基于过点信息的手语单词识别及其与手势动作的关联

Shinpei Igari, Naohiro Fukumura
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引用次数: 4

摘要

对日语手语识别系统进行了研究。在我们之前的研究中,我们只关注优势臂运动中的JSL词,并提出了一种基于最小抽搐模型的识别方法,利用优势臂运动轨迹数据中提取的过孔点作为特征点。在本研究中,为了识别在双手动作中执行的JSL单词,我们研究了一种双臂匹配结果的整合方法。作为手语识别系统的一部分,我们将JSL动作分为三类。我们使用相关系数和两臂运动路径长度的差异作为JSL分类的一个因素。通过识别实验,对多个说话人的80个单词进行识别,识别率达到98%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sign language word recognition using via-point information and correlation of they bimanual movements
We have studied Japanese sign Language (JSL) recognition system. In our previous research, we focus on only JSL words performed in the movement of the dominant arm and proposed a recognition method using via-points extracted from the trajectory data of the dominant arm as feature points based on the minimum jerk model. In this study, in order to recognize JSL words performed in bimanual movements, we investigated an integration method of the matching result of the both arms. We classified JSL movements into three categories as part of sign language recognition system. And we used a correlation coefficient and difference of the path length between the both arm movements as a factor to classify JSL. As a result of recognition experiment, the recognition rate was 98% or more in 80 words from multiple speakers.
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