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Vehicle Counting System Based on Vehicle Type Classification Using Deep Learning Method

机译:深度学习的基于车型分类的车辆计数系统

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Vehicle counting system (VCS) is one of the technologies that able to fulfil the intelligence transportation system's (ITS) aim in providing a safe and efficient road and transportation infrastructure. This paper is aimed to provide a more accurate VCS based on vehicle type classification method rather than the current implementation in existing works that only count the vehicle as vehicle and non-vehicle. To fulfil the aim, we proposed to use deep learning method with convolutional neural network with layer skipping-strategy (CNNLS) framework to classify the vehicle into three classes namely car, taxi and truck. This VCS is motivated by current implementation of the traffic census in Malaysia where they record the vehicle based on certain vehicle classes. The biggest challenge in this paper is how to discriminate features of taxi and car since taxi has almost identical features as car. However, with our proposed method, we able to count based on correctly classified of the vehicle with the average accuracy of 90.5%. We tested our method using a frontal view of vehicle from the self-obtained database taken using mounted-camera at the selected federal road.
机译:车辆计数系统(VCS)是能够实现智能交通系统(ITS)的目标之一的技术之一,该技术旨在提供安全有效的道路和交通基础设施。本文旨在提供一种基于车辆类型分类方法的更准确的VCS,而不是仅将车辆视为车辆和非车辆的现有工程中的当前实现。为了实现这一目标,我们提出使用带卷积神经网络和层跳策略(CNNLS)框架的深度学习方法将车辆分为汽车,出租车和卡车三类。此VCS受到马来西亚目前实施的交通普查的推动,他们根据某些车辆类别记录车辆。本文中最大的挑战是如何区分出租车和汽车的功能,因为出租车与汽车具有几乎相同的功能。但是,使用我们提出的方法,我们能够基于正确分类的车辆进行计数,平均准确度为90.5%。我们使用车辆的正面视图测试了我们的方法,该数据库是使用自选数据库在选定的联邦道路上获取的自获数据库中获得的。

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