IA-SSLM: Irregularity-Aware Semi-Supervised Deep Learning Model for Analyzing Unusual Events in Crowds
Permanent link
https://hdl.handle.net/10037/24302Date
2021-05-17Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
Analyzing unusual events is significantly important for video surveillance to ensure people
safety. These events are characterized by irregular patterns that do not conform to the expected behavior
in the surveillance scenes. We present a novel irregularity-aware semi-supervised deep learning model
(IA-SSLM) for detection of unusual events. While most existing works depend on the availability of
large amount of labeled data for training, our proposed method utilizes a semi-supervised deep model
to automatically learn feature representations from limited number of labeled data samples. Our method
extracts meaningful information from both labeled and unlabeled data during the training stage to improve
the performance. For this purpose, we explore the concept of consistency regularization and entropy
minimization to output confident predictions on unlabeled data. For experimental analysis, we consider
various standard and diverse datasets. The results show that our IA-SSLM method outperforms several
reference methods using different performance metrics.
Publisher
IEEECitation
Aljaloud, Ullah. IA-SSLM: Irregularity-Aware Semi-Supervised Deep Learning Model for Analyzing Unusual Events in Crowds. IEEE Access. 2021;9:73327-73334Metadata
Show full item recordCollections
Copyright 2021 The Author(s)