Affiliations 

  • 1 Department of Electrical Engineering, Mercu Buana University, Jakarta 11650, Indonesia
  • 2 National Center for High-Performance Computing, National Applied Research Laboratories, Hsinchu 300, Taiwan
  • 3 Department of Computer Science, University Tunku Abdul Rahman, Kampar 31900, Malaysia
  • 4 Department of Electrical and Communication Engineering, Yuan Ze University, Taoyuan 320, Taiwan
Sensors (Basel), 2023 Jan 15;23(2).
PMID: 36679785 DOI: 10.3390/s23020988

Abstract

Anomalies are a set of samples that do not follow the normal behavior of the majority of data. In an industrial dataset, anomalies appear in a very small number of samples. Currently, deep learning-based models have achieved important advances in image anomaly detection. However, with general models, real-world application data consisting of non-ideal images, also known as poison images, become a challenge. When the work environment is not conducive to consistently acquiring a good or ideal sample, an additional adaptive learning model is needed. In this work, we design a potential methodology to tackle poison or non-ideal images that commonly appear in industrial production lines by enhancing the existing training data. We propose Hierarchical Image Transformation and Multi-level Features (HIT-MiLF) modules for an anomaly detection network to adapt to perturbances from novelties in testing images. This approach provides a hierarchical process for image transformation during pre-processing and explores the most efficient layer of extracted features from a CNN backbone. The model generates new transformations of training samples that simulate the non-ideal condition and learn the normality in high-dimensional features before applying a Gaussian mixture model to detect the anomalies from new data that it has never seen before. Our experimental results show that hierarchical transformation and multi-level feature exploration improve the baseline performance on industrial metal datasets.

* Title and MeSH Headings from MEDLINE®/PubMed®, a database of the U.S. National Library of Medicine.