This paper investigates adaptive streaming of one or multiple tiled 360 videos from a multi-antenna base station (BS) to one or multiple single-antenna users, respectively, in a multi-carrier wireless system. We aim to maximize the video quality while keeping rebuffering time small via encoding rate adaptation at each group of pictures (GOP) and transmission adaptation at each (transmission) slot. To capture the impact of field-of-view (FoV) prediction, we consider three cases of FoV viewing probability distributions, i.e., perfect, imperfect, and unknown FoV viewing probability distributions, and use the average total utility, worst average total utility, and worst total utility as the respective performance metrics. In the single-user scenario, we optimize the encoding rates of the tiles, encoding rates of the FoVs, and transmission beamforming vectors for all subcarriers to maximize the total utility in each case. In the multi-user scenario, we adopt rate splitting with successive decoding and optimize the encoding rates of the tiles, encoding rates of the FoVs, rates of the common and private messages, and transmission beamforming vectors for all subcarriers to maximize the total utility in each case. Then, we separate the challenging optimization problem into multiple tractable problems in each scenario. In the single-user scenario, we obtain a globally optimal solution of each problem using transformation techniques and the Karush-Kuhn-Tucker (KKT) conditions. In the multi-user scenario, we obtain a KKT point of each problem using the concave-convex procedure (CCCP). Finally, numerical results demonstrate that the proposed solutions achieve notable gains over existing schemes in all three cases. To the best of our knowledge, this is the first work revealing the impact of FoV prediction on the performance of adaptive streaming of tiled 360 videos.
翻译:本文调查一个或多个视频的适应性流流, 包括从多ANTANDA基站( BS) 向一个或多个单一ANTANDA用户分别发送一个或多个视频。 我们的目标是通过每组图片( GOP) 的编码率调整和在每个( 传输) 槽中传输适应性适应性, 最大限度地提高视频质量, 同时通过每组图片( GOP) 的编码率调整和传输适应性调整时间小化。 为了捕捉现场( FoV) 预测的影响, 我们考虑三个FOV查看概率分布的案例, 即: 完美、 不完善和未知的 FOV 观察概率分布, 并使用平均总效用、 最差的总效用以及最差的总效用。 在单个用户假设中, 我们优化的FOVVT 的计算率, 将每个最优的 最大效用变异性变异性变现速度 。