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http://dx.doi.org/10.3837/tiis.2015.07.0014

MultiView-Based Hand Posture Recognition Method Based on Point Cloud  

Xu, Wenkai (Department of Information Communications and Engineering, University of Tongmyong)
Lee, Ick-Soo (Department of Management, College of Kyungsang)
Lee, Suk-Kwan (Department of Information Security, University of Tongmyong)
Lu, Bo (Institute of Electronic Commerce and Modern Logistics, Dalian University Dalian)
Lee, Eung-Joo (Department of Information Communications and Engineering, University of Tongmyong)
Publication Information
KSII Transactions on Internet and Information Systems (TIIS) / v.9, no.7, 2015 , pp. 2585-2598 More about this Journal
Abstract
Hand posture recognition has played a very important role in Human Computer Interaction (HCI) and Computer Vision (CV) for many years. The challenge arises mainly due to self-occlusions caused by the limited view of the camera. In this paper, a robust hand posture recognition approach based on 3D point cloud from two RGB-D sensors (Kinect) is proposed to make maximum use of 3D information from depth map. Through noise reduction and registering two point sets obtained satisfactory from two views as we designed, a multi-viewed hand posture point cloud with most 3D information can be acquired. Moreover, we utilize the accurate reconstruction and classify each point cloud by directly matching the normalized point set with the templates of different classes from dataset, which can reduce the training time and calculation. Experimental results based on posture dataset captured by Kinect sensors (from digit 1 to 10) demonstrate the effectiveness of the proposed method.
Keywords
Hand posture recognition; depth information; noise reduction; 3D point cloud; Kinect;
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