Development of an algorithm for abnormal human behavior detection in intelligent video surveillance system

Author:

Zh Satybaldina D,Glazyrina N S,Kalymova K A,Stepanov V S

Abstract

Abstract The aim of the work is to develop algorithms for analyzing video data in real time based on computer vision methods, as well as deep learning technologies for artificial neural networks for abnormal human behavior recognition near critical facilities using ATMs as an example. The article provides an overview of the initial research aimed at the choice of data capture devices, neural network architecture, software implementation and selection of experimental conditions (distance and illumination). Static and dynamic hand gestures were used as object’s movements. Experimental results show that using the Intel RealSense D435 Depth Camera provides more accurate dynamic gesture recognition under different experimental conditions.

Publisher

IOP Publishing

Subject

General Medicine

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