用小波基表示信号的多级模式识别

Urszula Libal
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引用次数: 3

摘要

提出了一种带拒绝选项的多阶段模式识别算法。在每个阶段,算法选择一类信号或拒绝该信号,即拒绝做出决策。如果在某个阶段将类分配给信号,则算法停止。在信号拒绝的相反情况下,分配给类的决定将在下一阶段做出。在小波基中的多分辨率信号表示允许在每个后续阶段采取更准确的信号表示。该方法基于粗小波表示在早期选择类,节省了计算时间。如果不准确的表示不足以指出其中一个类(例如,当每个类的后验概率低于固定界限时,在贝叶斯分类器的情况下),拒绝选项可以防止选择错误的类。我们证明了带有拒绝选项的贝叶斯决策规则的错误分类风险低于或等于单阶段最优贝叶斯规则的风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multistage pattern recognition of signals represented in wavelet bases with reject option
We propose a multistage pattern recognition algorithm with a reject option. On every stage, the presented algorithm chooses a class of signal or rejects the signal, i.e. refuses to make a decision. If a class is assigned to the signal on some stage, then the algorithm stops. In the opposite case of a signal rejection, the decision of assigning to a class is made on the next stage. The multiresolution signal representation in wavelet bases allows to take a more accurate signal representation on every following stage. Our approach saves the computation time, when the algorithm selects a class on an early stage basing on a coarse wavelet representation. If the inaccurate representation is insufficient to point out one of classes (e.g. when the a posteriori probability of every class is lower than a fixed bound, in case of Bayesian classifier), the reject option protects from choosing a wrong class. We show that a risk of misclassification for the Bayesian decision rule with a reject option is lower or equal to a risk of the one-stage optimal Bayesian rule.
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