基于场景人气分级和细节控制的视频自动增强系统

Yuanyuan Wang, Yukiko Kawai, K. Sumiya, Y. Ishikawa
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引用次数: 3

摘要

随着像Netfix这样的视频点播(VOD)服务的发展,用户可以随时随地观看多种视频。最近,用户在观看视频时,经常使用移动PC通过网络搜索相关信息。但是,用户在搜索的时候,视频一直在播放,不能很好地理解和享受。需要对视频中的各种问题进行检测,以补充每个场景的相关信息进行自动搜索。然而,只有一个视频包含了每个场景的各种主题,而且观众的知识水平也不同。因此,我们开发了一种新颖的自动视频强化系统,称为TV-Binder,它根据每个场景的主题,通过添加其他相关内容(即YouTube视频,图像或地图)并删除不必要的原始场景,从一个视频流中生成与观众的兴趣和知识相关的新视频内容。因此,观众无需搜索任何内容,就可以满意而愉快地观看修改后的视频内容。首先,我们的系统通过使用封闭字幕提取主题并检测视频流中的主题场景。然后,系统根据每个原始场景的受欢迎程度和在时间压力下控制的细节水平(LOD),搜索其他必要的内容,并确定不需要的原始场景。通过这种方式,TV-Binder可以自动生成视频内容,通过两个轴将视频内容分为四个象限,一个是摘要和详细的视频,另一个是具有特定主题知识的专家和没有专业知识的普通观众的视频。本文讨论了我们的自动视频增强系统,并对其有效性进行了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Automatic Video Reinforcing System Based on Popularity Rating of Scenes and Level of Detail Controlling
With the advance of video-on-demand (VOD) services such as Netfix, users are able to watch many kinds of videos anytime and anywhere. While watching a video, recently, users often search related information about it through the Web by using mobile PC. However, users cannot satisfactorily understand and enjoy it because the video keeps playing when they search about it. It is necessary to detect various questions of the video to supplement their related information about each scene for automatic search. However, only one video includes various topics of each scene, furthermore, viewers have different levels of knowledge. Therefore, we have developed a novel automatic video reinforcing system, called TV-Binder, it generates new video contents from one video stream related to viewers' interests and knowledge by adding other related contents (i.e., YouTube videos, images or maps) and by removing unnecessary original scenes, based on topics of each scene. As a result, viewers can satisfy and joyfully watch modified video contents without searching anything. At first, our system extract topics and detect their scenes of a video stream by using closed captions. The system then searches other necessary contents and determines unwanted original scenes based on popularity rating of each original scene and level of detail (LOD) controlling under time pressure. Through this, TV-Binder can automatically generate video contents are classified into four quadrants by two axes, one is digest and detailed videos, the other one is videos for experts with knowledge about particular topics and ordinary viewers without special knowledge. In this paper, we discuss our automatic video reinforcing system and an evaluation of its effectiveness.
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