Fast face clustering based on shot similarity for browsing video

Koji Yamamoto, Osamu Yamaguchi, Hisashi Aoki
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引用次数: 3

Abstract

In this paper, we propose a new approach for clustering faces of characters in a recorded television title. The clustering results are used to catalog video clips based on subjects’ faces for quick scene access. The main goal is to obtain a result for cataloging in tolerable waiting time after the recording, which is less than 3 minutes per hour of video clips. Although conventional face recognition-based clustering methods can obtain good results, they require considerable processing time. To enable high-speed processing, we use similarities of shots where the characters appear to estimate corresponding faces instead of calculating distance between each facial feature. Two similar shot-based clustering (SSC) methods are proposed. The first method only uses SSC and the second method uses face thumbnail clustering (FTC) as well. The experiment shows that the average processing time per hour of video clips was 350 ms and 31 seconds for SSC and SSC+FTC, respectively, despite the decrease in the average number of different person’s faces in a catalog being 6.0% and 0.9% compared to face recognition-based clustering.
基于镜头相似度的浏览视频快速人脸聚类
在本文中,我们提出了一种新的方法来聚类录制电视标题中的人物面孔。聚类结果用于根据受试者的面部对视频片段进行分类,以便快速访问场景。主要目标是在录制后可容忍的等待时间内获得编目结果,即每小时视频剪辑少于3分钟。传统的基于人脸识别的聚类方法虽然可以获得较好的结果,但需要相当长的处理时间。为了实现高速处理,我们使用人物出现的镜头的相似性来估计相应的面孔,而不是计算每个面部特征之间的距离。提出了两种相似的基于镜头的聚类方法。第一种方法只使用SSC,第二种方法也使用人脸缩略图聚类(FTC)。实验表明,尽管与基于人脸识别的聚类相比,目录中不同人脸的平均数量减少了6.0%和0.9%,但SSC和SSC+FTC的视频片段每小时的平均处理时间分别为350 ms和31秒。
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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