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Cross-Camera Inference on the Constrained Edge

Jingzong Li, Libin Liu, Hong Xu, Shudeng Wu, Chun Jason Xue

202326 citationsDOI

Abstract

The proliferation of edge devices has pushed computing from the cloud to the data sources, and video analytics is among the most promising applications of edge computing. Running video analytics is compute- and latency-sensitive, as video frames are analyzed by complex deep neural networks (DNNs) which put severe pressure on resource-constrained edge devices. To resolve the tension between inference latency and resource cost, we present Polly, a cross-camera inference system that enables co-located cameras with different but overlapping fields of views (FoVs) to share inference results between one another, thus eliminating the redundant inference work for objects in the same physical area. Polly’s design solves two basic challenges of cross-camera inference: how to identify overlapping FoVs automatically, and how to share inference results accurately across cameras. Evaluation on NVIDIA Jetson Nano with a real-world traffic surveillance dataset shows that Polly reduces the inference latency by up to 71.4% while achieving almost the same detection accuracy with state-of-the-art systems.

Topics & Concepts

InferenceComputer scienceLatency (audio)AnalyticsCloud computingArtificial intelligenceEdge computingEnhanced Data Rates for GSM EvolutionEdge deviceComputer visionInference engineCausal inferenceMachine learningComputer engineeringData scienceTelecommunicationsEconomicsEconometricsOperating systemAdvanced Neural Network ApplicationsAir Quality Monitoring and ForecastingCCD and CMOS Imaging Sensors
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