Bag-of-Visual-Words Model for Fingerprint Classification

Bag-of-Visual-Words Model for Fingerprint Classification

Pulung Andono and Catur Supriyanto

Department of Computer Science, University of Dian Nuswantoro, Indonesia

Abstract: In this paper, fingerprint classification based on Bag-of-Visual-Word (BoVW) model is proposed. In BoVW, an image is represented as a vector of occurrence count of features or words. In order to extract the features, we use Speeded-Up Robust Feature (SURF) as the features descriptor, and Contrast Limited Adaptive Histogram Equalization (CLAHE) to enhance the quality of fingerprint images. Most of the fingerprint research areas focus on Henry’s classification instead of individual person as the target of classification. We present the evaluation of clustering algorithms such as k-means, fuzzy c-means, k-medoid and hierarchical agglomerative clustering in BoVW model for FVC2004 fingerprint dataset. Our experiment shows that k-means outperforms than other clustering algorithms. The experimental result on fingerprint classification obtains the performance of 90% by applying k-means as features descriptor clustering. The results show that CLAHE improves the performance of fingerprint classification. The using of public dataset in this paper makes opportunities to conduct the future research.

Keywords: Fingerprint classification; bag of visual word model; clustering algorithm; speeded-up robust feature; contrast limited adaptive histogram equalization.

Received May 1, 2015; accept October 19, 2015

  
Read 2500 times Last modified on Sunday, 20 May 2018 04:52
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…