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Published July 21, 2023 | Version 0.1.0
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The Automotive Visual Inspection Dataset (AutoVI): A Genuine Industrial Production Dataset for Unsupervised Anomaly Detection (v.0)

  • 1. Roberval, Université de technologie de Compiègne
  • 2. Renault Group
  • 3. Heudiasyc, UMR CNRS 7253, Université de technologie de Compiègne

Description

 

 

NOTE: This version is deprecated, please use v1.0.0 instead!

 

 

Modern industrial production lines must be set up with robust defect inspection modules that are able to withstand high product variability. This means that in a context of industrial production, new defects that are not yet known may appear, and must therefore be identified.

On industrial production lines, the typology of potential defects is vast (texture, part failure, logical defects, etc.). Inspection systems must therefore be able to detect non-listed defects, i.e. not-yet-observed defects upon the development of the inspection system. To solve this problem, research and development of unsupervised AI algorithms on real-world data is required.

Renault Group and the Université de technologie de Compiègne (Roberval and Heudiasyc Laboratories) have jointly developed the Automotive Visual Inspection Dataset (AutoVI), the purpose of which is to be used as a scientific benchmark to compare and develop advanced unsupervised anomaly detection algorithms under real production conditions. The images were acquired on Renault Group's automotive production lines, in a genuine industrial production line environment, with variations in brightness and lighting on constantly moving components. This dataset is representative of actual data acquisition conditions on automotive production lines.

The dataset contains 6530 images, split into 2462 training images and 4068 testing images.

Disclaimer
All defects shown were intentionally created on Renault Group's production lines for the purpose of producing this dataset. The images were examined and labeled by Renault Group experts, and all defects were corrected after shooting.

License
Copyright © 2023 Renault Group

This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License. To view a copy of the license, visit https://creativecommons.org/licenses/by-nc-sa/4.0/.

For using the data in a way that falls under the commercial use clause of the license, please contact us.

Attribution
Please use the following for citing the dataset in scientific work:
Carvalho, P., Durupt, A., Lafou, M., Grandvalet, Y., & Leblanc, A. (2023). The Automotive Visual Inspection Dataset (AutoVI): A Genuine Industrial Production Dataset for Unsupervised Anomaly Detection (v.0) [Dataset]. https://doi.org/10.5281/zenodo.8099580

Contact
If you have any questions or remarks about this dataset, please contact us at philippe.carvalho@utc.fr, alexandre.durupt@utc.fr, meriem.lafou@renault.com, yves.grandvalet@utc.fr, antoine.leblanc@renault.com.

Files

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Additional details

Funding

Agence Nationale de la Recherche
TEMIS - Automatic visual inspection using Machines learing : applications for industrie 4.0 ANR-20-CE10-0004