IEEE INFOCOM 2021
Mobile Edge/Cloud
Distributed Threshold-based Offloading for Large-Scale Mobile Cloud Computing
Xudong Qin and Bin Li (University of Rhode Island, USA); Lei Ying (University of Michigan, USA)
EdgeDuet: Tiling Small Object Detection for Edge Assisted Autonomous Mobile Vision
Xu Wang, Zheng Yang, Jiahang Wu and Yi Zhao (Tsinghua University, China); Zimu Zhou (Singapore Management University, Singapore)
To Talk or to Work: Flexible Communication Compression for Energy Efficient Federated Learning over Heterogeneous Mobile Edge Devices
Liang Li (Xidian University, China); Dian Shi (University of Houston, USA); Ronghui Hou and Hui Li (Xidian University, China); Miao Pan and Zhu Han (University of Houston, USA)
TiBroco: A Fast and Secure Distributed Learning Framework for Tiered Wireless Edge Networks
Dong-Jun Han (KAIST, Korea (South)); Jy-yong Sohn (Korea Advanced Institute of Science and Technology, Korea (South)); Jaekyun Moon (KAIST, Korea (South))
Session Chair
Stephen Lee (University of Pittsburgh)
Robotic Applications
POLO: Localizing RFID-Tagged Objects for Mobile Robots
Dianhan Xie, Xudong Wang, Aimin Tang and Hongzi Zhu (Shanghai Jiao Tong University, China)
SILoc: A Speed Inconsistency-Immune Approach to Mobile RFID Robot Localization
Jiuwu Zhang and Xiulong Liu (Tianjin University, China); Tao Gu (Macquarie University, Australia); Xinyu Tong, Sheng Chen and Keqiu Li (Tianjin University, China)
Multi-Robot Path Planning for Mobile Sensing through Deep Reinforcement Learning
Yongyong Wei and Rong Zheng (McMaster University, Canada)
Enabling Edge-Cloud Video Analytics for Robotics Applications
Yiding Wang and Weiyan Wang (Hong Kong University of Science and Technology, Hong Kong); Duowen Liu (Hong Kong University of Science & Technology, Hong Kong); Xin Jin (Peking University, China); Junchen Jiang (University of Chicago, USA); Kai Chen (Hong Kong University of Science and Technology, China)
We present Runespoor, an edge-cloud video analytics system to manage the tail accuracy and enable emerging robotics applications. We train and deploy a super-resolution model tailored for the tail accuracy of analytics tasks on the server to significantly improves the performance on hard-to-detect classes and sophisticated frames. During online operation, we use an adaptive data rate controller to further improve the tail performance by instantly adjusting the data rate policy according to the video content. Our evaluation shows that Runespoor improves class-wise tail accuracy by up to 300%, frame-wise 90%/99% tail accuracy by up to 22%/54%, and greatly improves the overall accuracy and bandwidth trade-off.
Session Chair
Shan Lin (Stony Brook University)
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