@inproceedings{2961fb7171b04f64a1bd79f8ddd8c69f,
title = "Crowd anomaly detection for automated video surveillance",
abstract = "Video-based crowd behaviour detection aims at tackling challenging problems such as automating and identifying changing crowd behaviours under complex real life situations. In this paper, real-time crowd anomaly detection algorithms have been investigated. Based on the spatio-temporal video volume concept, an innovative spatio-temporal texture model has been proposed in this research for its rich crowd pattern characteristics. Through extracting and integrating those crowd textures from surveillance recordings, a redundancy wavelet transformation-based feature space can be deployed for behavioural template matching. Experiment shows that the abnormality appearing in crowd scenes can be identified in a real-time fashion by the devised method. This new approach is envisaged to facilitate a wide spectrum of crowd analysis applications through automating current Closed-Circuit Television (CCTV)-based surveillance systems.",
keywords = "Crowd behaviour, Optical flow, Spatiotemporal texture, Video surveillance, Wavelet transformation",
author = "Jing Wang and Zhijie Xu",
year = "2015",
doi = "10.1049/ic.2015.0102",
language = "English",
isbn = "9781785611315",
series = "IET Seminar Digest",
publisher = "Institution of Engineering and Technology",
number = "5",
booktitle = "IET Seminar Digest",
edition = "5",
note = "6th International Conference on Imaging for Crime Prevention and Detection, ICDP 2015 ; Conference date: 15-07-2015 Through 17-07-2015",
}