基于车辆检测与识别的公私车辆量化与分类

L. Ambata, Isabel Angela P. del Castillo, Jeremiah Rod H. Jacinto, Cellix Mark T. Santos
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引用次数: 2

摘要

菲律宾的交通拥堵是多种多样的,包括公共和私人车辆。其中一种方法是设计一个系统,可以从监控视频中对公共和私人车辆进行计数、检测、识别和分类。本研究介绍了该系统的开发过程,作为交通规则实施的统计数据。研究人员使用的数据集由13600张图像组成:10880张用于训练,2720张用于测试。这些是从加油站的视频源中获得的,用于经常经过加油站的车辆。研究人员使用了一种称为卷积神经网络的算法来检测和分类车辆。
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Public and Private Vehicle Quantification and Classification using Vehicle Detection and Recognition
Traffic congestion in the Philippines is diverse consisting public and private vehicles. One approach of this is to design a system that can count, detect, recognize, and classify public and private vehicles from a surveillance video. This research introduces the development of the said system, to be used as a statistical data for implementing traffic rules. The dataset the researchers used consists of 13,600 images: 10,880 images for training and 2,720 images for testing. These were obtained from a gas station video source, for the vehicles frequently passing though in a gas station. The researchers used an algorithm called Convolutional Neural Network for the detecting and classifying vehicles.
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