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首页> 外文期刊>Selected Topics in Signal Processing, IEEE Journal of >Probabilistic Tile Visibility-Based Server-Side Rate Adaptation for Adaptive 360-Degree Video Streaming
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Probabilistic Tile Visibility-Based Server-Side Rate Adaptation for Adaptive 360-Degree Video Streaming

机译:基于概率的瓷砖可见性的服务器侧速率适应自适应360度视频流

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摘要

In this article, we study the server-side rate adaptation problem for streaming tile-based adaptive 360-degree videos to multiple users who are competing for transmission resources at the network bottleneck. Specifically, we develop a convolutional neural network (CNN)-based viewpoint prediction model to capture the nonlinear relationship between the future and historical viewpoints. A Laplace distribution model is utilized to characterize the probability distribution of the prediction error. Given the predicted viewpoint, we then map the viewport in the spherical space into its corresponding planar projection in the 2-D plane, and further derive the visibility probability of each tile based on the planar projection and the prediction error probability. According to the visibility probability, tiles are classified as viewport, marginal and invisible tiles. The server-side tile rate allocation problem for multiple users is then formulated as a non-linear discrete optimization problem to minimize the overall received video distortion of all users and the quality difference between the viewport and marginal tiles of each user, subject to the transmission capacity constraints and users' specific viewport requirements. We develop a steepest descent algorithm to solve this non-linear discrete optimization problem, by initializing the feasible starting point in accordance with the optimal solution of its continuous relaxation. Extensive experimental results show that the proposed algorithm can achieve a near-optimal solution, and outperforms the existing rate adaptation schemes for tile-based adaptive 360-video streaming.
机译:在本文中,我们研究了服务器端速率适应问题,用于将基于地块的自适应360度视频流传输到竞争网络瓶颈的传输资源的多个用户。具体地,我们开发了一种基于卷积神经网络(CNN)的视点预测模型,以捕获未来和历史观点之间的非线性关系。 LAPPlace分布模型用于表征预测误差的概率分布。考虑到预测的观点,我们将球面空间中的视口映射到2-D平面中的相应平面投影,并进一步基于平面投影和预测误差概率导出每个瓦片的可见性概率。根据可见性概率,瓷砖被归类为视口,边缘和隐形瓷砖。然后将多个用户的服务器端平铺速率分配问题作为非线性离散优化问题,以最小化所有用户的整体接收视频失真以及每个用户的视口和边缘区块之间的质量差异,受到传输容量约束和用户的特定视口要求。我们开发了一种陡峭的阶级算法来解决这种非线性离散优化问题,根据其连续放松的最佳解决方案初始化可行的起点。广泛的实验结果表明,该算法可以实现近最优的解决方案,并且优于基于图块的自适应360视频流的现有速率适应方案。

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