Violence Detection in Indoor Surveillance Cameras Using Motion Trajectory and Differential Histogram of Optical Flow

Abstract

Intelligent surveillance systems and automatic detection of abnormal behaviors have become a major problem in recent years due to increased security concerns. Violence behaviors have a vast diversity so that distinction between them is the most challenging problem in video-surveillance systems. In recent works, introducing unique and discriminative feature for representing violence behaviors is needed strongly. In this paper, a novel violence detection method has been proposed which is based on combination of motion trajectory and spatio-temporal features. A dense sampling has been carried out on spatiotemporal volumes along target’s path to extract Differential Histogram of Optical Flow (DHOF) and standard deviation of motion trajectory features. These novel features were employed to train a Support Vector Machine (SVM) to classify video volumes into two normal and violence categories. Experimental results demonstrate that the proposed method outperforms other state-of-the-art violence detection methods and achieves 91 % accuracy for detection result.

Publication
In 2018 8th International Conference on Computer and Knowledge Engineering (ICCKE)
Tahereh Zarrat Ehsan
Tahereh Zarrat Ehsan
Artificial Intelligence Enthusiast and Researcher

My research interests include Machine Learning, Deep Learning and Computer Vision.