Automatic detection and classification of manufacturing defects in metal boxes using deep neural networks.

Journal: PloS one
Published Date:

Abstract

This paper develops a new machine vision framework for efficient detection and classification of manufacturing defects in metal boxes. Previous techniques, which are based on either visual inspection or on hand-crafted features, are both inaccurate and time consuming. In this paper, we show that by using autoencoder deep neural network (DNN) architecture, we are able to not only classify manufacturing defects, but also localize them with high accuracy. Compared to traditional techniques, DNNs are able to learn, in a supervised manner, the visual features that achieve the best performance. Our experiments on a database of real images demonstrate that our approach overcomes the state-of-the-art while remaining computationally competitive.

Authors

  • Oumayma Essid
    CNRS LIMOS UMR 6158, University of Clermont Auvergne, France.
  • Hamid Laga
    School of Engineering and Information Technology, Murdoch University, Perth, Australia.
  • Chafik Samir
    CNRS LIMOS UMR 6158, University of Clermont Auvergne, France.