Indonesia Toll Road Vehicle Classification Using Transfer Learning with Pre-trained Resnet Models

Ananto Tri Sasongko, M. Ivan Fanany
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引用次数: 6

Abstract

Research in vehicle classification through various methods has become a popular field of study for decades. Mainly, vehicles are categorized based on the model, manufactured, logo, types, and dimensions, and the dataset for it is available publicly and relatively easy to get. However, based on our survey, vehicle classification based on the number of axles using deep learning has not been conducted, and the public dataset for it is not available yet. This paper aims to compose a vehicle classification based on type and number of axles then categorize it into five groups, namely, Group-I, Group-II, Group-III, Group-IV, and Group-V. This vehicle grouping refers to the Indonesia toll road tariff regulation. Nowadays, deep learning as one of the most advanced methods becomes the preferred technique to apply in image classifications due to its high performance, so do this study. Utilizing Convolution Neural Networks (CNN) as image segmentation and classification, Transfer Learning as a technique, Resnet architectures as base models, and fine-tuning as an enhancement, we can achieve accuracy about 99% for the specific vehicle classification in this study.
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印度尼西亚收费公路车辆分类使用迁移学习与预训练的Resnet模型
几十年来,通过各种方法对车辆分类的研究已经成为一个热门的研究领域。主要是根据车型、制造、标志、类型和尺寸对车辆进行分类,其数据集是公开的,相对容易获得。然而,根据我们的调查,目前还没有使用深度学习进行基于车轴数的车辆分类,也没有相关的公共数据集。本文的目的是根据车轴的类型和数量组成一个车辆分类,并将其分为五组,即i组、ii组、iii组、iv组和v组。本车辆分组参照印尼收费公路运价法规。目前,深度学习作为最先进的方法之一,由于其高性能而成为应用于图像分类的首选技术,本研究也是如此。利用卷积神经网络(CNN)作为图像分割和分类,迁移学习作为技术,Resnet架构作为基础模型,微调作为增强,我们可以在本研究中实现约99%的特定车辆分类准确率。
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