Publications des scientifiques de l'IRD

Ballhausen Sampaio I.G., Viterbo J., Guerin Joris. (2023). Improving robustness of industrial object detection by automatic generation of synthetic images from CAD models. Computational Intelligence, 39 (3), 415-432. ISSN 0824-7935.

Titre du document
Improving robustness of industrial object detection by automatic generation of synthetic images from CAD models
Année de publication
2023
Type de document
Article référencé dans le Web of Science WOS:000959164100001
Auteurs
Ballhausen Sampaio I.G., Viterbo J., Guerin Joris
Source
Computational Intelligence, 2023, 39 (3), 415-432 ISSN 0824-7935
Object detection (OD) is used for visual quality control in factories. Images that compose training datasets are often collected directly from the production line and labeled with bounding boxes manually. Such data represent well the inference context but might lack diversity, implying a risk of overfitting. To address this issue, we propose a dataset construction method based on an automated pipeline, which receives a CAD model of an object and returns a set of realistic synthetic labeled images (code publicly available). Our approach can be easily used by non-expert users and is relevant for industrial applications, where CAD models are widely available. We performed experiments to compare the use of datasets obtained by the two different ways - collecting and labeling real images or applying the proposed automated pipeline - in the classification of five different industrial parts. To ensure that both approaches can be used without deep learning expertise, all training parameters were kept fixed during these experiments. In our results, both methods were successful for some objects but failed for others. However, we have shown that the combined use of real and synthetic images led to better results. This finding has the potential to make industrial OD models more robust to poor data collection and labeling errors, without increasing the difficulty of the training process.
Plan de classement
Informatique [122]
Localisation
Fonds IRD [F B010090490]
Identifiant IRD
fdi:010090490
Contact
  • Coordonnées :
    Mission Science Ouverte (MSO)
    IRD - Délégation régionale Île-de-France & Ouest
    Campus Condorcet - Hôtel à projets
    8 cours des Humanités - 93322 Aubervilliers Cedex
    Horizon Pleins textes
    Aide
  •