Automatic Keyword Extraction for Viewport Prediction of 360-degree Virtual Tourism Video

Long Doan, Tho Nguyen Duc, Chuanzhe Jing, E. Kamioka, Phan Xuan Tan
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Abstract

In 360-degree streaming videos, viewport prediction can reduce the bandwidth needed during the stream while still maintaining a quality experience for the users by streaming only the area that is visible to the user. Existing research in viewport prediction aims to predict the user’s viewport with data from the user’s head movement trajectory, video saliency, and subtitles of the video. While these subtitles can contain much information necessary for viewport prediction, previous studies can only extract these information manually, which requires in-depth knowledge about the topic of the video. Moreover, extracting these information by hand can still miss some important keywords from the subtitles and limit the accuracy of the viewport prediction. In this paper, we focus on automate this extraction process by proposing three types of automatic keyword extraction methods, namely Adverb, NER (Named entity recognition) and Adverb+NER. We provide an analysis to demonstrate the effectiveness of our automatic methods compared to extracting important keywords by hand. We also incorporate our methods into an existing viewport prediction model to improve prediction accuracy. The experimental results show that the model with our automatic keyword extraction methods outperforms baseline methods which only use manually extracted information.
360度虚拟旅游视频视口预测关键字自动提取
在360度流媒体视频中,视口预测可以减少流媒体过程中所需的带宽,同时通过只流用户可见的区域,仍然为用户保持高质量的体验。现有的视口预测研究旨在利用用户头部运动轨迹、视频显著性和视频字幕的数据来预测用户的视口。虽然这些字幕可以包含许多视口预测所需的信息,但以前的研究只能手动提取这些信息,这需要对视频主题有深入的了解。此外,手工提取这些信息仍然会遗漏一些重要的关键词,限制了视口预测的准确性。本文通过提出Adverb、NER (Named entity recognition,命名实体识别)和Adverb+NER三种自动关键字提取方法,将关键字提取过程自动化。我们提供了一个分析来证明与手工提取重要关键字相比,我们的自动方法的有效性。我们还将我们的方法结合到现有的视口预测模型中,以提高预测精度。实验结果表明,采用自动关键字提取方法的模型优于仅使用人工提取信息的基线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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