广义非线性稀疏分类器

A. Majumdar, R. Ward, T. Aboulnasr
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引用次数: 5

摘要

在最近的一项研究中,一种新的分类算法被称为稀疏分类器(SC),它假设如果一个测试样本属于k类,那么它可以由属于k的训练样本的线性组合近似表示。通过SC方法获得了良好的人脸识别结果。本文对上述假设提出了两种概括。第一个泛化假设被提升到一个幂的测试样本可以通过被提升到相同幂的类别的训练样本的线性组合来近似。第二个泛化假设提高到一个幂的测试样本可以近似地用提高到相同幂的训练样本的非线性组合来表示。第一个泛化假设要求求解线性约束下的群稀疏优化问题,第二个泛化假设要求求解非线性约束下的群稀疏优化问题。我们提出了两个贪心次优算法来解决上述问题。在这项工作中开发的分类器用于单个图像的人脸识别。我们发现我们的第一次泛化导致识别精度比SC提高了2-3%,而第二次泛化则进一步提高了识别精度;比第一个结论好6-7%。
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Generalized Non-linear Sparse Classifier
In a recent study a novel classification algorithm called the Sparse Classifier (SC) assumes that if a test sample belongs to class k then it can be approximately represented by a linear combination of the training samples belonging to k. Good face recognition results were obtained by the SC method. This paper proposes two generalizations of the aforesaid assumption. The first generalization assumes that the test sample raised to a power can be approximated by a linear combination of the training samples of that class raised to the same powers. The second generalization assumes that the test samples raised to a power can be approximately represented by a non-linear combination of the training samples raised to the same power. The first generalization requires solving a group-sparse optimization problem with linear constraints while the second assumption requires solving a group-sparse optimization problem with non-linear constraints. We propose two greedy sub-optimal algorithms to solve the said problems. The classifiers developed in this work are used for single-image-per-person face recognition. We find that our first generalization leads to an improvement of 2-3% in recognition accuracy over SC, while the second generalization improves the recognition accuracy even further; about 6-7% better than the first generalization.
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