Decentralized modular architecture for live video analytics at the edge

Sri Pramodh Rachuri, F. Bronzino, Shubham Jain
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引用次数: 2

Abstract

Live video analytics have become a key technology to support surveillance, security, traffic control, and even consumer multimedia applications in real time. The continuous growth in number of networked video cameras will further increase their widespread adoption. Yet, until now, developments in video analytics have largely focused on using fixed cameras, omitting the ever-growing presence of mobile cameras such as car dash-cams, drones, and smartphones. Edge computing, coupled with centralized clouds, has helped alleviate the network traffic and processing load, reducing latency and data transmissions. However, the current approach of processing video feeds through a hierarchy of clusters across a somewhat predictable path in the network will not be sufficient to support the integration of mobile feeds into the video analytics architecture. In this paper, we argue that a crucial step towards supporting heterogeneous camera sources is the adoption of a flat edge computing architecture. Such architecture should enable the dynamic distribution of processing loads through distributed computing points of presence, rapidly adapting to sudden changes in traffic conditions. In support of this hypothesis, we present exploratory results that show that smartly distributing and processing vision modules in parallel across available edge compute nodes can ultimately lead to better resource utilization and improved performance.
分散的模块化架构,用于边缘的实时视频分析
实时视频分析已经成为支持监控、安全、交通控制甚至实时消费多媒体应用的关键技术。网络摄像机数量的持续增长将进一步增加它们的广泛采用。然而,到目前为止,视频分析的发展主要集中在使用固定摄像头,而忽略了不断增长的移动摄像头,如汽车仪表盘摄像头、无人机和智能手机。边缘计算与集中式云相结合,有助于减轻网络流量和处理负载,减少延迟和数据传输。然而,目前通过网络中可预测路径上的集群层次结构处理视频馈送的方法不足以支持将移动馈送集成到视频分析架构中。在本文中,我们认为支持异构相机源的关键一步是采用平边缘计算架构。这种架构应该能够通过分布式计算点动态分配处理负载,快速适应交通状况的突然变化。为了支持这一假设,我们提出的探索性结果表明,在可用的边缘计算节点上并行地智能分布和处理视觉模块最终可以提高资源利用率和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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