Applying mean shift and motion detection approaches to hand tracking in sign language
Publish Year: 1392
Type: Journal paper
Language: English
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Document National Code:
JR_JADM-2-1_003
Index date: 28 February 2015
Applying mean shift and motion detection approaches to hand tracking in sign language abstract
Hand gesture recognition is very important to communicate in a sign language. In this paper, an effective object tracking and the hand gesture recognition method is proposed. This method is a combination of two well-known approaches, the mean shift and the motion detection algorithm. The mean shift algorithm can track objects based on a color, then when hand passes the face occlusion happens. Several solutions such as the particle filter, kalman filter and dynamic programming tracking have been used, but they are complicated, time consuming and so expensive. The proposed method is so easy, fast, efficient and low costly. The motion detection algorithm in the first step subtracts the previous frame from the current frame to obtain the changes between two images and white pixels (motion level) are detected by using the threshold level. Then the mean shift algorithm is applied for tracking the hand motion. Simulation results show that this method is faster than two times compared with the old common algorithms
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Applying mean shift and motion detection approaches to hand tracking in sign language authors
m.m hosseini
Islamic Azad University, Shahrood branch, Shahroodt, Iran.
j hassanian
Islamic Azad University, Shahrood branch, Shahroodt, Iran.