基于核稀疏表示的欠采样问题分类

Zizhu Fan, Ming Ni, Qi Zhu, Yuwu Lu
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引用次数: 3

摘要

稀疏表示分类(SRC)近年来受到广泛关注。它通常在以下假设下表现良好。第一个假设是每个类都有足够的训练样本。换句话说,SRC不擅长处理欠采样问题,即每个类的训练样本很少,甚至只有一个样本。二是不同类别的样本向量不应分布在同一向量方向上。然而,在现实问题中,上述两个假设并不总是满足的。在本文中,我们提出了一种新的基于SRC的算法,即基于核稀疏表示的undersampling problem分类器(KSRC-UP)。原则上不需要上述假设。KSRC-UP可以很好地处理小尺度、高维的真实世界数据集。在流行的人脸数据库上的实验表明,KSRC-UP方法比其他SRC方法具有更好的性能。
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Kernel sparse representation based classification for undersampled problem
Sparse representation for classification (SRC) has attracted much attention in recent years. It usually performs well under the following assumptions. The first assumption is that each class has sufficient training samples. In other words, SRC is not good at dealing with the undersampled problem, i.e., each class has few training samples, even single sample. The second one is that the sample vectors belonging to different classes should not distribute on the same vector direction. However, the above two assumptions are not always satisfied in real-world problems. In this paper, we propose a novel SRC based algorithm, i.e., kernel sparse representation based classifier for undersampled problem (KSRC-UP) to perform classification. It does not need the above assumptions in principle. KSRC-UP can deal well with the small scale and high dimensional real world data sets. Experiments on the popular face databases show that our KSRC-UP method can perform better than other SRC methods.
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