Vehicle images dataset for make and model recognition

Vehicle make and model recognition plays an important role in monitoring traffic in a vehicle surveillance system. Identifying vehicle make and model is a challenging task due to intraclass variation, view-point variation, and different illumination conditions (Hassan et al., 2021). In this domain,...

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Main Authors: Mohsin Ali, Muhammad Atif Tahir, Muhammad Nouman Durrani
Format: Article
Language:English
Published: Elsevier 2022-06-01
Series:Data in Brief
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2352340922003171
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author Mohsin Ali
Muhammad Atif Tahir
Muhammad Nouman Durrani
author_facet Mohsin Ali
Muhammad Atif Tahir
Muhammad Nouman Durrani
author_sort Mohsin Ali
collection DOAJ
description Vehicle make and model recognition plays an important role in monitoring traffic in a vehicle surveillance system. Identifying vehicle make and model is a challenging task due to intraclass variation, view-point variation, and different illumination conditions (Hassan et al., 2021). In this domain, many datasets regarding car make and model e.g. Stanford Car (Krause et al., 2013), VMMRdB (Tafazzoli et al., 2017, Yang et al., 2015), have already been experimented with by different researchers. However, most of the images in these datasets are high-quality images with no illumination conditions. Further, these images are collected through web crawling or image scraping. This enabled the researchers to achieve good results using deep learning models (Luo et al., 2015). In this article, we have presented an image dataset of 3847 images, designed from high-resolution (1920 1080) videos collected from camera units installed on a highway at different viewpoints with variable frame rates. This helped in collecting images demonstrating a real-world scenario and made this dataset more challenging. Due to consideration of different viewpoints and illumination effects, the dataset will help researchers to evaluate their machine learning models on realworld data (Manzoor et al., 2019).
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spelling doaj.art-83729768accb4d579452d61af52cdfd42022-12-22T00:19:17ZengElsevierData in Brief2352-34092022-06-0142108107Vehicle images dataset for make and model recognitionMohsin Ali0Muhammad Atif Tahir1Muhammad Nouman Durrani2Corresponding author.; School of Computer Science, National University of Computer and Emerging Sciences, Karachi Campus, PakistanSchool of Computer Science, National University of Computer and Emerging Sciences, Karachi Campus, PakistanSchool of Computer Science, National University of Computer and Emerging Sciences, Karachi Campus, PakistanVehicle make and model recognition plays an important role in monitoring traffic in a vehicle surveillance system. Identifying vehicle make and model is a challenging task due to intraclass variation, view-point variation, and different illumination conditions (Hassan et al., 2021). In this domain, many datasets regarding car make and model e.g. Stanford Car (Krause et al., 2013), VMMRdB (Tafazzoli et al., 2017, Yang et al., 2015), have already been experimented with by different researchers. However, most of the images in these datasets are high-quality images with no illumination conditions. Further, these images are collected through web crawling or image scraping. This enabled the researchers to achieve good results using deep learning models (Luo et al., 2015). In this article, we have presented an image dataset of 3847 images, designed from high-resolution (1920 1080) videos collected from camera units installed on a highway at different viewpoints with variable frame rates. This helped in collecting images demonstrating a real-world scenario and made this dataset more challenging. Due to consideration of different viewpoints and illumination effects, the dataset will help researchers to evaluate their machine learning models on realworld data (Manzoor et al., 2019).http://www.sciencedirect.com/science/article/pii/S2352340922003171Image data-setVehicle model recognition deep learningMachine learning
spellingShingle Mohsin Ali
Muhammad Atif Tahir
Muhammad Nouman Durrani
Vehicle images dataset for make and model recognition
Data in Brief
Image data-set
Vehicle model recognition deep learning
Machine learning
title Vehicle images dataset for make and model recognition
title_full Vehicle images dataset for make and model recognition
title_fullStr Vehicle images dataset for make and model recognition
title_full_unstemmed Vehicle images dataset for make and model recognition
title_short Vehicle images dataset for make and model recognition
title_sort vehicle images dataset for make and model recognition
topic Image data-set
Vehicle model recognition deep learning
Machine learning
url http://www.sciencedirect.com/science/article/pii/S2352340922003171
work_keys_str_mv AT mohsinali vehicleimagesdatasetformakeandmodelrecognition
AT muhammadatiftahir vehicleimagesdatasetformakeandmodelrecognition
AT muhammadnoumandurrani vehicleimagesdatasetformakeandmodelrecognition