Abstract

Abnormal activity detection plays a crucial role in surveillance applications, and a surveillance system that can perform robustly in an academic environment has become an urgent need. In this paper, we propose a novel framework for an automatic real-time video-based surveillance system which can simultaneously perform the tracking, semantic scene learning, and abnormality detection in an academic environment. To develop our system, we have divided the work into three phases: preprocessing phase, abnormal human activity detection phase, and content-based image retrieval phase. For motion object detection, we used the temporal-differencing algorithm and then located the motions region using the Gaussian function. Furthermore, the shape model based on OMEGA equation was used as a filter for the detected objects (i.e., human and non-human). For object activities analysis, we evaluated and analyzed the human activities of the detected objects. We classified the human activities into two groups: normal activities and abnormal activities based on the support vector machine. The machine then provides an automatic warning in case of abnormal human activities. It also embeds a method to retrieve the detected object from the database for object recognition and identification using content-based image retrieval. Finally, a software-based simulation using MATLAB was performed and the results of the conducted experiments showed an excellent surveillance system that can simultaneously perform the tracking, semantic scene learning, and abnormality detection in an academic environment with no human intervention.

Highlights

  • Cameras attached to monitor screens are generally a traditional video surveillance system

  • We propose a novel framework for an automatic real-time video-based surveillance system which can simultaneously perform the tracking, semantic scene learning, and abnormality detection in an academic environment

  • We classified the human activities into two groups: normal activities and abnormal activities based on the support vector machine

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Summary

Introduction

Cameras attached to monitor screens are generally a traditional video surveillance system. One weakness of this methodology is that operators are not ready to counteract the incidents or limit their harm because the recordings are only watched afterward Another limitation is that it requires a lot of time to search for the right video pictures, when the suspect is at the scene long before the incident takes place and when there are many cameras involved [3,4,5]. Because of these limitations, there is a need for a technique or method that can automatically detect and analyze human activities. Some of the relevant works in the field of motion detection and image compression are mentioned

Related work
Abnormal activity detection phase
Preprocessing phase
Human activity analysis
Alarm triggering
Content-based image retrieval phase
Conclusion
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