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Nonstationary signal classification using time-frequency optimization

机译:使用时频优化的非平稳信号分类

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摘要

We explore in this paper the use of pairwise Fisher criterion and weighted pairwise Fisher criterion as the objective functions for time-frequency based classification. The approach uses optimisation algorithms to alter and test the time-frequency kernel parameters based on the Fisher criterion objective function. For parameterised time-frequency representations (TFRs) kernels the determination of the optimal kernel parameters reduces to a maximization of the objective function. The classification process is based on joint optimization of parametric TFRs and distance measures. The optimal parameters realized from the classifier training and testing are used to classify novel whale songs. A classification error rate of 6.6% was achieved with the minimum distance classifier.
机译:我们在本文中探索使用成对的Fisher准则和加权成对的Fisher准则作为基于时频分类的目标函数。该方法基于Fisher准则目标函数,使用优化算法来更改和测试时频内核参数。对于参数化的时频表示(TFR)内核,最佳内核参数的确定会减少到目标函数的最大值。分类过程基于参数TFR和距离量度的联合优化。从分类器训练和测试中获得的最佳参数被用于对新颖的鲸鱼歌曲进行分类。使用最小距离分类器可实现6.6%的分类错误率。

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