Online learning in biometrics: A case study in face classifier update

Richa Singh, Mayank Vatsa, A. Ross, A. Noore
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引用次数: 9

Abstract

In large scale applications, hundreds of new subjects may be regularly enrolled in a biometric system. To account for the variations in data distribution caused by these new enrollments, biometric systems require regular re-training which usually results in a very large computational overhead. This paper formally introduces the concept of online learning in biometrics. We demonstrate its application in classifier update algorithms to re-train classifier decision boundaries. Specifically, the algorithm employs online learning technique in a 2ν-Granular Soft Support Vector Machine for rapidly training and updating face recognition systems. The proposed online classifier is used in a face recognition application for classifying genuine and impostor match scores impacted by different covariates. Experiments on a heterogeneous face database of 1,194 subjects show that the proposed online classifier not only improves the verification accuracy but also significantly reduces the computational cost.
生物识别学中的在线学习:人脸分类器更新的案例研究
在大规模应用中,数百名新受试者可能会定期登记在生物识别系统中。为了解释这些新登记引起的数据分布的变化,生物识别系统需要定期重新训练,这通常会导致非常大的计算开销。本文正式介绍了生物识别学中在线学习的概念。我们演示了它在分类器更新算法中的应用,以重新训练分类器决策边界。具体而言,该算法采用在线学习技术在2ν颗粒软支持向量机中快速训练和更新人脸识别系统。本文提出的在线分类器在人脸识别应用中用于分类受不同协变量影响的真品和冒名顶替者匹配分数。在1194个被试的异构人脸数据库上进行的实验表明,所提出的在线分类器不仅提高了验证精度,而且显著降低了计算成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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