• English
  • Deutsch
  • Log In
    Password Login
    Research Outputs
    Fundings & Projects
    Researchers
    Institutes
    Statistics
Repository logo
Fraunhofer-Gesellschaft
  1. Home
  2. Fraunhofer-Gesellschaft
  3. Artikel
  4. Multi-Perspective Anomaly Detection
 
  • Details
  • Full
Options
2021
Journal Article
Title

Multi-Perspective Anomaly Detection

Abstract
Anomaly detection is a critical problem in the manufacturing industry. In many applications, images of objects to be analyzed are captured from multiple perspectives which can be exploited to improve the robustness of anomaly detection. In this work, we build upon the deep support vector data description algorithm and address multi-perspective anomaly detection using three different fusion techniques, i.e., early fusion, late fusion, and late fusion with multiple decoders. We employ different augmentation techniques with a denoising process to deal with scarce one-class data, which further improves the performance (ROC AUC =80%). Furthermore, we introduce the dices dataset, which consists of over 2000 grayscale images of falling dices from multiple perspectives, with 5% of the images containing rare anomalies (e.g., drill holes, sawing, or scratches). We evaluate our approach on the new dices dataset using images from two different perspectives and also benchmark on the standard MNIST dataset. Extensive experiments demonstrate that our proposed multi-perspective approach exceeds the state-of-the-art single-perspective anomaly detection on both the MNIST and dices datasets. To the best of our knowledge, this is the first work that focuses on addressing multi-perspective anomaly detection in images by jointly using different perspectives together with one single objective function for anomaly detection.
Author(s)
Jakob, Peter
Fraunhofer-Institut für Physikalische Messtechnik IPM  
Madan, Manav
Fraunhofer-Institut für Physikalische Messtechnik IPM  
Schmid-Schirling, Tobias  
Fraunhofer-Institut für Physikalische Messtechnik IPM  
Valada, Abhinav
Univ. Freiburg
Journal
Sensors. Online journal  
Open Access
DOI
10.3390/s21165311
Additional full text version
Landing Page
Language
English
Fraunhofer-Institut für Physikalische Messtechnik IPM  
Keyword(s)
  • One-Class Learning

  • data fusion

  • Multi-Perspective

  • anomaly detection

  • novelty detection

  • deep learning

  • Cookie settings
  • Imprint
  • Privacy policy
  • Api
  • Contact
© 2024