Attend, Distill, Detect: Attention-aware Entropy Distillation for Anomaly Detection
Sushovan Jena, Vishwas Saini, Ujjwal Shaw, Pavitra Jain, Abhay Singh, Raihal, Anoushka Banerjee, Sharad Joshi, Ananth Ganesh, Arnav Bhavsar

TL;DR
This paper introduces a novel attention-aware entropy distillation method with a specialized module to improve multi-class anomaly detection, achieving higher accuracy and efficiency in industrial applications.
Contribution
The paper proposes the DCAM module that enhances knowledge distillation by reducing cross-class interference and improving scale-invariance in multi-class anomaly detection.
Findings
Achieved 3.92% performance gain over multi-class baseline.
Effectively reduces irrelevant information during training.
Maintains low latency during inference.
Abstract
Unsupervised anomaly detection encompasses diverse applications in industrial settings where a high-throughput and precision is imperative. Early works were centered around one-class-one-model paradigm, which poses significant challenges in large-scale production environments. Knowledge-distillation based multi-class anomaly detection promises a low latency with a reasonably good performance but with a significant drop as compared to one-class version. We propose a DCAM (Distributed Convolutional Attention Module) which improves the distillation process between teacher and student networks when there is a high variance among multiple classes or objects. Integrated multi-scale feature matching strategy to utilise a mixture of multi-level knowledge from the feature pyramid of the two networks, intuitively helping in detecting anomalies of varying sizes which is also an inherent problem in…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Neural Networks and Applications
MethodsAverage Pooling · Max Pooling · Global Average Pooling · Kaiming Initialization · Convolution · Bitcoin Customer Service Number +1-833-534-1729
