Subset selection with structured dictionaries in classification

N. Ince, Fikri Goksu, A. Tewfik, I. Onaran, A. Cetin
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Abstract

This paper describes a new approach for the selection of discriminant time-frequency features for classification. Unlike previous approaches that use the individual discrimination power of expansion coefficients, the proposed approach selects a subset of features by implementing a classifier directed pruning of an initial redundant set of candidate features. The candidate features are calculated from a structured redundant time-frequency analysis of the signal, such as an undecimated wavelet transform. We show that the proposed approach has a performance that is as good as or better than traditional classification approaches while using a much smaller number of features. In particular, we provide experimental results to demonstrate the superior performance of the algorithm in the area of impact acoustic classification for food kernel inspection. The proposed algorithm achieved 91.8% and 98.5% classification accuracies in separating open shell from closed shell pistachio nuts and discriminating between empty and full hazelnuts respectively. Traditional methods used in this area resulted in 82% and 97% classification accuracies respectively.
分类中使用结构化字典的子集选择
本文提出了一种选择鉴别时频特征进行分类的新方法。与以往使用展开系数的个体辨别能力的方法不同,该方法通过对初始冗余候选特征集实现分类器定向修剪来选择特征子集。候选特征是从信号的结构化冗余时频分析中计算出来的,比如一个未消差的小波变换。我们表明,该方法的性能与传统分类方法一样好,甚至更好,而使用的特征数量要少得多。实验结果表明,该算法在食品仁检测的冲击声分类领域具有优异的性能。该算法对开壳开心果和闭壳开心果的分类准确率为91.8%,对空壳开心果和满壳开心果的分类准确率为98.5%。传统方法在该领域的分类准确率分别为82%和97%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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