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Automatic Route Video Summarization Based on Image Analysis for Intuitive Touristic Experience

机译:基于图像分析的自动路线视频汇总,带给您直观的旅游体验

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摘要

Currently, many tourists search for and watch tourism videos on the Internet when planning a sightseeing tour. In order to quickly plan a sightseeing route, a shorter playback time of tourism videos is desirable. For this purpose, time-lapse playback would be effective. However, the faster the playback is, the lower the degree of comprehension of the viewers will be. In this paper, we propose a novel time-lapse-based video summarization method without the substantial loss of information important for viewers to plan a tour route. In the proposed method, we focus on scene changes in the video. We extract scenes with a certain level of change compared with previous scenes as important (slowly played back) in the summarized video, while other scenes are fast-forwarded. We investigated the appropriate playback speed of sightseeing videos. As a result of a questionnaire, we found that a playback speed between ×4 and ×8 was the most effective for viewers to understand the sightseeing information for tour route planning. In addition, to evaluate the effectiveness of our proposed method, we conducted experiments with 20 participants using a sightseeing video taken in Kyoto. Comparing the video summarized with our method and that summarized manually (by voting for necessary/ unnecessary scenes), our method identified the important scenes with an F-measure of 62.22%.
机译:当前,许多游客在计划观光旅游时都在Internet上搜索和观看旅游视频。为了快速计划观光路线,期望较短的旅游视频回放时间。为此,延时播放将是有效的。但是,回放越快,观众的理解度就越低。在本文中,我们提出了一种新颖的基于时移的视频摘要方法,该方法不会大量丢失对观众规划游览路线重要的信息。在提出的方法中,我们专注于视频中的场景变化。在摘要视频中,我们提取的场景与以前的场景相比具有一定程度的变化,这很重要(缓慢回放),而其他场景则是快进的。我们研究了观光视频的适当播放速度。根据问卷调查的结果,我们发现,在×4和×8之间的回放速度对于观看者了解观光信息以进行旅行路线规划最有效。此外,为评估我们提出的方法的有效性,我们使用在京都拍摄的观光视频与20名参与者进行了实验。将通过我们的方法摘要的视频与通过手动方法摘要的视频(通过对必要/不必要的场景进行投票)进行比较,我们的方法以62.22%的F值确定了重要的场景。

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