首页> 外文会议>Asian Conference on Computer Vision(ACCV 2006) pt.2; 20060113-16; Hyderabad(IN) >Multiple Similarities Based Kernel Subspace Learning for Image Classification
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Multiple Similarities Based Kernel Subspace Learning for Image Classification

机译:基于多重相似度的核子空间学习用于图像分类

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摘要

In this paper, we propose a new method for image classification, in which matrix based kernel features are designed to capture the multiple similarities between images in different low-level visual cues. Based on the property that dot product kernel can be regarded as a similarity measure, we apply kernel functions to different low-level visual features respectively to measure the similarities between two images, and obtain a kernel feature matrix for each image. In order to deal with the problems of over fitting and numerical computation, a revised version of Two-Dimensional PCA algorithm is developed to learn intrinsic subspace of matrix features for classification. Extensive experiments on the Corel database show the advantage of the proposed method.
机译:在本文中,我们提出了一种新的图像分类方法,其中基于矩阵的内核特征被设计为捕获不同低级视觉线索中图像之间的多重相似性。基于点积核可视为相似度的性质,我们将核函数分别应用于不同的低层视觉特征,以测量两幅图像之间的相似度,并为每幅图像获取一个核特征矩阵。为了解决过度拟合和数值计算的问题,开发了二维PCA算法的修订版,以学习矩阵特征的内在子空间进行分类。在Corel数据库上进行的大量实验证明了该方法的优势。

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