Supervised sparse coding with local geometrical constraints

Hanchao Zhang, Jinhua Xu
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引用次数: 1

Abstract

Sparse coding algorithms with geometrical constraints have received much attention recently. However, these methods are unsupervised and might lead to less discriminative representations. In this paper, we propose a supervised locality-constrained sparse coding method for classification. Two graphs are constructed, a labeled graph and an unlabeled graph. Sparse codes with a labeled geometrical constraint will be more discriminative, however we cannot embed test samples with unknown label into a labeled graph. By coupling the two graphs, we aim to make the difference between sparse codes with labeled and unlabeled geometrical constraints as small as possible. As a result, sparse codes of test data can be obtained with the unlabeled geometrical constraint and the discrimination of the labeled geometrical constraint is maintained. Experiments on some benchmark datasets demonstrate the effectiveness of the proposed method.
局部几何约束下的监督稀疏编码
具有几何约束的稀疏编码算法近年来受到广泛关注。然而,这些方法是无监督的,可能会导致较少的歧视性表示。本文提出了一种有监督的位置约束稀疏编码方法。构造了两个图,一个有标记的图和一个未标记的图。带有标记几何约束的稀疏代码具有更好的判别性,但是我们不能将带有未知标记的测试样本嵌入到标记图中。通过耦合这两个图,我们的目标是使具有标记和未标记几何约束的稀疏代码之间的差异尽可能小。结果表明,在不标记几何约束的情况下,测试数据可以得到稀疏编码,并且保持了标记几何约束的区分性。在一些基准数据集上的实验证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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