Universiti Teknologi Malaysia Institutional Repository

Abnormal behavior detection using sparse representations through sequential generalization of k-means

Al-Dhamari, Ahlam and Sudirman, Rubita and Mahmood, Nasrul Humaimi (2021) Abnormal behavior detection using sparse representations through sequential generalization of k-means. Turkish Journal of Electrical Engineering and Computer Sciences, 29 (1). pp. 152-168. ISSN 1300-0632

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Official URL: http://dx.doi.org/10.3906/ELK-1904-187

Abstract

The potential capability to automatically detect and classify human behavior as either normal or abnormal events is an important aspect in intelligent monitoring/surveillance systems. This study presents a new high-performance framework for detecting behavioral abnormalities in video streams by utilizing only the patterns for normal behaviors. In this paper, we used a hybrid descriptor, called a foreground optical flow energy (FGOFE), which makes use of two effective motion techniques in order to extract the most descriptive spatiotemporal features in video sequences. The FGOFE descriptor can effectively capture both weak and sudden incidents in a scene. The sequential generalization of k-means (SGK) algorithm was applied in this study to generate the dictionary set that can sparsely represent each signal; in addition, the orthogonal matching pursuit algorithm was utilized to recover high-dimensional sparse features when referring to a few numbers of noisy linear measurements. Using the SGK allows gaining a less complex and quicker implementation compared to other dictionary learning methods. We conducted comprehensive experiments to analyze and evaluate the ability of our framework in detecting abnormalities using several public benchmarks, which contain different abnormal samples and various contextual compositions. The experimental results show that the proposed framework achieved high detection accuracy (up to 95.33%) and low frame processing time (31 ms on average) compared to the relevant related work.

Item Type:Article
Uncontrolled Keywords:principal component analysis, sequential generalization of kmeans, sparse representation
Subjects:T Technology > TK Electrical engineering. Electronics Nuclear engineering
Divisions:Electrical Engineering
ID Code:94025
Deposited By: Yanti Mohd Shah
Deposited On:28 Feb 2022 13:31
Last Modified:28 Feb 2022 13:31

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