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Edge-Cloud Collaborated Object Detection via Bandwidth Adaptive Difficult-Case Discriminator

Authors :
Cao, Zhiqiang
Cheng, Yun
Zhou, Zimu
Chen, Yongrui
Hu, Youbing
Lu, Anqi
Liu, Jie
Li, Zhijun
Source :
IEEE Transactions on Mobile Computing; February 2025, Vol. 24 Issue: 2 p1181-1196, 16p
Publication Year :
2025

Abstract

Object detection, a fundamental task in computer vision, is crucial for various intelligent edge computing applications. However, object detection algorithms are usually heavy in computation, hindering their deployments on resource-constrained edge devices. Traditional edge-cloud collaboration schemes, like deep neural network (DNN) partitioning across edge and cloud, are unfit for object detection due to the significant communication costs incurred by the large size of intermediate results. To this end, we propose a Difficult-Case based Small-Big model (DCSB) framework. It employs a difficult-case discriminator on the edge device to control data transfer between the small model on the edge and the large model in the cloud. We also adopt regional sampling to further reduce the bandwidth consumption and create a discriminator zoo to accommodate the varying networking conditions. Additionally, we extend DCSB to video tasks by developing an adaptive sampling rate update algorithm, aiming to minimize computational demands without sacrificing detection accuracy. Extensive experiments show that DCSB can detect 97.26%-97.96% objects while saving 74.37%-82.23% network bandwidth, compared to cloud-only methods. Furthermore, DCSB significantly outperforms the latest DNN partitioning methods, reducing inference time by 92.60%-95.10% given an 8Mbps transmission bandwidth. In video tasks, DCSB matches the detection accuracy of leading video analysis methods while cutting the computational overhead by 40%.

Details

Language :
English
ISSN :
15361233
Volume :
24
Issue :
2
Database :
Supplemental Index
Journal :
IEEE Transactions on Mobile Computing
Publication Type :
Periodical
Accession number :
ejs68602597
Full Text :
https://doi.org/10.1109/TMC.2024.3474743