Deep learning model based on cascaded autoencoders and one‐class learning for detection and localization of anomalies from surveillance videos

Abstract Due to the need for increased security measures for monitoring and safeguarding the activities, video anomaly detection is considered as one of the significant research aspects in the domain of computer vision. Assigning human personnel to continuously check the surveillance videos for find...

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Bibliographic Details
Main Authors: Karishma Pawar, Vahida Attar
Format: Article
Language:English
Published: Wiley 2022-07-01
Series:IET Biometrics
Subjects:
Online Access:https://doi.org/10.1049/bme2.12064
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Summary:Abstract Due to the need for increased security measures for monitoring and safeguarding the activities, video anomaly detection is considered as one of the significant research aspects in the domain of computer vision. Assigning human personnel to continuously check the surveillance videos for finding suspicious activities such as violence, robbery, wrong U‐turns, to mention a few, is a laborious and error‐prone task. It gives rise to the need for devising automated video surveillance systems ensuring security. Motivated by the same, this paper addresses the problem of detection and localization of anomalies from surveillance videos using pipelined deep autoencoders and one‐class learning. Specifically, we used a convolutional autoencoder and a sequence‐to‐sequence long short‐term memory autoencoder in a pipelined fashion for spatial and temporal learning of the videos, respectively. The authors followed the principle of one‐class classification for training the model on normal data and testing it on anomalous testing data. The authors achieved a reasonably significant performance in terms of an equal error rate and the time required for anomaly detection and localization comparable to standard benchmarked approaches, thus, qualifies to work in a near‐real‐time manner for anomaly detection and localization.
ISSN:2047-4938
2047-4946