利用监督谱分析进行特征提取

Ruicong Zhi, Q. Ruan
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引用次数: 2

摘要

本文提出了一种基于谱聚类的特征提取算法——监督谱分析(SSA)。该算法的有趣之处在于:(a)利用数据点的类信息构建亲和矩阵,增强特征的判别能力;(b)解决实际应用中经常遇到的小样本问题;(c)有效发现隐藏在数据中的非线性结构。分析了该算法的特性,并将其应用于面部表情识别。在JAFFE和Cohn-Kanade数据库上的实验表明了SSA算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature extraction using supervised spectral analysis
This paper proposes a feature extraction algorithm, called supervised spectral analysis (SSA) which is motivated by spectral clustering. The algorithm is interesting from a number of perspectives: (a) utilize the class information of the data points to construct the affinity matrix, which can enhance the discriminant power of the features; (b) solve the small-sample-size problem which is often confronted in the practical application; (c) effectively discover the nonlinear structure hidden in the data. We analysis the properties of the SSA and apply it to facial expression recognition. Experiments on JAFFE and Cohn-Kanade databases show the effectiveness of the SSA algorithm.
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