2 research outputs found
Coffee: Cost-Effective Edge Caching for 360 Degree Live Video Streaming
While live 360 degree video streaming delivers immersive viewing experience,
it poses significant bandwidth and latency challenges for content delivery
networks. Edge servers are expected to play an important role in facilitating
live streaming of 360 degree videos. In this paper, we propose a novel
predictive edge caching algorithm (Coffee) for live 360 degree video that
employ collaborative FoV prediction and predictive tile prefetching to reduce
bandwidth consumption, streaming cost and improve the streaming quality and
robustness. Our light-weight caching algorithms exploit the unique tile
consumption patterns of live 360 degree video streaming to achieve high tile
caching gains. Through extensive experiments driven by real 360 degree video
streaming traces, we demonstrate that edge caching algorithms specifically
designed for live 360 degree video streaming can achieve high streaming cost
savings with small edge cache space consumption. Coffee, guided by viewer FoV
predictions, significantly reduces back-haul traffic up to 76% compared to
state-of-the-art edge caching algorithms. Furthermore, we develop a
transcoding-aware variant (TransCoffee) and evaluate it using comprehensive
experiments, which demonstrate that TransCoffee can achieve 63\% lower cost
compared to state-of-the-art transcoding-aware approaches