AUTOMATED HELMET MONITORING SYSTEM USING DEEP LEARNING

Kavuri.K.S.V.A.Satheesh, Nandam Sai Akhila, Dondapati Amarnadh, Paruchuri Sagar Swetha, Avula Venkata Sohan, Vasireddy Pardhiv
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Abstract

Safety and compliance are the uppermost and fundamental concerns in the modern transport subsystems. As a result, the project is essentially designed to come up with an advanced solution by combining YOLOv8 for precise identification of objects and, on the other hand, Easy OCR for reading characters. The key goals are to detect helmets, those without helmets, and identify number plates of the respective motor vehicle. With YOLOv8, we start training the model to identify not only helmets but the lack of helmets, which is necessary for compliance monitoring based on the law. Further, YOLOv8 is also designed to determine the Regions of Interest . Regarding vehicles, the model focuses mainly on license plates which are key objects. After finding the appropriate areas, Easy OCR is designed for applying optical character recognition, helping to obtain vehicle numbers of any type in the most organized, quick way. Therefore, combining YOLOv8 at the stage of object detection and Easy OCR for the recognition of characters creates a novel but, at the same time susceptible system for a vehicle control company. This integrated system is a sophisticated device for monitoring helmeted and un helmeted riders, promoting a safe and stable journey gadget. By leveraging real-time records, our answers provide precious insights into protection compliance. In summary, the aggregate of YOLOv8 and Easy OCR presents a effective answer for item popularity and conduct reputation, so that our system contributes to the development of secure and green urban mobility by means of preserving rider protection and safety. s. Index Terms - Helmet, Deep Learning, Object Detection, Character Recognition, ROI
使用深度学习的自动头盔监测系统
在现代运输子系统中,安全和合规是最重要的基本问题。因此,该项目的主要目的是通过将用于精确识别物体的 YOLOv8 与用于读取字符的 Easy OCR 相结合,提出一种先进的解决方案。主要目标是检测头盔、无头盔者和识别相应机动车的号牌。有了 YOLOv8,我们开始训练模型,使其不仅能识别头盔,还能识别没有头盔的情况,这对于根据法律进行合规性监控非常必要。此外,YOLOv8 还可以确定感兴趣的区域。在车辆方面,该模型主要关注车牌这一关键对象。在找到适当区域后,Easy OCR 可用于光学字符识别,帮助以最有条理的方式快速获取任何类型的车辆编号。因此,在物体检测阶段将 YOLOv8 与用于字符识别的 Easy OCR 相结合,可为车辆控制公司创建一个新颖但同时易于使用的系统。通过利用实时记录,我们的答案为保护合规性提供了宝贵的见解。总之,YOLOv8 和 Easy OCR 的组合为物品的受欢迎程度和行为信誉提供了有效的答案,因此我们的系统通过保护骑行者的安全,为发展安全、绿色的城市交通做出了贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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