Image Recognition Using Manifold Constrained Collaborative Representation

Junwei Jin, C. L. P. Chen, Jin Zhou
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引用次数: 1

Abstract

Image recognition is still a challenging task due to the existed illumination and view variations. Manifold learning and representation based classifiers (RCs) are two widely utilized methods to treat the image recognition. The common RCs only emphasize the representation by the training samples globally, while the geometric manifold structure of samples is not fully considered. In this letter, a novel manifold constrained collaborative representation is proposed, which aims to make the representation of query sample be similar with the codes of their nearby-points. Thus, the obtained representations can be more discriminative for recognition. Extensive experiments on several popular databases show that the our proposed method is promising in recognizing various images.
基于流形约束协同表示的图像识别
由于光照和视角的变化,图像识别仍然是一项具有挑战性的任务。流形学习和基于表示的分类器是两种被广泛应用的图像识别方法。常用的rc只强调训练样本的全局表示,没有充分考虑样本的几何流形结构。本文提出了一种新的流形约束协同表示,其目的是使查询样本的表示与其邻近点的编码相似。因此,所获得的表征对于识别来说更具有判别性。在几个流行的数据库上进行的大量实验表明,我们提出的方法在识别各种图像方面是有希望的。
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