Abstract

The increasing demand for surveillance systems has resulted in an unprecedented rise in the volume of video data being generated daily. The volume and frequency of the generation of video streams make it both impractical as well as inefficient to manually monitor them to keep track of abnormal events as they occur infrequently. To alleviate these difficulties through intelligent surveillance systems, several vision-based methods have appeared in the literature to detect abnormal events or behaviors. In this area, convolutional neural networks (CNNs) have also been frequently applied due to their prevalence in the related domain of general action recognition and classification. Although the existing approaches have achieved high detection rates for specific abnormal behaviors, more inclusive methods are expected. This paper presents a CNN-based approach that efficiently detects and classifies if a video involves the abnormal human behaviors of falling, loitering, and violence within uncrowded scenes. The approach implements a two-stream architecture using two separate 3D CNNs to accept a video and an optical flow stream as input to enhance the prediction performance. After applying transfer learning, the model was trained on a specialized dataset corresponding to each abnormal behavior. The experiments have shown that the proposed approach can detect falling, loitering, and violence with an accuracy of up to 99%, 97%, and 98%, respectively. The model achieved state-of-the-art results and outperformed the existing approaches.

Highlights

  • Abnormal behavior detection, which can be viewed as a specific issue of human action recognition, is considered essential to ensure both indoor and outdoor safety

  • Unlike previous studies that focused on one specific behavior, this study proposes a new model that combines the detection of all three abnormal behaviors commonly found in uncrowded scenes

  • The distinctive movement patterns involved in each act must be specified in detail and ample examples of each kind must be provided to the classification system so that it learns features related to each behavior correctly

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Summary

Introduction

Abnormal behavior detection, which can be viewed as a specific issue of human action recognition, is considered essential to ensure both indoor and outdoor safety. Factors such as huge amounts of stored data or prolonged periods of its production often lead to a lack of efficiency in its treatment. The second challenge relates to the essential similarity in the acts of different behaviors leading to wrong predictions Though such problems are inherent in the joint detection of various behaviors, they must be alleviated as much as possible by specifying the overlaps and providing examples that enable the system to distinguish features in apparently similar activities. Each behavior is defined by specifying the representative movement patterns involved in it followed by the definition of overlapping patterns

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