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区域人群状态的实时感知监控
Real-time Monitoring for the Regional Crowds Status

查看参考文献26篇

文摘 公众聚集场所人群高度聚集,流动性大,隐藏着巨大的安全隐患,时常发生群死群伤的拥挤踩踏等突发公共事件。针对现有以视频监控的人群分析,无法从空间视角掌握区域人群状态的时空格局,本文提出了面向人群分析的视频GIS框架,将视频数据映射至地理空间,在GIS环境下提取人群密度、人群运动矢量场等人群特征。通过分析人群运动矢量场可得到人群运动模式及各方向人群主体运动速率。最后,将视频监控系统与GIS进行有机集成,设计并实现了以视频与GIS协同的区域人群状态实时感知监控系统。实验结果表明,本系统可为大型集会活动的突发事件预防、人群疏导等提供决策依据。
其他语种文摘 With the rapid development of the social economy, the massive crowd gathering appears frequently. Personnel casualties often caused by higher crowd density. So, video surveillance technology has become a national policy in many countries. Surveillance cameras have been installed in various important places of the city. Real-time monitoring of the crowds status in crowd gathering area can provide important basis for crowd management and emergency warning. Existing video-based crowd analysis can only monitor crowd status for each camera separately. We cannot get the spatial-temporal patterns of regional crowd status from a spatial perspective. In this paper, we proposed a video-GIS framework for crowd analysis. Video frames can be mapped to geographic space based on the video-GIS framework. So we can process crowd images and extract crowd density, crowd movement vector field in GIS. Then the crowd movement pattern and the main direction of crowd movement can be acquired by the vector field analysis. Finally, we design and implement a real-time monitoring system for the regional crowd status using video surveillance system and GIS. Experimental results show that: (1) previous crowd analysis methods based on the image space can only measure results by the unit of pixels. It requires further conversion if we want to get the real value. But we can get the real value directly when we process crowd images in GIS using the method we proposed. (2) The accuracy of the pixel-based low-density crowd counting estimation results can be up to 90%. The classification accuracy of the high-density crowd levels support vector machine classifier is more than 95%. So, they can fully meet the needs of crowd monitoring. (3) We can get the crowd movement pattern and the main movement direction by the analysis of crowd movement vector field in GIS. Also, we can obtain the speed of the crowd in different directions. These crowd characters all can be expressed in GIS. (4) The system we developed for the crowd monitoring can be applied to crowd management and emergency warning. It can provide decision making basis for emergencies prevention and crowd divert.
来源 地球信息科学学报 ,2012,14(6):686-692 【核心库】
关键词 视频GIS ; 人群监测 ; 时空格局 ; 感知 ; 监控
地址

南京师范大学, 虚拟地理环境教育部重点实验室, 南京, 210023

语种 中文
ISSN 1560-8999
学科 测绘学
基金 国家“十二五”科技支撑计划项目 ;  江苏省高校自然科学基础研究重大项目
文献收藏号 CSCD:4716216

参考文献 共 26 共2页

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引证文献 6

1 宋宏权 一种可跨摄像机的人群密度估计模型 中国安全科学学报,2013,23(12):139-145
被引 4

2 宋宏权 地理环境下的群体运动分析与异常行为检测 地理与地理信息科学,2015,31(4):1-5,11
被引 2

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