文章摘要
胡石,王彬,吴志光.基于多通信机制与机器视觉的智慧小区视频监控系统[J].井冈山大学自然版,2019,40(2):52-57
基于多通信机制与机器视觉的智慧小区视频监控系统
INTELLIGENT COMMUNITY VIDEO SURVEILLANCE MANAGEMENT SYSTEM BASED ON MULTI-COMMUNICATION MECHANISM AND MACHINEVISION
投稿时间:2018-10-15  修订日期:2019-01-05
DOI:10.3969/j.issn.1674-8085.2019.02.010
中文关键词: 智慧小区  视频监控  多通信机制  机器视觉  Harris角点  RANSAC匹配优化
英文关键词: intelligence community  video surveillance  multi-communication mechanism  machine vision  Harris corner  RANSAC matching
基金项目:安徽省高校优秀拔尖人才培育资助项目(gxyq2017218);安徽省高等学校省级质量工程项目(2017sjjd052,2017jxtd079)
作者单位
胡石 池州职业技术学院机电技术系, 安徽, 池州 247000 
王彬 池州职业技术学院机电技术系, 安徽, 池州 247000 
吴志光 池州职业技术学院机电技术系, 安徽, 池州 247000 
摘要点击次数: 1727
全文下载次数: 1946
中文摘要:
      为了有效监控小区内的车辆速度,实现保障小区业主人身安全和促进城市小区健康发展,本文设计了一套基于多通信机制与机器视觉的智慧小区视频监控系统。首先,将基于Socket的网口通信与基于RS232的串口通信实施融合,连接测速摄像头与中心服务器,构建起智慧小区车辆视频监控系统的硬件平台。然后,结合高斯模型、Harris角点定位与RANSAC匹配优化方法,设计了车辆速度检测算子,实现车辆有无判断和车辆速度计算。在Visiual Studio平台开发系统,并对所提智慧小区视频监控系统进行了测试,结果表明:本文提出的智慧小区视频监控系统,在车速检测和系统智能性方面,都优于传统小区视频监控系统。
英文摘要:
      In order to effectively monitor the vehicle speed in the residential area,and realize the purpose of ensuring the personal safety in the residential area,as well as promote the healthy development of the urban residential area,this paper designs a smart residential area video monitoring system based on multi-communication mechanism and machine vision.Firstly,integrating socket-based network communication with RS232-based serial communication,connecting speed measuring camera and central server,the hardware foundation of vehicle video surveillance system of intelligent community is constructed.Then,combining the Gaussian model,Harris corner location and Ransac corner matching method,the vehicle speed detection operator is designed to realize the vehicle judgment and vehicle speed calculation.The system is developed on Visual studio platform,and the video surveillance system of intelligent community is tested,the output results show that this intelligent video surveillance system is superior to the traditional video surveillance system in speed detection and system intelligence.
查看全文   查看/发表评论  下载PDF阅读器
关闭