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Sign language parameters classification from 3D virtual charactarers

机译:来自3D虚拟角色的手语参数分类

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摘要

Deaf and hard of hearing individuals are facing lot of barriers that prevent them from accessing to information. Signing avatars help them to overcome these barriers. These virtual characters are able to “speak” Sign language and subsequently able to translate any kind of information into Sign language. Recently, thanks to the advances in virtual reality and human modeling techniques, signing avatars are increasingly used by deaf communities. Moreover, thanks to the apparition of new standards, 3D signing avatars are constantly exchanged and uploaded to the World Wide Web. Unfortunately, current search engines and catalog systems that deal with signing avatars are not indexing them efficiently. In this paper, we present a new approach to recognize and index 3D signed contents based on the recognition and classification of sign language parameters. Our approach uses an adaptation of the Longest common subsequence algorithm combined with Minkowski similarity measures.
机译:聋哑人和重听者面临很多障碍,阻碍他们获取信息。签名头像有助于他们克服这些障碍。这些虚拟字符能够“说”手语,随后可以将任何类型的信息翻译成手语。最近,由于虚拟现实技术和人体建模技术的进步,聋人社区越来越多地使用签名化身。此外,由于采用了新标准,因此3D签名化身会不断交换并上传到万维网。不幸的是,当前处理签名化身的搜索引擎和目录系统无法对其进行有效索引。在本文中,我们提出了一种基于手语参数的识别和分类的识别和索引3D签名内容的新方法。我们的方法使用了最长公共子序列算法的改编,并结合了Minkowski相似性度量。

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