A Combined Method of Skin-and Depth-based Hand
Gesture Recognition
Tukhtaev Sokhib1 and Taeg Keun
Whangbo2
1Department of IT Convergence
Engineering, Gachon University, Korea
2Department of Computer Science, Gachon University, Korea
Abstract: Kinect is a promising acquisition
device that provides useful information on a scene through color and depth
data. There has been a keen interest in utilizing Kinect in many computer
vision areas such as gesture recognition. Given the advantages that Kinect
provides, hand gesture recognition can be deployed efficiently with minor
drawbacks. This paper proposes a simple and yet efficient way of hand gesture
recognition via segmenting a hand region from both color and depth data
acquired by Kinect v1. The Inception model of the image recognition system is
used to check the reliability of the proposed method. Experimental results are
derived from a sample dataset of Microsoft Kinect hand acquisitions. Under the
appropriate conditions, it is possible to achieve high accuracy in close to real
time.
Keywords:
Gesture recognition, Microsoft
Kinect, inception model, depth.
Received September 21, 2017; accepted September 23, 2018
https://doi.org/10.34028/iajit/17/1/16