Sign Language Recognition Based on Position and Movement Using Multi-Stream HMM

Masaru Maebatake, Iori Suzuki, M. Nishida, Y. Horiuchi, S. Kuroiwa
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引用次数: 43

Abstract

In sign language, hand positions and movements represent meaning of words. Hence, we have been developing sign language recognition methods using both of hand positions and movements. However, in the previous studies, each feature has same weight to calculate the probability for the recognition. In this study, we propose a sign language recognition method by using a multi-stream HMM technique to show the importance of position and movement information for the sign language recognition. We conducted recognition experiments using 21,960 sign language word data. As a result, 75. 6% recognition accuracy was obtained with the appropriate weight (position:movement=0. 2:0. 8), while 70. 6% was obtained with the same weight. From the result, we can conclude that the hand movement is more important for the sign language recognition than the hand position. In addition, we conducted experiments to discuss the optimal number of the states and mixtures and the best accuracy was obtained by the 15 states and two mixtures for each word HMM.
基于位置和运动的多流HMM手语识别
在手语中,手的位置和动作代表了单词的意思。因此,我们一直在开发同时使用手部位置和动作的手语识别方法。然而,在以往的研究中,每个特征都有相同的权重来计算识别的概率。在这项研究中,我们提出了一种使用多流HMM技术的手语识别方法,以显示位置和运动信息对手语识别的重要性。我们使用21,960个手语单词数据进行了识别实验。结果是75。选择合适的权重(位置:运动=0),识别准确率达到6%。2:0。8),而70;在相同重量下得到6%。从结果可以看出,手的动作比手的位置对手语识别更重要。此外,我们进行了实验,讨论了状态和混合的最优数量,每个单词HMM的15个状态和两种混合获得了最好的精度。
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