基于静态和动态特征的印尼语手语识别

Wijayanti Nurul Khotimah, N. Suciati, Ignatius Benedict
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引用次数: 0

摘要

一些听障人士面临沟通问题。尽管他们可以用手语与他人交流,但很多人不懂手语。因此,他们只能与有限的人交流。因此,我们需要一个手语识别系统(slr)来捕捉手语并将其翻译成文本。一些国家已经对单反进行了一些研究。但只有少数人对印尼手语进行了研究。此外,对静态手语识别的研究仅限于静态特征。也有研究者对动态特征进行了研究,但动态特征只适用于动态手语。因此,在本研究中,我们提出将静态特征与动态特征相结合来识别静态手语和动态手语。在本研究中,我们进行了两个集成场景。根据我们的实验,在分类之前识别一个手势是静态的还是动态的产生了很好的结果。该研究在识别20个单词时准确率达到89%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Indonesian Sign Language Recognition by Using the Static and Dynamic Features
some hearing-impaired people face a communication problem. Even though they can communicate with others by using sign language, but a lot of people cannot understand the sign language. As a consequence, they can only communicate with limited people. Therefore, we need a Sign Language Recognition System (SLRs) which catch the sign language and translate them into text. Some research about SLRs have been done in some countries. But only a few people conducted research on Indonesian sign language. Further, the research were limited to static features for recognizing static sign language. Other researcher conducted a research on dynamic features, but the dynamic features were good only for dynamic sign language. Thus, in this study we proposed the integration between the static features and dynamic features to recognise both static sign language and dynamic sign language. In this study we conducted two integration scenario. Based on our experiment, recognising whether a gesture was static or dynamic before doing classification produced a good result. The accuracy of this proposed study reach 89% to recognise 20 words.
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