Litcius/Paper detail

A New GAN-Based Anomaly Detection (GBAD) Approach for Multi-Threat Object Classification on Large-Scale X-Ray Security Images

Joanna Kazzandra Dumagpi, Wooyoung Jung, Yong-Jin Jeong

2020IEICE Transactions on Information and Systems17 citationsDOIOpen Access PDF

Abstract

Threat object recognition in x-ray security images is one of the important practical applications of computer vision. However, research in this field has been limited by the lack of available dataset that would mirror the practical setting for such applications. In this paper, we present a novel GAN-based anomaly detection (GBAD) approach as a solution to the extreme class-imbalance problem in multi-label classification. This method helps in suppressing the surge in false positives induced by training a CNN on a non-practical dataset. We evaluate our method on a large-scale x-ray image database to closely emulate practical scenarios in port security inspection systems. Experiments demonstrate improvement against the existing algorithm.

Topics & Concepts

Computer scienceAnomaly detectionFalse positive paradoxField (mathematics)Scale (ratio)Object (grammar)Artificial intelligenceImage (mathematics)Object detectionPattern recognition (psychology)Class (philosophy)Data miningComputer visionPhysicsQuantum mechanicsPure mathematicsMathematicsAnomaly Detection Techniques and ApplicationsCOVID-19 diagnosis using AIAdversarial Robustness in Machine Learning