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Semi-Supervised Sparse Representation Based Classification for Face Recognition With Insufficient Labeled Samples

机译:基于半监督稀疏表示的标签样本不足的人脸识别分类

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This paper addresses the problem of face recognition when there is only few, or even only a single, labeled examples of the face that we wish to recognize. Moreover, these examples are typically corrupted by nuisance variables, both linear (i.e., additive nuisance variables, such as bad lighting and wearing of glasses) and non-linear (i.e., non-additive pixel-wise nuisance variables, such as expression changes). The small number of labeled examples means that it is hard to remove these nuisance variables between the training and testing faces to obtain good recognition performance. To address the problem, we propose a method called semi-supervised sparse representation-based classification. This is based on recent work on sparsity, where faces are represented in terms of two dictionaries: a gallery dictionary consisting of one or more examples of each person, and a variation dictionary representing linear nuisance variables (e.g., different lighting conditions and different glasses). The main idea is that: 1) we use the variation dictionary to characterize the linear nuisance variables via the sparsity framework and 2) prototype face images are estimated as a gallery dictionary via a Gaussian mixture model, with mixed labeled and unlabeled samples in a semi-supervised manner, to deal with the non-linear nuisance variations between labeled and unlabeled samples. We have done experiments with insufficient labeled samples, even when there is only a single labeled sample per person. Our results on the AR, Multi-PIE, CAS-PEAL, and LFW databases demonstrate that the proposed method is able to deliver significantly improved performance over existing methods.
机译:当我们希望识别的人脸只有很少甚至只有一个带标签的示例时,本文将解决人脸识别的问题。此外,这些示例通常会被线性(即,累加的讨厌变量,例如不良照明和戴眼镜)和非线性(即,非累加的像素级讨厌的变量,例如表情变化)二者之间的讨厌变量破坏。 。带有标记的示例数量很少,这意味着很难去除训练和测试面孔之间的这些令人讨厌的变量,以获得良好的识别性能。为了解决该问题,我们提出了一种称为半监督的基于稀疏表示的分类方法。这是基于最近关于稀疏性的工作,其中面部用两个字典表示:由每个人的一个或多个示例组成的画廊字典,以及代表线性扰动变量(例如,不同的光照条件和不同的眼镜)的变化字典。主要思想是:1)我们使用变异字典通过稀疏框架表征线性扰动变量,以及2)原型人脸图像通过高斯混合模型被估计为画廊字典,其中混合了带标签的和未标签的样本监督方式,以处理标记和未标记样本之间的非线性扰动变化。即使每个人只有一个标记的样本,我们也用不足的标记样本进行了实验。我们在AR,Multi-PIE,CAS-PEAL和LFW数据库上的结果表明,与现有方法相比,该方法能够显着提高性能。

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