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Viewing 360 degree videos: Motion prediction and bandwidth optimization

机译:查看360度视频:运动预测和带宽优化

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360-degree video transmission consumes 4~6× the bandwidth of a regular video, and thus imposes significant challenges to networks. To address this challenge, in this paper, we propose a motion-prediction-based transmission mechanism that matches network video transmission to viewer needs. Ideally, if viewer motion is perfectly known in advance, we could reduce bandwidth consumption by 80%. Practically, however, we have to address the random nature of viewer motion, in order to guarantee the quality of the viewing experience. Based on our experimental study of viewer motion (comprising 16 video clips and over 150 subjects), we propose a machine learning mechanism that predicts viewer motion. Based on such predictions, we propose a partial-content-transmission mechanism that reduces the overall bandwidth consumption while providing probabilistic performance guarantees. Real-trace-based evaluations show that the proposed scheme significantly reduces bandwidth consumption with negligible performance degradation. For example, given a failure ratio of 0.1%, we can reduce bandwidth consumption by more than 40%.
机译:360度视频传输消耗常规视频的带宽4〜6倍,因此对网络施加了重大挑战。为了解决这一挑战,在本文中,我们提出了一种基于运动预测的传输机制,与网络视频传输与观众需求相匹配。理想情况下,如果提前知道查看器运动,我们可以将带宽消耗降低80%。然而,实际上,我们必须解决观看者运动的随机性,以保证观看体验的质量。基于我们对观众运动的实验研究(包括16个视频剪辑和超过150个科目),我们提出了一种预测观察者运动的机器学习机制。基于此类预测,我们提出了一种部分内容传输机制,可以减少整体带宽消耗,同时提供概率性能保证。基于轨迹的评估表明,该方案显着降低了具有可忽略的性能下降的带宽消耗。例如,给定失败比为0.1%,我们可以将带宽消耗降低超过40%。

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