The Kernel Classification-Based Metric Learning in Face Verification

Authors

  • Siew-Chin Chong Faculty of Information Science & Technology, Multimedia University, Melaka, Malaysia.
  • Thian-Song Ong Faculty of Information Science & Technology, Multimedia University, Melaka, Malaysia.

Keywords:

Face Verification, Kernel Classification, Metric Learning, Support Vector Machine, Doublets.

Abstract

In this paper, a kernel classification distance metric learning framework is investigated for face verification. The framework is to model the metric learning as a Support Vector Machine face classification problem, where a Mahalanobis distance metric is learnt in the original face feature space. In the process, pairwise doublets that are constructed from the training samples can be packed and represented in a means of degree-2 polynomial kernel. By utilizing the standard SVM solver, the metric learning problem can be solved in a simpler and efficient way. We evaluate the kernel classification-based metric learning on three different face datasets. We demonstrate that the method manages to show its simplicity and robustness in face verification with satisfactory results in terms of training time and accuracy when compared with the state-of-the-art methods.

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Published

2017-06-01

How to Cite

Chong, S.-C., & Ong, T.-S. (2017). The Kernel Classification-Based Metric Learning in Face Verification. Journal of Telecommunication, Electronic and Computer Engineering (JTEC), 9(2-2), 71–75. Retrieved from https://jtec.utem.edu.my/jtec/article/view/2222