In-air hand gesture signature recognition system based on 3-dimensional imagery

被引:0
作者
Wee How Khoh
Ying Han Pang
Andrew Beng Jin Teoh
机构
[1] Multimedia University,
[2] Yonsei University,undefined
来源
Multimedia Tools and Applications | 2019年 / 78卷
关键词
Dynamic signature; Hand gesture signature; Biometrics; Motion analysis; Gesture recognition;
D O I
暂无
中图分类号
学科分类号
摘要
A traditional online handwritten signature recognition system requires direct contact to acquisition device and usually will leave a traceable print on the surface. This made a signature possible and vulnerable to certain attempts of tracking and imitated. Looking into this shortfall, this paper proposes a novel approach to recognise an individual based on his/ her in-air hand motion while signing his/her signature. In this study, a low-cost acquisition device – Microsoft Kinect sensor is adopted to capture an image sequence of hand gesture signature. Palm region is first located and segmented through a predictive palm segmentation algorithm, which are then combined to generate a volume data. The volume data is condensed and reduced into a motion representation image by means of Motion History Image (MHI), which produces rich motion and temporal information. Several features are extracted from the MHI for empirical evaluation. Two classical recognition modes – identification and verification, are testified with an in-house database (HGS database). The proposed system achieves 90.4% identification accuracy and 3.22% equal error rate in verification mode. The experimental results substantiated the potential of the proposed system.
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页码:6913 / 6937
页数:24
相关论文
共 53 条
[1]  
Babu RV(2004)Recognition of human actions using motion history information extracted from the compressed video Image Vis Comput 22 597-607
[2]  
Ramakrishnan KR(2016)Survey on 3D Hand Gesture Recognition IEEE Transactions on Circuits and Systems for Video Technology 26 1659-1673
[3]  
Cheng Hong(1997)The representation and recognition of human movement using temporal templates Proc IEEE Comput Soc Conf Comput Vis Pattern Recogn 23 928-934
[4]  
Yang Lu(2007)HMM-based on-line signature verification: feature extraction and signature modeling Pattern Recogn Lett 28 2325-2334
[5]  
Liu Zicheng(2010)Online signature verification with support vector machines based on LCSS kernel functions IEEE Trans Syst Man Cybern B, Cybern Publ IEEE Syst Man Cybern Soc 40 1088-1100
[6]  
Davis JW(2014)Online handwritten signature verification using neural network classifier based on principal component analysis TheScientificWorldJournal 2014 381469-20
[7]  
Bobick AF(2004)An introduction to biometric recognition IEEE Trans Circuits Syst Video Technol 14 4-11943
[8]  
Fierrez J(2015)A novel approach to extract hand gesture feature in depth images Multimedia Tools and Applications 75 11929-257
[9]  
Ortega-Garcia J(1997)On-line handwritten signature verification using hidden Markov model features Proc Fourth Int Conf Doc Anal Recogn 1 253-21
[10]  
Ramos D(2014)Dynamic signature verification based on hybrid wavelet- Fourier transform Sunway Acad J 11 11-2408