Abstract

Citizen safety in modern urban environments is an important aspect of life quality. Implementation of a smart city approach to video surveillance depends heavily on the capability of gathering and processing huge amounts of live urban data. Analyzing data from high bandwidth surveillance video streams provided by large size distributed sensor networks is particularly challenging. We propose here an efficient method for automatic violent behavior detection designed for video sensor networks. Known solutions to real-time violence detection are not suitable for implementation in a resource-constrained environment due to the high processing power requirements. Our algorithm achieves real-time processing on a Raspberry PI-embedded architecture. To ensure separation of temporal and spatial information processing we employ a computationally effective cascaded approach. It consists of a deep neural network followed by a time domain classifier. In contrast with current approaches, the deep neural network input is fed exclusively with motion vector features extracted directly from the MPEG encoded video stream. As proven by results, we achieve state-of-the-art performance, while running on a low computational resources embedded architecture.

Highlights

  • The Smart City approach is considered as a promising solution to the problems related to enhanced urbanization [1]

  • We propose here a distributed surveillance solution for violence detection designed for a typical sensor network environment

  • Toone stabilize output and to make it as similar as possible to human judgment, we propose a cascade of two temporal filters

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Summary

Introduction

The Smart City approach is considered as a promising solution to the problems related to enhanced urbanization [1]. Its implementation depends on the capability of gathering and analyzing huge amounts of various live urban data. They are collected mainly from public and private sensors networks run by various agencies or private bodies. Video streams especially provide valuable information collected directly from the street. Smart city surveillance covers a large spectrum of applications, which include, among others, urban traffic monitoring systems [2], building structural damage detection [3], violence detection [4], and disasters management [5]. An important research effort was directed to developing methods to process automatically such information in order to monitor abnormal behavior, and to discard safely irrelevant information

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