论文标题
云中的视频大数据分析:参考架构,调查,机会和开放研究问题
Video Big Data Analytics in the Cloud: A Reference Architecture, Survey, Opportunities, and Open Research Issues
论文作者
论文摘要
多媒体设备在物联网(IoT)上的扩散产生了前所未有的数据。因此,世界已经进入了大数据时代。最近,随着分布式计算技术的兴起,云中的视频大数据分析吸引了研究人员和从业者的注意。当前的技术和市场趋势需要一个有效的视频大数据分析框架。但是,当前的工作太限制了,无法对云中视频大数据分析的最新研究工作进行完整的调查,包括对大量视频数据的管理和分析,挑战,机会和有前途的研究方向。为了实现此目的,我们介绍了这项研究,该研究对云中的视频大数据分析进行了最新的文献进行了广泛的概述。它还旨在弥合大型视频分析挑战,大数据解决方案和云计算之间的差距。在这项研究中,我们阐明了控制视频分析领域的基本命名词和视频大数据的特征,同时建立了其与云计算的关系。我们为云中的智能视频大数据分析提供了面向服务的分层参考体系结构。然后,已经进行了全面而敏锐的综述,以研究视频大数据分析的尖端研究趋势。最后,我们确定并阐明了一些开放的研究问题和挑战,这是通过在云中部署的大型数据分析而提出的。据我们所知,这是第一项介绍云中视频大数据分析的广义观点的研究。本文提供了在大数据和云计算时代推进视频分析的研究和技术。
The proliferation of multimedia devices over the Internet of Things (IoT) generates an unprecedented amount of data. Consequently, the world has stepped into the era of big data. Recently, on the rise of distributed computing technologies, video big data analytics in the cloud has attracted the attention of researchers and practitioners. The current technology and market trends demand an efficient framework for video big data analytics. However, the current work is too limited to provide a complete survey of recent research work on video big data analytics in the cloud, including the management and analysis of a large amount of video data, the challenges, opportunities, and promising research directions. To serve this purpose, we present this study, which conducts a broad overview of the state-of-the-art literature on video big data analytics in the cloud. It also aims to bridge the gap among large-scale video analytics challenges, big data solutions, and cloud computing. In this study, we clarify the basic nomenclatures that govern the video analytics domain and the characteristics of video big data while establishing its relationship with cloud computing. We propose a service-oriented layered reference architecture for intelligent video big data analytics in the cloud. Then, a comprehensive and keen review has been conducted to examine cutting-edge research trends in video big data analytics. Finally, we identify and articulate several open research issues and challenges, which have been raised by the deployment of big data technologies in the cloud for video big data analytics. To the best of our knowledge, this is the first study that presents the generalized view of the video big data analytics in the cloud. This paper provides the research studies and technologies advancing video analyses in the era of big data and cloud computing.