Use of Yolo Algorithm for Traffic Sign Detection in Autonomous Vehicles and Improvement Using Data Replication Methods

Serkan Budak, Fırat Bozkaya, Mustafa Yasin Akmaz, Şükrücan Tığlıoğlu, Cansel Boynukara, Okan Kazanci, Zülal Hilal Yildiz Budak, Akif Durdu, Cemil Sungur
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Abstract

Autonomous vehicles use many technologies and methods to detect and act on surrounding objects. The most common among these technologies is an algorithm called YOLO (You Only Look Once). This algorithm quickly detects objects in an image and classifies these objects accurately. This study examines the use of the YOLO algorithm for signage detection in autonomous vehicles and how this algorithm can be improved. First of all, the basic principles and working mechanisms of the YOLO algorithm are explained. Then, it is explained in detail how this algorithm can be used for plate detection in autonomous vehicles. Various models were trained using the YOLO algorithm and the data set created with real data, and the trained models were tested on real-time systems. Finally, suggestions for the improvement of the YOLO algorithm are presented and how this algorithm can be improved further in the future is discussed.
Yolo算法在自动驾驶汽车交通标志检测中的应用及数据复制方法改进
自动驾驶汽车使用许多技术和方法来检测周围的物体并对其采取行动。这些技术中最常见的是一种叫做YOLO(你只看一次)的算法。该算法快速检测图像中的物体,并对其进行准确分类。本研究探讨了在自动驾驶汽车中使用YOLO算法进行标识检测,以及如何改进该算法。首先,阐述了YOLO算法的基本原理和工作机制。然后,详细解释了该算法如何用于自动驾驶汽车的车牌检测。利用YOLO算法和由真实数据创建的数据集对各种模型进行训练,并在实时系统上对训练好的模型进行测试。最后,对YOLO算法的改进提出了建议,并对该算法未来的改进进行了讨论。
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