基于核主成分分析的视觉词对象分类

K. Hotta
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引用次数: 19

摘要

许多研究者都在研究对象分类问题。据报道,基于局部特征而不考虑拓扑信息的关键点包方法是一种有效的目标分类方法。传统的关键词袋方法通过聚类的方式选择视觉词,并将与每个视觉词的相似度作为特征进行分类。在本文中,我们对视觉词集合进行建模,并利用视觉词与集合的相似度进行分类,而不是使用每个视觉词进行分类。使用核主成分分析(KPCA)对它们进行建模,并提取每个类别的专用信息。将子空间的投影长度作为支持向量机的特征。我们使用KPCA对视觉词集合建模有两个原因。第一个原因是对各种视觉词引起的非线性变化进行建模。第二个原因是局部特征的KPCA对姿态变化具有鲁棒性。利用Caltech 101数据库对该方法进行了评价。我们确认所提出的方法与没有绝对位置信息的最先进的方法相媲美。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object Categorization Based on Kernel Principal Component Analysis of Visual Words
Many researchers are studying object categorization problem. It is reported that bag of keypoints approach which is based on local features without topological information is effective for object categorization. Conventional bag of keypoints approach selects the visual words by clustering and uses the similarity with each visual word as the features for classification. In this paper, we model the ensemble of visual words, and the similarities with ensemble of visual words not each visual word are used for classification. Kernel principal component analysis (KPCA) is used to model them and extract the information specialized for each category. The projection length in subspace is used as features for support vector machine (SVM). There are two reasons why we use KPCA to model the ensemble of visual words. The first reason is to model the non-linear variations induced by various kinds of visual words. The second reason is that KPCA of local features is robust to pose variations. The proposed method is evaluated using Caltech 101 database. We confirm that the proposed method is comparable with the state of the art methods without absolute position information.
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