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Discriminative kernel-based metric learning for face verification

机译:基于区分核的度量学习,用于面部验证

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摘要

This paper outlines a simplistic formulation for doublet constrained discriminative metric learning framework for face verification. The Mahalanobis distance metric of the framework is formulated by leveraging the within-class scatter matrix of the doublet and a quadratic kernel function. Unlike existing metric learning methods, the proposed framework admits efficient solution attributed to the convexity nature of the kernel machines. We demonstrate three realizations of the proposed framework based on the well-known kernel machine instances, namely Support Vector Machine, Kernel Ridge Regression and Least Squares Support Vector Machine. Due to wide availability of off-the-shelf kernel learner solvers, the proposed method can be easily trained and deployed. We evaluate the proposed discriminative kernel-based metric learning with two types of face verification setup: standard and unconstrained face verification through three benchmark datasets. The promising experimental results corroborate the feasibility and robustness of the proposed framework. (C) 2018 Elsevier Inc. All rights reserved.
机译:本文概述了用于面部验证的双重约束约束判别式度量学习框架的简化表示。该框架的马氏距离度量是通过利用双峰的类内散布矩阵和二次核函数来制定的。与现有的度量学习方法不同,所提出的框架接受归因于内核机器的凸性的有效解决方案。我们基于著名的内核机器实例展示了所提出框架的三种实现,即支持向量机,内核岭回归和最小二乘支持向量机。由于现成的内核学习器求解器的可用性很高,因此可以轻松地训练和部署所提出的方法。我们使用两种类型的面部验证设置评估提议的基于核的判别性度量学习:通过三个基准数据集的标准面部验证和无约束面部验证。有希望的实验结果证实了所提出框架的可行性和鲁棒性。 (C)2018 Elsevier Inc.保留所有权利。

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