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Ensemble classification for robust discrimination of multi-channel, multi-class tongue-movement ear pressure signals

机译:集合分类,可对多通道,多类舌移动式耳压信号进行可靠的区分

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In this paper we introduce a robust classification framework for tongue-movement ear pressure signals based around an ensemble voting methodology. The ensemble members are comprised of different combinations of sensor inputs i.e. two in-ear microphones and an acoustic gel sensor positioned under the chin of the individual and classification using three different base models. It is shown that by using all nine ensemble members when compared to the individual (base) models, the average misclassification rate can be reduced from 23% to 2.8% when using the majority voting strategy. The correct classification rate is improved from 76% to 92.4% when utilizing either the borda count or condorcet methods. This is achieved through a combination of rejection based on ambiguity in the ensemble and diversity in the misclassified instances across the ensemble members.
机译:在本文中,我们基于整体投票方法为舌动耳压信号引入了可靠的分类框架。合奏成员由传感器输入的不同组合组成,即两个入耳式麦克风和位于个人下巴下方的声学凝胶传感器,并使用三种不同的基本模型进行分类。结果表明,与单个(基本)模型相比,通过使用所有九个合奏成员,使用多数投票策略时,平均错误分类率可以从23%降低到2.8%。使用borda计数法或condorcet方法时,正确的分类率从76%提高到92.4%。这是通过将基于整体歧义性的拒绝与整个整体成员中错误分类的实例中的多样性相结合来实现的。

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