从字幕中学习手语:一个弱监督的手语识别方法

H. Cooper, R. Bowden
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引用次数: 76

摘要

本文介绍了一种全自动、无监督的字幕符号识别方法。它通过使用数据挖掘来对齐视频部分中的对应关系来实现这一点。在头部和手部跟踪的基础上,使用一种新的先验挖掘的时间约束适应方法,在提出的上下文否定选择方法的帮助下提取视频的相似区域。这些区域在时间域中进行细化,以隔离每个示例中出现的类似符号。该系统被证明可以自动识别和分割包含各种主题的标准新闻广播的标志。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning signs from subtitles: A weakly supervised approach to sign language recognition
This paper introduces a fully automated, unsupervised method to recognise sign from subtitles. It does this by using data mining to align correspondences in sections of videos. Based on head and hand tracking, a novel temporally constrained adaptation of a priori mining is used to extract similar regions of video, with the aid of a proposed contextual negative selection method. These regions are refined in the temporal domain to isolate the occurrences of similar signs in each example. The system is shown to automatically identify and segment signs from standard news broadcasts containing a variety of topics.
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