FluxShard: Motion-Aware Feature Cache Reuse for Collaborative Video Analytics in Mobile Edge Computing
Xiuxian Guan, Zongyuan Zhang, Zheng Lin, Zekai Sun, Tianyang Duan, Zihan Fang, Rui Wang, Heming Cui, Wei Ni, Jun Luo, Yuanwei Liu

TL;DR
FluxShard introduces a motion-aware feature cache management system for mobile edge video analytics, significantly reducing latency and energy consumption by leveraging codec-level motion vectors and region-specific cache reuse.
Contribution
It proposes a novel motion-aware cache management approach using per-block motion vectors and RFAP to improve reuse accuracy and efficiency in dynamic scenes.
Findings
Reduces latency by up to 83.8% compared to baselines.
Cuts energy consumption by up to 64%.
Achieves high cache reuse ratios across diverse video benchmarks.
Abstract
Caching and reusing intermediate features across consecutive frames is a common technique to reduce redundant computation and transmission for edge-cloud video analytics in mobile edge computation. Existing methods manage the cache in a fixed or globally shifted coordinate system, treating it as an indivisible whole. Under the non-uniform motion patterns of mobile scenes, this whole-scene granularity invalidates large portions of the cache even when most content has merely shifted spatially, wasting computation and bandwidth. The root cause is a granularity mismatch: the cache is managed per scene, yet motion varies per region. In this paper, we present FluxShard, a motion-aware edge-cloud video analytics system that uses codec-level block motion vectors (MVs) to manage feature cache reuse and recomputation at the granularity of individual motion regions. By re-indexing cached features…
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