Optimizing QoE and Latency of Live Video Streaming Using Edge Computing and In-Network Intelligence (bibtex)
@InProceedings{Erfanian2021c, author = {Alireza Erfanian}, booktitle = {Proceedings of the 12th ACM Multimedia Systems Conference}, title = {{Optimizing QoE and Latency of Live Video Streaming Using Edge Computing and In-Network Intelligence}}, year = {2021}, month = {jun}, pages = {373--377}, publisher = {ACM}, abstract = {Live video streaming traffic and related applications have experienced significant growth in recent years. More users have started generating and delivering live streams with high quality (e.g., 4K resolution) through popular online streaming platforms such as YouTube, Twitch, and Facebook. Typically, the video contents are generated by streamers and watched by many audiences, which are geographically distributed in various locations far away from the streamers' locations. The resource limitation in the network (e.g., bandwidth) is a challenging issue for network and video providers to meet the users' requested quality. In this thesis, we will investigate optimizing QoEand end-to-end (E2E) latency of live video streaming by leveraging edge computing capabilities and in-network intelligence. We present four main research questions aiming to address the various challenges in optimizing live streaming QoE and E2E latency by employing edge computing and in-network intelligence.}, doi = {10.1145/3458305.3478459}, url = {https://dl.acm.org/doi/10.1145/3458305.3478459} }
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