2023
DOI: 10.14569/ijacsa.2023.0141279
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Investigating of Deep Learning-based Approaches for Anomaly Detection in IoT Surveillance Systems

Jianchang HUANG,
Yakun CAI,
Tingting SUN

Abstract: Anomaly detection plays a crucial role in ensuring the security and integrity of Internet of Things (IoT) surveillance systems. Nowadays, deep learning methods have gained significant popularity in anomaly detection because of their ability to learn and extract intricate features from complex data automatically. However, despite the advancements in deep learning-based anomaly detection, several limitations and research gaps exist. These include the need for improving the interpretability of deep learning model… Show more

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