4.5 Article

Sequential Reinforced 360-Degree Video Adaptive Streaming With Cross-User Attentive Network

Journal

IEEE TRANSACTIONS ON BROADCASTING
Volume 67, Issue 2, Pages 383-394

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TBC.2020.3028329

Keywords

Streaming media; Prediction algorithms; Quality of experience; Predictive models; Bit rate; Bandwidth; Reinforcement learning; Viewpoint prediction; cross-user; sequential decision structure

Funding

  1. NSFC [U1908209, 61571413, 61632001]
  2. National Key Research and Development Program of China [2018AAA0101400]

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In this study, a tile-based 360-degree video streaming scheme with a cross-user attentive network (CUAN) and a sequential reinforcement learning-based (360SRL) ABR approach were proposed. Experimental results showed that these methods outperformed existing approaches in long-term viewpoint prediction and adaptive bitrate optimization.
In the tile-based 360-degree video streaming, predicting user's future viewpoints and developing adaptive bitrate (ABR) algorithms are essential for optimizing user's quality of experience (QoE). Traditional single-user based viewpoint prediction methods fail to achieve good performance in long-term prediction, and the recently proposed reinforcement learning (RL) based ABR schemes applied in traditional video streaming can not be directly applied in the tile-based 360-degree video streaming due to the exponential action space. Therefore, we propose a sequential reinforced 360-degree video streaming scheme with cross-user attentive network. Firstly, considering different users may have the similar viewing preference on the same video, we propose a cross-user attentive network (CUAN), boosting the performance of long-term viewpoint prediction by selectively utilizing cross-user information. Secondly, we propose a sequential RL-based (360SRL) ABR approach, transforming action space size of each decision step from exponential to linear via introducing a sequential decision structure. We evaluate the proposed CUAN and 360SRL using trace-driven experiments and experimental results demonstrate that CUAN and 360SRL outperform existing viewpoint prediction and ABR approaches with a noticeable margin.

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