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Adjacent Image Augmentation and Its Framework for Self-Supervised Learning in Anomaly Detection.

Gi Seung Kwon1, Yong Suk Choi1

  • 1Department of Computer Science, Hanyang University, Seoul 04763, Republic of Korea.

Sensors (Basel, Switzerland)
|September 14, 2024
PubMed
Summary
This summary is machine-generated.

A novel adjacent augmentation technique enhances deep learning anomaly detection by creating synthetic anomalies and normal data. This method effectively addresses class imbalance and improves detection accuracy, achieving perfect scores on the MVTec-AD dataset.

Keywords:
anomaly detectionautomatic optical inspectionrepresentation learning

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Area of Science:

  • Computer Vision
  • Machine Learning
  • Deep Learning

Background:

  • Deep neural networks are advancing anomaly detection.
  • Training requires normal and anomalous data, often causing class imbalance due to scarce anomaly data.
  • Traditional augmentation methods struggle to preserve correlations between anomalies and their context.

Purpose of the Study:

  • To introduce an adjacent augmentation technique for generating synthetic anomaly images.
  • To preserve object shapes while distorting contours for enhanced correlation.
  • To improve anomaly detection performance and mitigate class imbalance.

Main Methods:

  • Adjacent augmentation generates synthetic anomaly images by preserving object shapes and distorting contours.
  • Synthetic normal images are generated to learn detailed normal data features.
  • A framework pairs training images with synthetic normal (positive) and anomaly (negative) images within batches.

Main Results:

  • Adjacent augmentation captures high-quality anomaly features, outperforming existing methods in AU-ROC and AU-PR scores.
  • The technique produces synthetic normal images, reducing sensitivity to minor variations.
  • Achieved perfect AU-ROC and AU-PR scores (100%) using ResNet50 on the MVTec-AD bottle dataset.

Conclusions:

  • Adjacent augmentation effectively compensates for limited anomalous features and mitigates class imbalance.
  • The method enhances the ability to distinguish between normal and anomalous features.
  • Further research is exploring the impact of anomalous pattern size on detection performance.