An accurate lecture video segmentation method by using sift and adaptive threshold

H. Jeong, Tak-Eun Kim, Myoung-Ho Kim
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引用次数: 32

Abstract

Much research has been done in the past for segmenting lecture videos by detecting slide transitions. However, they do not perform well on certain kinds of videos recorded under non-stationary settings: the changes of a camera position or focus during a lecture. Since such non-stationary settings greatly affect visual properties of slides, the existing approaches utilizing global features and a global threshold, often have trouble in computing similarities between slides. In this paper, we propose a highly accurate method for lecture video segmentation by using SIFT and an adaptive threshold. By using SIFT, we can reliably match two slides whose contents are the same but are visually different. We also propose an adaptive threshold selection algorithm that detects slide transitions accurately by considering characteristics of features. Through various experiments that use real lecture videos, we show that our method provides 30% improvement in the average F1-score over other existing methods.
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一种基于sift和自适应阈值的演讲视频精确分割方法
在过去,通过检测幻灯片过渡来分割讲座视频已经做了很多研究。然而,它们在非固定设置下录制的某些类型的视频中表现不佳:在讲座期间相机位置或焦点的变化。由于这种非平稳设置极大地影响了幻灯片的视觉属性,现有的利用全局特征和全局阈值的方法在计算幻灯片之间的相似度时经常遇到麻烦。本文提出了一种基于SIFT和自适应阈值的演讲视频分割方法。通过SIFT,我们可以可靠地匹配两张内容相同但视觉上不同的幻灯片。我们还提出了一种自适应阈值选择算法,该算法通过考虑特征的特征来准确检测滑动过渡。通过使用真实讲座视频的各种实验,我们表明我们的方法比其他现有方法的平均f1分数提高了30%。
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