基于稀疏表示的有限标记样本人脸识别

Vijay Kumar, A. Namboodiri, C. V. Jawahar
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引用次数: 3

摘要

在包括人脸识别在内的大量机器识别问题中,稀疏表示已经成为一种强大的图像编码方法。这些方法依赖于使用过完备的基集来表示图像。这通常假设有大量标记的训练图像可用,特别是对于高维数据。在许多实际问题中,标记训练样本的数量非常有限,导致分类性能显著下降。为了解决训练样本缺乏的问题,我们提出了一种半监督算法,该算法通过多阶段标签传播结合稀疏表示对未标记的样本进行标记。在这种表示中,每个图像都被分解为与其最近的基图像的线性组合,具有局域性和稀疏性的优点。在公开可用的人脸数据库上进行的大量实验表明,与半监督设置下最先进的人脸识别方法相比,结果明显更好,与完全监督技术相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparse Representation Based Face Recognition with Limited Labeled Samples
Sparse representations have emerged as a powerful approach for encoding images in a large class of machine recognition problems including face recognition. These methods rely on the use of an over-complete basis set for representing an image. This often assumes the availability of a large number of labeled training images, especially for high dimensional data. In many practical problems, the number of labeled training samples are very limited leading to significant degradations in classification performance. To address the problem of lack of training samples, we propose a semi-supervised algorithm that labels the unlabeled samples through a multi-stage label propagation combined with sparse representation. In this representation, each image is decomposed as a linear combination of its nearest basis images, which has the advantage of both locality and sparsity. Extensive experiments on publicly available face databases show that the results are significantly better compared to state-of-the-art face recognition methods in semi-supervised setting and are on par with fully supervised techniques.
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