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用于图像识别的基于组合矩阵距离度量的双向主成分分析。

Bidirectional PCA with assembled matrix distance metric for image recognition.

作者信息

Zuo Wangmeng, Zhang David, Wang Kuanquan

机构信息

School of Computer Science and Technology, Harbin Institute of Technology, China.

出版信息

IEEE Trans Syst Man Cybern B Cybern. 2006 Aug;36(4):863-72. doi: 10.1109/tsmcb.2006.872274.

Abstract

Principal component analysis (PCA) has been very successful in image recognition. Recent research on PCA-based methods has mainly concentrated on two issues, namely: 1) feature extraction and 2) classification. This paper proposes to deal with these two issues simultaneously by using bidirectional PCA (BD-PCA) supplemented with an assembled matrix distance (AMD) metric. For feature extraction, BD-PCA is proposed, which can be used for image feature extraction by reducing the dimensionality in both column and row directions. For classification, an AMD metric is presented to calculate the distance between two feature matrices and then the nearest neighbor and nearest feature line classifiers are used for image recognition. The results of the experiments show the efficiency of BD-PCA with AMD metric in image recognition.

摘要

主成分分析(PCA)在图像识别方面非常成功。近期基于PCA方法的研究主要集中在两个问题上,即:1)特征提取和2)分类。本文提出通过使用双向主成分分析(BD-PCA)并辅以组合矩阵距离(AMD)度量来同时处理这两个问题。对于特征提取,提出了BD-PCA,它可通过在列和行方向上降低维度来用于图像特征提取。对于分类,提出了一种AMD度量来计算两个特征矩阵之间的距离,然后使用最近邻和最近特征线分类器进行图像识别。实验结果表明了BD-PCA与AMD度量在图像识别中的有效性。

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