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Online annotation of faces in personal videos by sequential learning

机译:通过顺序学习在线注释个人视频中的面部

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摘要

This paper addresses semi-automatic annotation of faces in personal videos. Different from previous offline annotation systems, this paper studies online annotation of faces. During an annotation session, few annotations are requested from the user only for some part of the video online. These annotations are used to train a system that will perform annotation automatically for the rest of the video. The automatic annotation results are presented to the user during the same session and the user is allowed to correct any automatic annotation mistakes. Thus, only fast and accurate face recognition methods are considered. Instead of batch learning, which has been used in the existing annotation systems, this paper proposes sequential learning methods to be used as face classifiers. Different classification methods are tested with various feature extraction methods using the same database so that a fair comparison is made among them. The results are evaluated in terms of recognition accuracies and execution time requirements.
机译:本文介绍了个人视频中人脸的半自动注释。与以前的离线注释系统不同,本文研究了面部的在线注释。在注释会话期间,仅针对在线视频的一部分向用户请求了很少的注释。这些批注用于训练一个系统,该系统将自动为视频的其余部分执行批注。自动注释结果在同一会话中显示给用户,并且允许用户纠正任何自动注释错误。因此,仅考虑快速且准确的面部识别方法。代替现有注释系统中已使用的批处理学习,本文提出了顺序学习方法用作面部分类器。使用相同的数据库,使用各种特征提取方法测试了不同的分类方法,以便在它们之间进行公平的比较。根据识别准确性和执行时间要求对结果进行评估。

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