JOURNAL ARTICLE

Self-Supervised Masked Convolutional Transformer Block for Anomaly Detection

Neelu MadanNicolae-Cătălin RisteaRadu Tudor IonescuKamal NasrollahiFahad Shahbaz KhanThomas B. MoeslundMubarak Shah

Year: 2023 Journal:   IEEE Transactions on Pattern Analysis and Machine Intelligence Vol: 46 (1)Pages: 525-542   Publisher: IEEE Computer Society

Abstract

Anomaly detection has recently gained increasing attention in the field of computer vision, likely due to its broad set of applications ranging from product fault detection on industrial production lines and impending event detection in video surveillance to finding lesions in medical scans. Regardless of the domain, anomaly detection is typically framed as a one-class classification task, where the learning is conducted on normal examples only. An entire family of successful anomaly detection methods is based on learning to reconstruct masked normal inputs (e.g. patches, future frames, etc.) and exerting the magnitude of the reconstruction error as an indicator for the abnormality level. Unlike other reconstruction-based methods, we present a novel self-supervised masked convolutional transformer block (SSMCTB) that comprises the reconstruction-based functionality at a core architectural level. The proposed self-supervised block is extremely flexible, enabling information masking at any layer of a neural network and being compatible with a wide range of neural architectures. In this work, we extend our previous self-supervised predictive convolutional attentive block (SSPCAB) with a 3D masked convolutional layer, a transformer for channel-wise attention, as well as a novel self-supervised objective based on Huber loss. Furthermore, we show that our block is applicable to a wider variety of tasks, adding anomaly detection in medical images and thermal videos to the previously considered tasks based on RGB images and surveillance videos. We exhibit the generality and flexibility of SSMCTB by integrating it into multiple state-of-the-art neural models for anomaly detection, bringing forth empirical results that confirm considerable performance improvements on five benchmarks: MVTec AD, BRATS, Avenue, ShanghaiTech, and Thermal Rare Event.

Keywords:
Computer science Anomaly detection Artificial intelligence Convolutional neural network Pattern recognition (psychology) Supervised learning Deep learning Block (permutation group theory) Transformer Computer vision Machine learning Artificial neural network Engineering Mathematics

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92
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22.99
FWCI (Field Weighted Citation Impact)
119
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0.99
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Citation History

Topics

Anomaly Detection Techniques and Applications
Physical Sciences →  Computer Science →  Artificial Intelligence
Digital Media Forensic Detection
Physical Sciences →  Computer Science →  Computer Vision and Pattern Recognition
Network Security and Intrusion Detection
Physical Sciences →  Computer Science →  Computer Networks and Communications
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