用于大规模分析分布式摄像机的系统

Ahmed S. Kaseb, E. Berry, Youngsol Koh, A. Mohan, Wenyi Chen, He Li, Yung-Hsiang Lu, E. Delp
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引用次数: 22

摘要

成千上万的摄像机连接到互联网上,提供流数据(视频或周期性图像)。图像中包含的信息可用于确定场景内容,如交通、天气和环境。分析来自这些摄像机的数据提出了许多挑战,例如(i)从地理分布和异构摄像机中检索数据,(ii)为用户同时分析来自摄像机的大量数据提供软件环境,(iii)分配和管理计算和存储资源。本文提出了一个旨在解决这些挑战的系统。该系统使用户能够大规模地执行图像分析和计算机视觉技术,仅对现有方法进行轻微更改。该系统目前在全球部署了65000多个摄像头。用户可以为他们可以做的分析类型选择相机。系统分配Amazon EC2和Windows Azure云实例来执行分析。我们的实验表明,该系统可以用于各种图像分析技术(例如运动分析和人体检测),使用来自1274台摄像机的270万张图像,使用15个云实例,在三个小时内分析141 GB的图像(以107 Mbps的速度)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A system for large-scale analysis of distributed cameras
Thousands of cameras are connected to the Internet providing streaming data (videos or periodic images). The images contain information that can be used to determine the scene contents such as traffic, weather, and the environment. Analyzing the data from these cameras presents many challenges, such as (i) retrieving data from geographically distributed and heterogeneous cameras, (ii) providing a software environment for users to simultaneously analyze large amounts of data from the cameras, (iii) allocating and managing computation and storage resources. This paper presents a system designed to address these challenges. The system enables users to execute image analysis and computer vision techniques on a large scale with only slight changes to the existing methods. It currently includes more than 65,000 cameras deployed worldwide. Users can select cameras for the types of analysis they can do. The system allocates Amazon EC2 and Windows Azure cloud instances for executing the analysis. Our experiments demonstrate that this system can be used for a variety of image analysis techniques (e.g. motion analysis and human detection) using 2.7 million images from 1274 cameras for three hours using 15 cloud instances to analyze 141 GB of images (at 107 Mbps).
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