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SurveilEdge: Real-time Video Query based on Collaborative Cloud-Edge Deep Learning

机译:SurveilEdge:基于协作云边缘深度学习的实时视频查询

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The real-time query of massive surveillance video data plays a fundamental role in various smart urban applications such as public safety and intelligent transportation. Traditional cloud-based approaches are not applicable because of high transmission latency and prohibitive bandwidth cost, while edge devices are often incapable of executing complex vision algorithms with low latency and high accuracy due to restricted resources. Given the infeasibility of both cloud-only and edge-only solutions, we present SurveilEdge, a collaborative cloud-edge system for real-time queries of large-scale surveillance video streams. Specifically, we design a convolutional neural network (CNN) training scheme to reduce the training time with high accuracy, and an intelligent task allocator to balance the load among different computing nodes and to achieve the latency-accuracy tradeoff for real-time queries. We implement SurveilEdge on a prototype 1 with multiple edge devices and a public Cloud, and conduct extensive experiments using real-world surveillance video datasets. Evaluation results demonstrate that SurveilEdge manages to achieve up to 7× less bandwidth cost and 5.4× faster query response time than the cloud-only solution; and can improve query accuracy by up to 43.9% and achieve 15.8× speedup respectively, in comparison with edge-only approaches.
机译:大规模监控视频数据的实时查询在各种智能城市应用(例如公共安全和智能交通)中起着至关重要的作用。传统的基于云的方法由于传输延迟高和带宽成本过高而无法应用,而边缘设备由于资源受限,通常无法以低延迟和高精度执行复杂的视觉算法。鉴于仅云解决方案和仅边缘解决方案均不可行,我们提出了SurveilEdge,这是一种协作型云边缘系统,用于实时查询大型监控视频流。具体来说,我们设计了一种卷积神经网络(CNN)训练方案以高精度地减少训练时间,并设计了一种智能任务分配器来平衡不同计算节点之间的负载并实现实时查询的时延精度折衷。我们在原型上实现SurveilEdge 1 使用多个边缘设备和一个公共云,并使用真实的监视视频数据集进行广泛的实验。评估结果表明,与纯云解决方案相比,SurveilEdge的带宽成本降低了多达7倍,查询响应时间缩短了5.4倍。与仅使用边缘的方法相比,可将查询准确性提高多达43.9%,并分别实现15.8倍的加速。

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