愿景文件:实现跨摄像机协作的软件定义视频分析

Juheon Yi, Chulhong Min, F. Kawsar
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引用次数: 5

摘要

摄像机在我们的日常生活中变得无处不在。随着人工智能(AI)的发展,实时视频分析正在实现各种有用的服务,包括交通监控和校园监控。然而,目前的视频分析系统在利用部署摄像机的巨大机会方面受到高度限制,因为(i)集中处理架构(即,摄像机被视为哑流传感器),(ii)硬编码分析能力来自紧密耦合的硬件和软件,(iii)来自不同服务提供商的孤立和碎片化摄像机部署,以及(iv)在没有任何协作的情况下独立处理摄像机流。在本文中,我们设想了一个成熟的系统,用于软件定义的视频分析,具有跨摄像机协作,克服了上述限制。阐述了其详细的系统架构,结合具有代表性的应用场景,仔细分析了关键的系统需求,并总结了现有工作的现状,得出了潜在的研究问题。
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Vision Paper: Towards Software-Defined Video Analytics with Cross-Camera Collaboration
Video cameras are becoming ubiquitous in our daily lives. With the recent advancement of Artificial Intelligence (AI), live video analytics are enabling various useful services, including traffic monitoring and campus surveillance. However, current video analytics systems are highly limited in leveraging the enormous opportunities of the deployed cameras due to (i) centralized processing architecture (i.e., cameras are treated as dumb streaming-only sensors), (ii) hard-coded analytics capabilities from tightly coupled hardware and software, (iii) isolated and fragmented camera deployment from different service providers, and (iv) independent processing of camera streams without any collaboration. In this paper, we envision a full-fledged system for software-defined video analytics with cross-camera collaboration that overcomes the aforementioned limitations. We illustrate its detailed system architecture, carefully analyze the key system requirements with representative app scenarios, and derive potential research issues along with a summary of the status quo of existing works.
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