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PERCEIVE: Deep learning-based cellular uplink prediction using real-time scheduling patterns

Cited 0 time in Web of Science Cited 43 time in Scopus
Authors

Lee, Jinsung; Lee, Sungyong; Lee, Jongyun; Sathyanarayana, Sandesh Dhawaskar; Lim, Hyoyoung; Lee, Jihoon; Zhu, Xiaoqing; Ramakrishnan, Sangeeta; Grunwald, Dirk; Lee, Kyunghan; Ha, Sangtae

Issue Date
2020-06
Publisher
Association for Computing Machinery, Inc
Citation
MobiSys 2020 - Proceedings of the 18th International Conference on Mobile Systems, Applications, and Services, pp.377-390
Abstract
© 2020 ACM.As video calls and personal broadcasting become popular, the demand for mobile live streaming over cellular uplink channels is growing fast. However, current live streaming solutions are known to suffer from frequent uplink throughput fluctuations causing unnecessary video stalls and quality drops. As a remedy to this problem, we propose PERCEIVE, a deep learning-based uplink throughput prediction framework. PERCEIVE exploits a 2-stage LSTM (Long Short Term Memory) design and makes throughput predictions for the next 100ms. Our extensive evaluations show that PERCEIVE, trained with LTE network traces from three major operators in the U.S., achieves high accuracy in the uplink throughput prediction with only 7.67% mean absolute error and outperforms existing prediction techniques. We integrate PERCEIVE with WebRTC, a popular video streaming platform from Google, as a rate adaptation module. Our implementation on the Android phone demonstrates that it can improve PSNR by up to 6dB (4x) over the default WebRTC while providing less streaming latency.
URI
https://hdl.handle.net/10371/190983
DOI
https://doi.org/10.1145/3386901.3388911
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