作者
Pratibha Kumari, Priyankar Choudhary, Vinit Kujur, Pradeep K Atrey, Mukesh Saini
发表日期
2024/4/1
期刊
Signal Processing: Image Communication
卷号
123
页码范围
117100
出版商
Elsevier
简介
Anomaly detection in multimedia datasets is a widely studied area. Yet, the concept drift challenge in data has been ignored or poorly handled by the majority of the anomaly detection frameworks. The state-of-the-art approaches assume that the data distribution at training and deployment time will be the same. However, due to various real-life environmental factors, the data may encounter drift in its distribution or can drift from one class to another in the late future. Thus, a one-time trained model might not perform adequately. In this paper, we systematically investigate the effect of concept drift on various detection models and propose a modified Adaptive Gaussian Mixture Model (AGMM) based framework for anomaly detection in multimedia data. In contrast to the baseline AGMM, the proposed extension of AGMM remembers the past for a longer period in order to handle the drift better. Extensive experimental …
引用总数
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P Kumari, P Choudhary, V Kujur, PK Atrey, M Saini - Signal Processing: Image Communication, 2024