Litcius/Paper detail

EdgeVision: Towards Collaborative Video Analytics on Distributed Edges for Performance Maximization

Guanyu Gao, Yuqi Dong, Ran Wang, Xin Zhou

2024IEEE Transactions on Multimedia25 citationsDOI

Abstract

Deep Neural Network (DNN)-based video analytics significantly improves recognition accuracy in computer vision applications. Deploying DNN models at edge nodes, closer to end users, reduces inference delay and minimizes bandwidth costs. However, these resource-constrained edge nodes may experience substantial delays under heavy workloads, leading to imbalanced workload distribution. While previous efforts focused on optimizing hierarchical device-edge-cloud architectures or centralized clusters for video analytics, we propose addressing these challenges through collaborative distributed and autonomous edge nodes. Despite the intricate control involved, we introduce EdgeVision, a Multiagent Reinforcement Learning (MARL)-based framework for collaborative video analytics on distributed edges. EdgeVision enables edge nodes to autonomously learn policies for video preprocessing, model selection, and request dispatching. Our approach utilizes an actor-critic-based MARL algorithm enhanced with an attention mechanism to learn optimal policies. To validate EdgeVision, we construct a multi-edge testbed and conduct experiments with real-world datasets. Results demonstrate a performance enhancement of 33.6% to 86.4% compared to baseline methods.

Topics & Concepts

Computer scienceAnalyticsMaximizationData scienceEconomicsMicroeconomicsImage and Video Quality AssessmentData Visualization and AnalyticsVideo Analysis and Summarization