基于卷积神经网络的摩托车头盔安全检测

Nemuel Norman F. Giron, R. Billones, Alexis M. Fillone, J. R. D. del Rosario, M. Cabatuan, A. Bandala, E. Dadios
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引用次数: 6

摘要

交通违章是菲律宾的交通问题之一。其中一个例子是,虽然实施了“不戴头盔不乘车法”,但许多驾车者仍然选择无视这一规定。为了缓解这一问题,政府提出了许多解决方案,其中之一是使用闭路电视监控的无接触交通逮捕政策。为了进一步加强这一解决方案,政府与德拉萨大学合作,在系统中使用人工智能。像图像分类和目标检测这样的计算机视觉任务可以帮助交通逮捕系统实现自动化。图像分类和目标检测是计算机视觉中用于定义图像或图像中物体坐标的技术。在本工作中,我们将开发一种新的方法来区分摩托车骑手是否戴头盔。它将使用深度机器学习,特别是卷积神经网络,并通过对收集的数据集使用不同的预训练模型进行演示。
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Motorcycle Rider Helmet Detection for Riding Safety and Compliance Using Convolutional Neural Networks
Traffic violation apprehension is one of the traffic problems here in the Philippines. One example is the No Helmet No Ride Law that is implemented but many motorists still choose to ignore. To alleviate the problem the government has offered many solutions, one of which is the No Contact Traffic Apprehension Policy that uses CCTV Monitoring. To further enhance this solution the government has partnered with the De La Salle University to use artificial intelligence in the system. Computer Vision tasks like image classification and object detection can help automate the traffic apprehension system. Image classification and object detection are technologies which are used in computer vision in defining an image or coordinates of an object in an image. In this work, a novel approach to classifying motorcycle riders between wearing a helmet or not will be developed. It will be demonstrated using deep machine learning, specifically convolutional neural network and by utilizing different pre-trained models to a gathered dataset.
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