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Smart city surveillance: Leveraging benefits of cloud data stores

机译:智能城市监控:利用云数据存储的优势

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The smart cities of future need to have a robust and scalable video surveillance infrastructure. In addition it may also make use of citizen contributed video feeds, images and sound clips for surveillance purposes. Multimedia data from various sources need to be stored in large scalable data stores for compulsory retention period, on-line, off-line analytics and archival. Multimedia feeds related to surveillance are voluminous and varied in nature. Apart from large multimedia files, events detected using video analytics and associated metadata needs to be stored. The underlying data storage infrastructure therefore needs to be designed for mainly continuous streaming writes from video cameras and some variety in terms of I/O sizes, read-write mix, random vs. sequential access. As of now, the video surveillance storage domain is mostly dominated by iSCSI based storage systems. Cloud based storage is also provided by some vendors. Taking in account the need for scalability, reliability and data center cost minimization, it is worth investigating if large scale video surveillance backend can be integrated to the open source cloud based data stores available in the “big data” trend. We developed a multimedia surveillance backend system architecture based on the Sensor Web Enablement framework and cloud based “key-value” stores. Our framework gets data from camera/ edge device simulators, splits media files and metadata and stores those in a segregated way in cloud based data stores hosted on Amazons EC2. We have benchmarked performances of a few cloud based key-value stores under large scale video surveillance workload and demonstrated that those perform satisfactorily, bringing in inherent scalability and reliability of a cloud based storage system to a video surveillance system for a smart safe city. With a case study of the storage of video surveillance system, we show in this paper that with the availability of several cloud based d- stributed data stores and benchmarking tools, an application's data management needs can be served using hybrid cloud based data stores and selection of such stores can be facilitated using benchmark tools if the application workload characteristics are known.
机译:未来的智慧城市需要拥有强大且可扩展的视频监控基础架构。此外,它还可以利用公民提供的视频源,图像和声音片段进行监视。来自各种来源的多媒体数据需要存储在大型可伸缩数据存储中,以用于强制保留期,在线,离线分析和存档。与监视有关的多媒体源数量众多且性质各异。除大型多媒体文件外,还需要存储使用视频分析和关联的元数据检测到的事件。因此,需要将底层数据存储基础结构设计为主要用于摄像机的连续流写入,以及I / O大小,读写混合,随机与顺序访问方面的各种变化。到目前为止,视频监控存储域主要由基于iSCSI的存储系统主导。一些供应商还提供基于云的存储。考虑到对可伸缩性,可靠性和数据中心成本最小化的需求,值得研究是否可以将大型视频监控后端集成到“大数据”趋势下可用的基于开源云的数据存储中。我们开发了基于Sensor Web Enablement框架和基于云的“键值”存储的多媒体监视后端系统架构。我们的框架从相机/边缘设备模拟器获取数据,分割媒体文件和元数据,并将它们以分离的方式存储在Amazon EC2上托管的基于云的数据存储中。我们已经在大型视频监控工作负载下对一些基于云的键值存储的性能进行了基准测试,并证明了它们的性能令人满意,为智能安全城市的视频监控系统带来了基于云的存储系统固有的可扩展性和可靠性。通过对视频监控系统存储的案例研究,我们证明了利用几种基于云的分布式数据存储和基准测试工具的可用性,可以使用基于混合云的数据存储和选择来满足应用程序的数据管理需求如果已知应用程序工作负载特征,则可以使用基准工具来简化此类存储的存储。

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