Scalable Deployments for Real-Time AI Video Stream Processing

Catalin Patrascu, Adrian Cosma, I. Radoi
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Abstract

Real-time stream processing is becoming more prevalent today due to huge chunks of data needing to be processed upon arrival. In video streaming the need for real-time management is both important and challenging because video frames come at high frequency. AI advances have made it possible to understand video feeds at a high level in real-time, making them a valuable source of information in regards to human behavior, trends, surveillance and much more. As a consequence of these reasons, there is a need for a highly performant and deployable system in terms of latency, scalability, accuracy of results and computing power, which leverages the cloud as a service. A design for a low-latency and highly scalable system is much needed as video stream processing or video analytics has uses in areas such as surveillance, real-time video analytics, criminality and autonomous vehicles, which require fast and accurate analysis of data. Such a system should be able to employ not only streaming but also different processing actions including machine learning models which can be applied to frames resulting in data analysis or further data pipelines. We developed a scalable real-time video processing system which consumes video frames, processes them using deep learning models, renders them and stores the resulting semantic information in a database for further downstream processing. We show that our proposed processing architectures are a suitable solution for modern video analytics systems, which can be scaled both vertically and horizontally, and achieves real-time latency within maximum of 1 second for frame rates ranging from 10 to 60 fps.
实时AI视频流处理的可扩展部署
由于需要在到达时处理大量数据,实时流处理在今天变得越来越普遍。在视频流中,实时管理的需求既重要又具有挑战性,因为视频帧的频率很高。人工智能的进步使人们能够在高水平上实时理解视频馈送,使其成为有关人类行为、趋势、监控等方面的宝贵信息来源。由于这些原因,就延迟、可伸缩性、结果准确性和计算能力而言,需要一个高性能和可部署的系统,从而利用云作为服务。视频流处理或视频分析在监控、实时视频分析、犯罪和自动驾驶汽车等领域都有应用,这些领域需要快速准确地分析数据,因此非常需要一种低延迟和高度可扩展的系统设计。这样的系统不仅应该能够使用流,还应该能够使用不同的处理动作,包括可以应用于导致数据分析或进一步数据管道的框架的机器学习模型。我们开发了一个可扩展的实时视频处理系统,该系统使用视频帧,使用深度学习模型进行处理,渲染它们并将结果语义信息存储在数据库中以供进一步的下游处理。我们表明,我们提出的处理架构是现代视频分析系统的合适解决方案,它可以垂直和水平缩放,并且在帧率范围从10到60 fps的情况下,在最多1秒内实现实时延迟。
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