论文标题
自动驾驶汽车的强大行人检测方法
A Robust Pedestrian Detection Approach for Autonomous Vehicles
论文作者
论文摘要
如今,利用先进的驾驶员辅助系统(ADAS)吸收了巨大的兴趣,作为减少道路交通问题的潜在解决方案。尽管在此类系统中取得了最新的进步,但仍有许多查询需要克服。例如,在各种驾驶场景中,ADA需要对行人进行准确和实时检测。为了解决上述问题,本文旨在微调Yolov5S框架,以在Caltech行人数据集的现实情况下处理行人检测挑战。我们还引入了一个开发的工具箱,用于准备培训和测试数据以及加州理工学院行人数据集的注释,以Yolov5识别的格式。利用我们的方法的实验结果表明,以最高的70 fps的速度执行时,我们对行人检测任务的微调模型的平均平均精度(MAP)超过91%。此外,在加州理工学院行人数据集样品上的实验证明了我们提出的方法是一种有效而准确的人行人检测方法,并且可以胜过其他现有方法。
Nowadays, utilizing Advanced Driver-Assistance Systems (ADAS) has absorbed a huge interest as a potential solution for reducing road traffic issues. Despite recent technological advances in such systems, there are still many inquiries that need to be overcome. For instance, ADAS requires accurate and real-time detection of pedestrians in various driving scenarios. To solve the mentioned problem, this paper aims to fine-tune the YOLOv5s framework for handling pedestrian detection challenges on the real-world instances of Caltech pedestrian dataset. We also introduce a developed toolbox for preparing training and test data and annotations of Caltech pedestrian dataset into the format recognizable by YOLOv5. Experimental results of utilizing our approach show that the mean Average Precision (mAP) of our fine-tuned model for pedestrian detection task is more than 91 percent when performing at the highest rate of 70 FPS. Moreover, the experiments on the Caltech pedestrian dataset samples have verified that our proposed approach is an effective and accurate method for pedestrian detection and can outperform other existing methodologies.