The Use of Cnn-Based Multitask Learning for Smart Motorcycle Helmet Design

Mahdi Fadil Khaleel, Zainab Mohammed Abdulkareem, Saadaldeen Rashid Ahmed
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Abstract

By informing and upholding legal guidelines, robotically figuring out motorcycle helmets through video surveillance contributes to improving road protection. It is difficult for current techniques to keep an eye fixed on motorbikes and inform riders from passengers. In order to tackle those problems, we recommend to reveal and recognize motorbikes using a CNN oriented multi- venture gaining knowledge of (MTL) approach, with a focal point on helmet- wearing motorcyclists. We offer the HELMET the dataset, that's made up of ninety one, 000 annotated frames of 10,006 motorbikes at 12 one-of-a-kind Myanmar observation web sites. This dataset may be used as a factor of reference for techniques of detection. Our technique, referred to as MTL, can provide higher accuracy and efficiency by means of combining helmet use categorization with similarity getting to know. Operating at a charge of greater than 8 frames for each 2d (FPS) on hardware, our technique attains a sixty seven.3% F degree in identifying cyclists and their helmet utilization. The effectiveness of learning in obtaining crucial expertise about avenue protection is highlighted by means of this study. In addition, we present a motorbike helmet prepared with earbuds, a charging module, an integrated computer unit, transceivers, and a photograph sensor. This helmet makes use of picture popularity modes in both daylight and midnight occasions to pick out automobiles coming near the wearer. According to experimental consequences, vehicles and buses' registration plates can be recognized with up to175% accuracy in the course of the1day & 70% accuracy at night. The new smart motorbike helmet is supposed to apprehend vehicles in real time inside a five-meter radius, increasing street protection.
基于 Cnn 的多任务学习在智能摩托车头盔设计中的应用
通过视频监控机器人识别摩托车头盔,既能提供信息,又能维护法律准则,有助于改善道路保护。目前的技术很难固定监视摩托车,也很难将骑手与乘客区分开来。为了解决这些问题,我们建议使用以 CNN 为导向的多风险获取知识(MTL)方法来揭示和识别摩托车,重点关注戴头盔的摩托车手。我们提供的 HELMET 数据集由缅甸 12 个独一无二的观测网站上 10,006 辆摩托车的 91,000 个注释帧组成。该数据集可作为检测技术的参考因素。我们的技术被称为 "MTL",通过将头盔使用分类与相似性识别相结合,可以提供更高的准确性和效率。我们的技术在硬件上以每 2d 超过 8 帧(FPS)的速度运行,在识别骑车人及其头盔使用情况方面达到了 67.3% 的准确率。通过这项研究,我们强调了学习在获取有关道路保护的重要专业知识方面的有效性。此外,我们还展示了一款配备耳塞、充电模块、集成计算机单元、收发器和照片传感器的摩托车头盔。该头盔利用白天和午夜的图片流行模式来识别驶近佩戴者的汽车。实验结果表明,白天识别车辆和公共汽车车牌的准确率可达 175%,夜间可达 70%。新型智能摩托车头盔可实时识别半径五米范围内的车辆,从而提高街道防护能力。
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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