Analisis Klasifikasi Mobil Pada Gardu Tol Otomatis (GTO) Menggunakan Convolutional Neural Network (CNN)

Sayuti Rahman, Adinda Titania, Arnes Sembiring, Mufidah Khairani, Yessi Fitri Annisah Lubis
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引用次数: 1

Abstract

The concept of a smart city is the most important issue in the development aspect of big cities in the world. Where the city must promise a more comfortable, organized, healthy and efficient life. Smart transportation is part of a smart city that is useful for improving better urban planning. Smart transportation also applies to toll roads, such as automating toll road retribution payments. Automatic Toll Gate (GTO) in Indonesia still uses sensors. However, sensors often misclassify trailers. In addition, the use of sensors also requires additional costs in installation and maintenance. Currently, every toll gate is equipped with cameras for various purposes. By utilizing the camera for vehicle type classification, the cost of the GTO will be reduced. For this reason, utilizing a digital camera with computer vision for vehicle type classification is the solution. Convolutional Neural Networks (CNN) is the most popular technique today in solving computer vision problems. Exploit the existing CNN by replacing the last fully connected output according to the number of vehicle classes. The test results show that mobilenet V2 is better in the classification of vehicle types, the best accuracy is Alexnet 93.81% and Mobilenet 96.19%. Computer vision by utilizing CNN is expected to replace the use of sensors so that implementation costs are cheaper.
汽车在自动收纳站(GTO)上的汽车分类分析使用了反神经网络(CNN)
智慧城市的概念是当今世界大城市发展中最重要的问题。在那里,城市必须承诺一个更舒适、更有组织、更健康、更高效的生活。智能交通是智慧城市的一部分,有助于改善城市规划。智能交通也适用于收费公路,例如收费公路的自动补偿支付。印尼的自动收费站(GTO)仍然使用传感器。然而,传感器经常对拖车进行错误分类。此外,传感器的使用还需要额外的安装和维护费用。目前,每个收费站都配备了各种用途的摄像头。利用摄像头进行车型分类,可以降低GTO的成本。因此,利用具有计算机视觉的数码相机进行车辆类型分类是解决方案。卷积神经网络(CNN)是当今解决计算机视觉问题最流行的技术。利用现有的CNN,根据车辆类别的数量替换最后一个完全连接的输出。测试结果表明,mobilenet V2在车型分类方面表现较好,Alexnet的准确率为93.81%,mobilenet的准确率为96.19%。利用CNN的计算机视觉有望取代传感器的使用,从而降低实施成本。
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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