Finger vein recognition using two parallel enhancement approachs based fuzzy histogram equalization

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Abstract

This paper evaluates a set of enhancement stages for finger vein enhancement that not only has low computational complexity but also high distinguishing power. This proposed set of enhancement stages is centered around fuzzy histogram equalization. Two sets of evaluation are carried out: one with the proposed approach and one with another unique approach that was formulated by rearranging and cropping down the preprocessing steps of the original proposed approach. To extract features, a combination of Hierarchical Centroid and Histogram of Gradients was used. Both enhancement stages were evaluated with K Nearest Neighbor and Deep Neural Networks using 6 fold stratified cross validation. Results showed improvement as compared to three latest benchmarks in this field that used 6-fold validation.

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APA

Zidan, K. A., & Jumaa, S. S. (2019). Finger vein recognition using two parallel enhancement approachs based fuzzy histogram equalization. Periodicals of Engineering and Natural Sciences, 7(1), 514–529. https://doi.org/10.21533/pen.v7i1.434

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