Journal of Electrical and Computer Engineering (Jan 2016)

Spatial Circular Granulation Method Based on Multimodal Finger Feature

  • Jinfeng Yang,
  • Zhen Zhong,
  • Guimin Jia,
  • Yanan Li

DOI
https://doi.org/10.1155/2016/7913170
Journal volume & issue
Vol. 2016

Abstract

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Finger-based personal identification has become an active research topic in recent years because of its high user acceptance and convenience. How to reliably and effectively fuse the multimodal finger features together, however, has still been a challenging problem in practice. In this paper, viewing the finger trait as the combination of a fingerprint, finger vein, and finger-knuckle-print, a new multimodal finger feature recognition scheme is proposed based on granular computing. First, the ridge texture features of FP, FV, and FKP are extracted using Gabor Ordinal Measures (GOM). Second, combining the three-modal GOM feature maps in a color-based manner, we then constitute the original feature object set of a finger. To represent finger features effectively, they are granulated at three levels of feature granules (FGs) in a bottom-up manner based on spatial circular granulation. In order to test the performance of the multilevel FGs, a top-down matching method is proposed. Experimental results show that the proposed method achieves higher accuracy recognition rate in finger feature recognition.