利用 YOLOv8 和 DEEPSORT 优化行人跟踪,实现可靠感知

Q3 Economics, Econometrics and Finance
Ghania Zidani, D. Djarah, Abdslam Benmakhlouf, Laid Khettache
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引用次数: 0

摘要

多目标跟踪是计算机视觉领域感知的一个重要方面,广泛应用于自动驾驶、行为识别等领域。环境的复杂性和动态性、不断变化的人物视觉特征以及频繁出现的遮挡交互,都对现有行人跟踪算法的有效性造成了限制。这就导致了跟踪精度和稳定性的不理想。作为一种解决方案,本文提出了一种用于行人跟踪的集成检测器-跟踪器框架。该框架包括一个行人物体检测器,它利用了 YOLOv8 网络,该网络被认为是最新建立的最先进的检测器。该检测器为解决局限性提供了理想的检测基础。通过将 YOLOv8 与 DeepSort 跟踪算法相结合,我们提高了在动态场景中跟踪行人的能力。在 MOT17 和 MOT20 等公开数据集上进行实验后,准确性和一致性得到了明显改善,MOTA 得分分别为 63.82 和 58.95,HOTA 得分分别为 43.15 和 41.36。我们的研究强调了优化物体检测的重要性,以释放自动驾驶等关键应用的跟踪潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
OPTIMIZING PEDESTRIAN TRACKING FOR ROBUST PERCEPTION WITH YOLOv8 AND DEEPSORT
Multi-object tracking is a crucial aspect of perception in the area of computer vision, widely used in autonomous driving, behavior recognition, and other areas. The complex and dynamic nature of environments, the ever-changing visual features of people, and the frequent appearance of occlusion interactions all impose limitations on the efficacy of existing pedestrian tracking algorithms. This results in suboptimal tracking precision and stability. As a solution, this article proposes an integrated detector-tracker framework for pedestrian tracking. The framework includes a pedestrian object detector that utilizes the YOLOv8 network, which is regarded as the latest state-of-the-art detector, that has been established. This detector provides an ideal detection base to address limitations. Through the combination of YOLOv8 and the DeepSort tracking algorithm, we have improved the ability to track pedestrians in dynamic scenarios. After conducting experiments on publicly available datasets such as MOT17 and MOT20, a clear improvement in accuracy and consistency was demonstrated, with MOTA scores of 63.82 and 58.95, and HOTA scores of 43.15 and 41.36, respectively. Our research highlights the significance of optimizing object detection to unleash the potential of tracking for critical applications like autonomous driving.
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来源期刊
Applied Computer Science
Applied Computer Science Engineering-Industrial and Manufacturing Engineering
CiteScore
1.50
自引率
0.00%
发文量
0
审稿时长
8 weeks
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