基于深度卷积神经网络模型的交通监控车辆分类

Zakria, Jingye Cai, Jianhua Deng, Muhammad Saddam Khokhar, Muhammad Umar Aftab
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引用次数: 15

摘要

由于城市中车辆的增长,这些问题是增加交通控制系统,安全和犯罪调查,智能停车和电子收费。此外,物流进出管理系统(LMS)在城市中也是一个很大的问题,所有这些问题都具有挑战性,需要开发有效的车辆分类方法。传统的车辆分类多采用SIFT、Surf、HoG等手工特征提取方法。然而,这些方法在结果上并不有效。本文提出了一种高效的车辆分类框架,利用最先进的深度学习神经网络Inception-v3模型提取图像向量特征,该模型以前没有被用于车辆分类。然后,对特征向量进行不同的分类算法。对三个车辆数据集进行分类并进行结果论证,有助于研究者选择算法性能较好的数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vehicle Classification Based on Deep Convolutional Neural Networks Model for Traffic Surveillance Systems
Due to growth of vehicles in urban cities, such problems are increases traffic control systems, security and crime investigation, intelligent parking and electronic toll collection. Moreover, Logistics access management system (LMS)is also a big problem in urban cities and all the issues are challenging and demands to develop effective and efficient approach for vehicle classification. Mostly, traditional vehicle classification uses hand craft feature extraction method like SIFT, Surf, HoG etc. However, these approaches are not efficient in results. This paper presents the efficient framework for vehicle classification by using Inception-v3 model for image vector features extraction that is most advance deep learning neural network, and this model is not used before for vehicle classification. After that, different classification algorithms are implemented on the feature vector. The classification conducted on three vehicle datasets and results demonstration is helpful for researchers to choose dataset with algorithm performance.
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