Violence Detection using Embedded GPU

Author:

Tharali Sagar R.,Wakchaure Gaurav S.,Shirsat Durvesh S.,Singhaniya Navin G.

Abstract

Since the CCTV cameras been introduced in this world, society has started to depend heavily on the usage of this technology for the high security purposes in most of the public and private areas. It is convenient to use these CCTV footages in courts as evidence and has been beneficial many times. But these footages are given priority and checked later when the incident has already taken place and that too after some period of time and not in real-time of happening. The screening of the multiple CCTV footages on a single monitor is done with very less efficiency as the ratio of number of CCTV footages to that of number of surveillance staff is very high. Also, the human unreliable supervision due to many reasons like tiredness from physical or mental effort, worker boredom, or discontinuous observation make the surveillance more inefficient. To address the issue and automatically detect the violent scenes using surveillance cameras and Embedded GPU in real-time we have developed this project for the benefit of our society. As the alert is generated in real-time, the security can take action immediately to prevent any further damage or mishappening in the crowd. Our primary objective is to automatically differentiate between violent activities and non-violent activities through CCTV surveillance cameras and automatically display the security alert on the screen as soon as any violent activity is captured and thus ensuring the safety of our society.

Publisher

EDP Sciences

Subject

General Medicine

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Cited by 2 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Optical Flow based method for Violence Detection;2023 First International Conference on Cyber Physical Systems, Power Electronics and Electric Vehicles (ICPEEV);2023-09-28

2. A Skeleton-Based Deep Learning Approach for Recognizing Violent Actions in Surveillance Scenarios;Communications in Computer and Information Science;2022

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