车辆和行人检测中更加稳定和准确。实验结果表明,使用本文设计的算法,我们的模型精度提高了11.76%,mAP提高了6.27%。此外,该模型保持了41.46 FPS的实时检测速度,即使在复杂场景中也能确保稳健性能。这些优化显著提高了车辆和行人检测的效率和鲁棒性,特别是在拥挤的城市环境中。我们进一步将改进后的YOLOv8模型应用于智能交通系统中的实时检测,mAP达到95.23%,表现优异,优于YOLOv5、YOLOv7和Faster R-CNN等先进模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/22dc/11435795/39a7bb926d48/sensors-24-06116-g001.jpg

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