Image Classification for Vehicle Type Dataset Using State-of-the-art Convolutional Neural Network Architecture

Yian Seo, K. Shin
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引用次数: 2

Abstract

Fast development in Deep Learning and its hybrid methodologies has led diverse applications in different domains. For image classification tasks in vehicle related fields, Convolutional Neural Network (CNN) is mostly chosen for recent usages. To train the CNN classifier, various vehicle image datasets are used, however, most of previous studies have learned features from datasets with a single form of images taken in the controlled condition such as surveillance camera vehicle image dataset from the same road, which results the classifier cannot guarantee the generalization of the model onto different forms of vehicle images. In addition, most of researches using CNN have used LeNet, GoogLeNet, or VGGNet for their main architecture. In this study, we perform vehicle type (convertible, coupe, crossover, sedan, SUV, truck, and van) classification and we use our own collected dataset with vehicle images taken in different angles and backgrounds to ensure the generalization and adaptability of proposed classifier. Moreover, we use the state-of-the-art CNN architecture, NASNet, which is a hybrid CNN architecture having Recurrent Neural Network structure trained by Reinforcement Learning to find optimal architecture. After 10 folded experiments, the average final test accuracy points 83%, and on the additional evaluation with random query images, the proposed model achieves accurate classification.
基于卷积神经网络架构的车辆类型数据集图像分类
深度学习及其混合方法的快速发展已经在不同的领域得到了广泛的应用。对于车辆相关领域的图像分类任务,卷积神经网络(CNN)是目前常用的分类方法。为了训练CNN分类器,使用了各种各样的车辆图像数据集,然而,以往的研究大多是从受控条件下拍摄的单一形式图像的数据集学习特征,例如来自同一道路的监控摄像头车辆图像数据集,这导致分类器不能保证模型泛化到不同形式的车辆图像上。此外,大多数使用CNN的研究都使用LeNet、GoogLeNet或VGGNet作为其主要架构。在本研究中,我们进行了车型(敞篷车、轿跑车、跨界车、轿车、SUV、卡车和面包车)分类,并使用我们自己收集的数据集和不同角度和背景的车辆图像,以确保所提出分类器的泛化和适应性。此外,我们使用了最先进的CNN架构NASNet,这是一种混合CNN架构,具有通过强化学习训练的递归神经网络结构,以找到最优架构。经过10次折叠实验,最终测试的平均准确率为83%,在随机查询图像的附加评价上,该模型达到了准确的分类效果。
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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