基于字幕的360度虚拟旅游视频视口预测

Chuanzhe Jing, Tho Nguyen Duc, Phan Xuan Tan, E. Kamioka
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引用次数: 1

摘要

360度流媒体视频可以为用户提供丰富的沉浸式体验。然而,它需要一个极高的带宽网络。节省带宽消耗的常见解决方案之一是仅流式传输用户视口所覆盖的部分视频。要做到这一点,用户的观点预测是必不可少的。在现有的视口预测方法中,主要关注用户头部运动轨迹和视频显著性。它们都没有考虑视频中包含的导航信息,这些信息可以很有可能将用户的注意力转移到视频中的特定区域。这些信息可以包含在视频字幕中,特别是在360度虚拟旅游视频中。这一事实揭示了视频字幕对视口预测的潜在贡献。为此,本文提出了一种基于字幕的360度虚拟旅游视频视口预测模型。该模型利用视频字幕中的导航信息以及头部运动轨迹和视频显著性来提高预测精度。实验结果表明,该模型优于仅使用头部运动轨迹和视频显著性进行视口预测的基线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Subtitle-based Viewport Prediction for 360-degree Virtual Tourism Video
360-degree streaming videos can provide a rich immersive experiences to the users. However, it requires an extremely high bandwidth network. One of the common solutions for saving bandwidth consumption is to stream only a portion of video covered by the user’s viewport. To do that, the user’s viewpoint prediction is indispensable. In existing viewport prediction methods, they mainly concentrate on the user’s head movement trajectory and video saliency. None of them consider navigation information contained in the video, which can turn the attention of the user to specific regions in the video with high probability. Such information can be included in video subtitles, especially the one in 360-degree virtual tourism videos. This fact reveals the potential contribution of video subtitles to viewport prediction. Therefore, in this paper, a subtitle-based viewport prediction model for 360-degree virtual tourism videos is proposed. This model leverages the navigation information in the video subtitles in addition to head movement trajectory and video saliency, to improve the prediction accuracy. The experimental results demonstrate that the proposed model outperforms baseline methods which only use head movement trajectory and video saliency for viewport prediction.
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