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Machine Learning based Surveillance System for Detection of Bike Riders without Helmet and Triple Rides

机译:基于机器学习的监控系统,可检测没有头盔和三人骑行的自行车车手

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As the number of bikes in India is increasing daily compared to that of the human population. The danger of demise has increased 2.5 times among the riders without using a helmet contrasted with person wearing a helmet. The presented video observation based system may be powerful but still it needs critical human help whose productivity diminishes with time and human biasing additionally comes into the image. This paper plans to unwind this issue by automating the technique for distinguishing the riders with and without helmets. The system takes a video of traffic on an open street as an information and recognizes the moving items inside the scene. This work proposes a system based on the location of individual or different riders taking a trip on bikes with no helmets. Inside the proposed approach, from the beginning stage, bike riders are recognized with the use of YOLOv3 model which is a consistent type of YOLO model, the forefront methodology for object distinguishing helps as such in distinguishing the riders with and without helmet. The vertical projection of binary image is used for counting the number of riders if it exceeds two.
机译:与人口相比,印度的自行车数量每天都在增加。与没有戴头盔的人相比,戴头盔的人死亡的危险增加了2.5倍。提出的基于视频观察的系统可能功能强大,但仍然需要关键的人工帮助,其生产率会随着时间的流逝而降低,并且人为偏见也会进入图像中。本文计划通过自动化区分头盔和不戴头盔的骑手的技术来解决这个问题。该系统将开放街道上的交通视频作为信息,并识别场景中的移动项目。这项工作提出了一种基于个人或不同骑手在没有头盔的自行车上旅行的位置的系统。在提议的方法内部,从一开始,便通过使用YOLOv3模型(一种一致的YOLO模型)来识别骑自行车的人,最先进的对象识别方法有助于识别带头盔和不带头盔的骑手。如果二进制图像的垂直投影超过两个,则用于计算骑乘者的数量。

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