Field-of-view prediction in 360-degree videos with attention-based neural encoder-decoder networks

Jiang Yu, Yong Liu
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引用次数: 12

Abstract

In this paper, we propose attention-based neural encoder-decoder networks for predicting user Field-of-View (FoV) in 360-degree videos. Our proposed prediction methods are based on the attention mechanism that learns the weighted prediction power of historical FoV time series through end-to-end training. Attention-based neural encoder-decoder networks do not involve recursion, thus can be highly parallelized during training. Using publicly available 360-degree head movement datasets, we demonstrate that our FoV prediction models outperform the state-of-art FoV prediction models, achieving lower prediction error, higher training throughput, and faster convergence. Better FoV prediction leads to reduced bandwidth consumption, better video quality, and improved user quality of experience.
基于注意力的神经编码器-解码器网络的360度视频视场预测
在本文中,我们提出了基于注意力的神经编码器-解码器网络,用于预测360度视频中的用户视场(FoV)。我们提出的预测方法基于注意机制,通过端到端训练学习历史FoV时间序列的加权预测能力。基于注意的神经编码器-解码器网络不涉及递归,因此在训练过程中可以高度并行化。使用公开可用的360度头部运动数据集,我们证明了我们的FoV预测模型优于最先进的FoV预测模型,实现了更低的预测误差,更高的训练吞吐量和更快的收敛。更好的视场预测可以减少带宽消耗,提高视频质量,提高用户体验质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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