RE-POSE: Synergizing Reinforcement Learning-Based Partitioning and Offloading for Edge Object Detection
Jianrui Shi, Yong Zhao, Zeyang Cui, Xiaoming Shen, Minhang Zeng,, Xiaojie Liu

TL;DR
RE-POSE is a novel framework that combines reinforcement learning-based partitioning with edge offloading to improve real-time object detection accuracy and latency on resource-limited edge devices.
Contribution
It introduces an RL-driven dynamic clustering algorithm and a parallel offloading scheme to optimize detection performance in edge environments.
Findings
Significantly improves detection accuracy.
Reduces inference latency.
Outperforms existing methods.
Abstract
Object detection plays a crucial role in smart video analysis, with applications ranging from autonomous driving and security to smart cities. However, achieving real-time object detection on edge devices presents significant challenges due to their limited computational resources and the high demands of deep neural network (DNN)-based detection models, particularly when processing high-resolution video. Conventional strategies, such as input down-sampling and network up-scaling, often compromise detection accuracy for faster performance or lead to higher inference latency. To address these issues, this paper introduces RE-POSE, a Reinforcement Learning (RL)-Driven Partitioning and Edge Offloading framework designed to optimize the accuracy-latency trade-off in resource-constrained edge environments. Our approach features an RL-Based Dynamic Clustering Algorithm (RL-DCA) that partitions…
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Taxonomy
TopicsAdvanced Neural Network Applications
