Feature Compression for Rate Constrained Object Detection on the Edge

Abstract

Recent advances in computer vision has led to a growth of interest in deploying visual analytics model on mobile devices. However, most mobile devices have limited computing power, which prohibits them from running large scale visual analytics neural networks. An emerging approach to solve this problem is to offload the computation of these neural networks to computing resources at an edge server. Efficient computation offloading requires optimizing the trade-off between multiple objectives including compressed data rate, analytics performance, and computation speed.

Year of Publication
2022
Conference Name
In MLSys 2023 Workshop on Resource-Constrained Learning in Wireless Networks
Date Published
08