directional NSCT coefficients are used as effective
palm vein features.
We apply a pre-processing of the image to
eliminate the noise and the unwanted points.
Next, all the NSCT coefficients in each
directional subband are used to extract palm vein
features. The created palm vein vector extracts
desirable characteristics of features in both multi-
scale and multi-directions. These features are encoded
to generate a signature of 676 bytes. Finally,
hamming distance is computed in comparison.
Experimental results show the effectiveness of the
proposed NSCT feature based method in verification
and identification modes. We obtain an excellent
results of 99,80% of rank one recognition rate and
0.2000% of EER.
Future research will focus on the improvement of
the execution time and the performance of the
proposed algorithm fusion with the multimodality of
palm and dorsal parts of hand.
ACKNOWLEDGEMENTS
The authors would like to acknowledge the National
Laboratory of Pattern Recognition, Institute of Auto-
mation, Chinese Academy of Sciences for their sup-
ply of Casia Multi-Spectral Palm print image data-
base.
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