Automatic Number Plate Recognition for Motorcyclists Riding Without Helmet

Yogirai Kulkarni, A. Kamthe, Shubhangi Bodkhe, A. Patil
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引用次数: 17

Abstract

Motorcycles have always been the primary mode of transport in developing countries. In recent years, there has been a rise in motorcycle accidents. One of the major reasons for fatalities in accidents is the motorcyclist not wearing a protective helmet. The most prevalent method for ensuring that motorcyclists wear helmet is traffic police manually monitoring motorcyclists at road junctions or through CCTV footage and penalizing those without helmet. But, it requires human intervention and efforts. This paper proposes an automated system for detecting motorcyclists not wearing helmet and retrieving their motorcycle number plates from CCTV footage video. The proposed system first does background subtraction from video to get moving objects. Then, moving objects are classified as motorcyclist or non-motorcyclist. For classified motorcyclist, head portion is located and it is classified as helmet or non-helmet. Finally, for identified motorcyclist without helmet, number plate of motorcycle is detected and the characters on it are extracted. The proposed system uses Convolutional Neural Networks trained using transfer learning on top of pre-trained model for classification which has helped in achieving greater accuracy. Experimental results on traffic videos show an accuracy of 98.72% on detection of motorcyclists without helmet.
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无头盔摩托车自动车牌识别系统
摩托车一直是发展中国家的主要交通工具。近年来,摩托车事故有所增加。事故中死亡的主要原因之一是骑摩托车的人没有戴防护头盔。确保摩托车手戴头盔的最普遍方法是交通警察在道路路口或通过闭路电视录像对摩托车手进行人工监控,并对不戴头盔的人进行处罚。但是,它需要人为的干预和努力。本文提出了一种从闭路电视监控录像中自动检测未戴头盔摩托车车牌号的系统。该系统首先对视频进行背景减法,得到运动物体。然后,将运动物体分为摩托车手和非摩托车手。对于分类摩托车手,定位头部部分,并将其分类为头盔或非头盔。最后,对未戴头盔的摩托车驾驶员进行车牌检测,提取车牌上的特征。该系统在预训练模型上使用迁移学习训练的卷积神经网络进行分类,有助于实现更高的准确率。对交通视频的实验结果表明,该算法对无头盔摩托车的检测准确率达到98.72%。
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