期刊文献+

Contact-free and pose-invariant hand-biometric-based personal identification system using RGB and depth data

Contact-free and pose-invariant hand-biometric-based personal identification system using RGB and depth data
原文传递
导出
摘要 Hand-biometric-based personal identification is considered to be an effective method for automatic recognition. However, existing systems require strict constraints during data acquisition, such as costly devices,specified postures, simple background, and stable illumination. In this paper, a contactless personal identification system is proposed based on matching hand geometry features and color features. An inexpensive Kinect sensor is used to acquire depth and color images of the hand. During image acquisition, no pegs or surfaces are used to constrain hand position or posture. We segment the hand from the background through depth images through a process which is insensitive to illumination and background. Then finger orientations and landmark points, like finger tips or finger valleys, are obtained by geodesic hand contour analysis. Geometric features are extracted from depth images and palmprint features from intensity images. In previous systems, hand features like finger length and width are normalized, which results in the loss of the original geometric features. In our system, we transform 2D image points into real world coordinates, so that the geometric features remain invariant to distance and perspective effects. Extensive experiments demonstrate that the proposed hand-biometric-based personal identification system is effective and robust in various practical situations. Hand-biometric-based personal identification is considered to be an effective method for automatic recognition. However, existing systems require strict constraints during data acquisition, such as costly devices,specified postures, simple background, and stable illumination. In this paper, a contactless personal identification system is proposed based on matching hand geometry features and color features. An inexpensive Kinect sensor is used to acquire depth and color images of the hand. During image acquisition, no pegs or surfaces are used to constrain hand position or posture. We segment the hand from the background through depth images through a process which is insensitive to illumination and background. Then finger orientations and landmark points, like finger tips or finger valleys, are obtained by geodesic hand contour analysis. Geometric features are extracted from depth images and palmprint features from intensity images. In previous systems, hand features like finger length and width are normalized, which results in the loss of the original geometric features. In our system, we transform 2D image points into real world coordinates, so that the geometric features remain invariant to distance and perspective effects. Extensive experiments demonstrate that the proposed hand-biometric-based personal identification system is effective and robust in various practical situations.
出处 《Journal of Zhejiang University-Science C(Computers and Electronics)》 SCIE EI 2014年第7期525-536,共12页 浙江大学学报C辑(计算机与电子(英文版)
基金 Project supported by the National Natural Science Foundation of China(Nos.61340046,60875050,and 60675025) the National High-Tech R&D Program(863)of China(No.2006AA04Z247) the Scientific and Technical Innovation Commission of Shenzhen Municipality(Nos.JCYJ20120614152234873,CXC201104210010A,JCYJ20130331144631730,and JCYJ20130331144716089) the Specialized Research Fund for the Doctoral Program of Higher Education,China(No.20130001110011)
关键词 Hand biometric Contact free Pose invariant Identification system Multiple features Hand biometric,Contact free,Pose invariant,Identification system,Multiple features
  • 相关文献

参考文献20

  • 1Choras,R.S,Choras,M. Hand shape geometry and palmprint features for the personal identifi cation[A].2006.1085-1090.
  • 2Dai,J,Feng,J,Zhou,J. Robust and effi-cient ridge-based palmprint matching[J].IEEE Transactions on Pattern Analysis and Machine Intelligence,2012,(08):1618-1632.
  • 3Kanhangad,V,Kumar,A,Zhang,D. Hu-man hand identifi cation with 3D hand pose varia-tions[A].2010.17-21.
  • 4Kanhangad,V,Kumar,A,Zhang,D. Contactless and pose invariant biometric identifi cation using hand surface[J].IEEE Transactions on Image Processing,2011,(05):1415-1424.
  • 5Kanhangad,V,Kumar,A,Zhang,D. A uni-fi ed framework for contactless hand verifi cation[J].IEEE Trans Inform Forens Secur,2011,(03):1014-1027.
  • 6Kong,A,Zhang,D. Competitive coding scheme for palmprint verifi cation[A].2004.520-523.
  • 7Kumar,A,Zhang,D. Hand geometry recog-nition using entropy-based discretization[J].IEEE Trans Inform Forens Secur,2007,(02):181-187.
  • 8Malassiotis,S,Aifanti,N,Strintzis,M.G. Per-sonal authentication using 3-D fi nger geometry[J].IEEE Trans Inform Forens Secur,2006,(01):12-21.
  • 9Methani,C,Namboodiri,A.M. Pose invari-ant palmprint recognition[J].LNCS,2009.577-586.
  • 10Michael,G.K.O,Connie,T,Teoh,A.B.J. A con-tactless biometric system using multiple hand features[J].J Vis Commun Image Represent,2012,(07):1068-1084.

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部