足球视频中人脸与文本线索的匹配

M. Bertini, A. Bimbo, W. Nunziati
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引用次数: 14

摘要

在足球视频中,最重要的动作之后通常是参与动作的球员的特写镜头。自动标注这些镜头中球员的身份对于索引和检索应用程序非常有价值。然而,由于姿态和光照的高度变化,当前的人脸识别方法不适合这项任务。我们展示了如何利用足球视频固有的多媒体结构来了解球员的身份,而不依赖于直接的面部识别。所提出的方法是基于兴趣点检测器的组合来“读取”文本线索,这些线索允许用球员的名字标记球员,例如球衣上描绘的号码,或者显示其名字的叠加文本标题。未被此过程识别的玩家,然后通过面部相似性测量,再次基于局部显著补丁的外观,分配到一个标记的面孔。我们展示了从国家队之间最近的各种比赛的足球视频中获得的结果
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Matching Faces with Textual Cues in Soccer Videos
In soccer videos, most significant actions are usually followed by close-up shots of players that take part in the action itself. Automatically annotating the identity of the players present in these shots would be considerably valuable for indexing and retrieval applications. Due to high variations in pose and illumination across shots however, current face recognition methods are not suitable for this task. We show how the inherent multiple media structure of soccer videos can be exploited to understand the players' identity without relying on direct face recognition. The proposed method is based on a combination of interest point detector to "read" textual cues that allow to label a player with its name, such as the number depicted on its jersey, or the superimposed text caption showing its name. Players not identified by this process are then assigned to one of the labeled faces by means of a face similarity measure, again based on the appearance of local salient patches. We present results obtained from soccer videos taken from various recent games between national teams
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