DVM-CAR: a large-scale automotive dataset for visual marketing research and applications
DVM-CAR: a large-scale automotive dataset for visual marketing research and applications
There is a growing interest in product aesthetics analytics and design. However, the lack of available large-scale data that covers various variables and information is one of the biggest challenges faced by analysts and researchers. In this paper, we present our multidisciplinary initiative of developing a comprehensive automotive dataset from different online sources and formats. Specifically, the created dataset contains 1.4 million images from 899 car models and their corresponding model specifications and sales information over more than ten years in the UK market. Our work makes significant contributions to: (i) research and applications in the automotive industry; (ii) big data creation and sharing; (iii) database design; and (iv) data fusion. Apart from our motivation, technical details and data structure, we further present three simple examples to demonstrate how our data can be used in business research and applications.
4140-4147
Huang, Jingmin
23537e02-99c6-49fc-8cc2-c4e4542af014
Chen, Bowei
f953c135-5a8f-4353-9658-68575498d7f6
Luo, Lan
3f457ec9-48d7-426d-9292-3eb50f539cd9
Yue, Shigang
d0aa851c-4db3-4791-ad4f-8ab1fc7c414d
Ounis, Iadh
c7311ccf-1b03-42af-9945-5cf79a967993
26 January 2022
Huang, Jingmin
23537e02-99c6-49fc-8cc2-c4e4542af014
Chen, Bowei
f953c135-5a8f-4353-9658-68575498d7f6
Luo, Lan
3f457ec9-48d7-426d-9292-3eb50f539cd9
Yue, Shigang
d0aa851c-4db3-4791-ad4f-8ab1fc7c414d
Ounis, Iadh
c7311ccf-1b03-42af-9945-5cf79a967993
Huang, Jingmin, Chen, Bowei, Luo, Lan, Yue, Shigang and Ounis, Iadh
(2022)
DVM-CAR: a large-scale automotive dataset for visual marketing research and applications.
In IEEE International Conference on Big Data.
IEEE.
.
(doi:10.1109/BigData55660.2022.10020634).
Record type:
Conference or Workshop Item
(Paper)
Abstract
There is a growing interest in product aesthetics analytics and design. However, the lack of available large-scale data that covers various variables and information is one of the biggest challenges faced by analysts and researchers. In this paper, we present our multidisciplinary initiative of developing a comprehensive automotive dataset from different online sources and formats. Specifically, the created dataset contains 1.4 million images from 899 car models and their corresponding model specifications and sales information over more than ten years in the UK market. Our work makes significant contributions to: (i) research and applications in the automotive industry; (ii) big data creation and sharing; (iii) database design; and (iv) data fusion. Apart from our motivation, technical details and data structure, we further present three simple examples to demonstrate how our data can be used in business research and applications.
This record has no associated files available for download.
More information
Published date: 26 January 2022
Identifiers
Local EPrints ID: 500003
URI: http://eprints.soton.ac.uk/id/eprint/500003
PURE UUID: 55ff77a2-0fe3-4f06-b617-2086a27f71cb
Catalogue record
Date deposited: 11 Apr 2025 16:33
Last modified: 26 Apr 2025 02:14
Export record
Altmetrics
Contributors
Author:
Jingmin Huang
Author:
Bowei Chen
Author:
Lan Luo
Author:
Shigang Yue
Author:
Iadh Ounis
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics