R2E-VID: Two-Stage Robust Routing via Temporal Gating for Elastic Edge-Cloud Video Inference
Zheming Yang, Lulu Zuo, Shun Lu, Yangyu Zhang, Zhicheng Li, Xiangyang Li, and Yang You

TL;DR
R2E-VID introduces a two-stage routing framework with temporal gating for adaptive, efficient edge-cloud video inference, reducing costs and delays while improving accuracy.
Contribution
It proposes a novel temporal gating mechanism and robust routing optimization for elastic, adaptive edge-cloud video inference workloads.
Findings
Up to 60% reduction in overall cost compared to cloud-only approaches.
35-45% lower delay than existing edge-cloud solutions.
Inference accuracy improved by 2-7% over state-of-the-art methods.
Abstract
With the rapid growth of large-scale video analytics applications, edge-cloud collaborative systems have become the dominant paradigm for real-time inference. However, existing approaches often fail to dynamically adapt to heterogeneous video content and fluctuating resource conditions, resulting in suboptimal routing efficiency and high computational costs. In this paper, we propose R2E-VID, a two-stage robust routing framework via temporal gating for elastic edge-cloud video inference. In the first stage, R2E-VID introduces a temporal gating mechanism that models the temporal consistency and motion dynamics of incoming video streams to predict the optimal routing pattern for each segment. This enables adaptive partitioning of inference workloads between edge and cloud nodes, achieving fine-grained spatiotemporal elasticity. In the second stage, a robust routing optimization module…
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