Abstract
To establish a universal communication environment, computer systems should recognize various modal communication languages. In conventional sign language recognition, recognition is performed by the word unit using gesture information of hand shape and movement. In the conventional studies, each feature has same weight to calculate the probability for the recognition. We think hand position is very important for sign language recognition, since the implication of word differs according to hand position. 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 28,200 sign language word data. As a result, 82.1 % recognition accuracy was obtained with the appropriate weight (position:movement=0.2:0.8), while 77.8 % was obtained with the same weight. As a result, we demonstrated that it is necessary to put weight on movement than position in sign language recognition.