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SVM-Based Synthetic Fingerprint Discrimination Algorithm and Quantitative Optimization Strategy

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  • Suhang Chen
  • Sheng Chang
  • Qijun Huang
  • Jin He
  • Hao Wang
  • Qiangui Huang

Abstract

Synthetic fingerprints are a potential threat to automatic fingerprint identification systems (AFISs). In this paper, we propose an algorithm to discriminate synthetic fingerprints from real ones. First, four typical characteristic factors—the ridge distance features, global gray features, frequency feature and Harris Corner feature—are extracted. Then, a support vector machine (SVM) is used to distinguish synthetic fingerprints from real fingerprints. The experiments demonstrate that this method can achieve a recognition accuracy rate of over 98% for two discrete synthetic fingerprint databases as well as a mixed database. Furthermore, a performance factor that can evaluate the SVM's accuracy and efficiency is presented, and a quantitative optimization strategy is established for the first time. After the optimization of our synthetic fingerprint discrimination task, the polynomial kernel with a training sample proportion of 5% is the optimized value when the minimum accuracy requirement is 95%. The radial basis function (RBF) kernel with a training sample proportion of 15% is a more suitable choice when the minimum accuracy requirement is 98%.

Suggested Citation

  • Suhang Chen & Sheng Chang & Qijun Huang & Jin He & Hao Wang & Qiangui Huang, 2014. "SVM-Based Synthetic Fingerprint Discrimination Algorithm and Quantitative Optimization Strategy," PLOS ONE, Public Library of Science, vol. 9(10), pages 1-9, October.
  • Handle: RePEc:plo:pone00:0111099
    DOI: 10.1371/journal.pone.0111099
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