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arxiv: 1905.13536 · v1 · pith:WTILHG7Ynew · submitted 2019-05-24 · 💻 cs.CV · cs.LG· cs.PF· eess.IV· stat.ML

Scaling Video Analytics on Constrained Edge Nodes

classification 💻 cs.CV cs.LGcs.PFeess.IVstat.ML
keywords videoedgefilterforwardapplicationsbandwidthcameraconstrainedcontent
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As video camera deployments continue to grow, the need to process large volumes of real-time data strains wide area network infrastructure. When per-camera bandwidth is limited, it is infeasible for applications such as traffic monitoring and pedestrian tracking to offload high-quality video streams to a datacenter. This paper presents FilterForward, a new edge-to-cloud system that enables datacenter-based applications to process content from thousands of cameras by installing lightweight edge filters that backhaul only relevant video frames. FilterForward introduces fast and expressive per-application microclassifiers that share computation to simultaneously detect dozens of events on computationally constrained edge nodes. Only matching events are transmitted to the cloud. Evaluation on two real-world camera feed datasets shows that FilterForward reduces bandwidth use by an order of magnitude while improving computational efficiency and event detection accuracy for challenging video content.

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