Robust Vehicle Classification Based on the Combination of Deep Features and Handcrafted Features

Liying Jiang, Jiafeng Li, L. Zhuo, Ziqi Zhu
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引用次数: 9

Abstract

Vehicle classification plays an important part in Intelligent Transport System. Recently, deep learning has showed outstanding performance in image classification. However, numerous parameters of the deep network need to be optimized which is time-consuming. PCANet is a light-weight deep learning network that is easy to train. In this paper, a new robust vehicle classification method is proposed, in which the deep features of PCANet, handcrafted features of HOG (Histogram of Oriented Gradient) and HU moments are extracted to describe the content property of vehicles. In addition, the spatial location information is introduced to HU moments to improve its distinguishing ability. The combined features are input to SVM (Support Vector Machine) to train the classification model. The vehicles are classified into six categories, i.e. large bus, car, motorcycle, minibus, truck and van. We construct a VehicleDataset including 13700 vehicle images extracted from real surveillance videos to carry out the experiments. The average classification accuracy can achieve 98.34%, which is 4.49% higher than that obtained from the conventional methods based on "Feature + Classifier" and is also slightly higher than that from GoogLeNet (98.26%). The proposed method doesn't need GPU and has much greater convenience than GoogLeNet. The experimental results have demonstrated that for a specific task, the combination of the deep features obtained from light-weight deep learning network and the handcrafted features can achieve comparable or even higher performance compared to the deeper neural network.
基于深度特征和手工特征结合的鲁棒车辆分类
车辆分类是智能交通系统的重要组成部分。近年来,深度学习在图像分类方面表现突出。然而,深度网络中需要优化的参数众多,耗时长。PCANet是一种轻量级的深度学习网络,易于训练。本文提出了一种新的鲁棒车辆分类方法,该方法提取PCANet的深度特征、HOG (Histogram of Oriented Gradient)的手工特征和HU矩来描述车辆的内容属性。此外,将空间位置信息引入HU矩中,提高了HU矩的识别能力。将组合的特征输入到支持向量机(SVM)中训练分类模型。车辆分为六大类,即大客车、轿车、摩托车、小巴、卡车和面包车。我们构建了一个包含13700张从真实监控视频中提取的车辆图像的VehicleDataset来进行实验。平均分类准确率可达到98.34%,比基于“Feature + Classifier”的常规方法的分类准确率提高4.49%,也略高于GoogLeNet的分类准确率98.26%。该方法不需要GPU,且比GoogLeNet具有更大的便利性。实验结果表明,对于特定任务,轻量级深度学习网络获得的深度特征与手工制作的特征相结合可以达到与深层神经网络相当甚至更高的性能。
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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