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Methods of Combining Multiple Classifiers with Different Features and their Applications to Text-Independent Speaker Identification

机译:多个具有不同特征的分类器组合方法及其在文本无关的说话人识别中的应用

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摘要

In practical applications of pattern recognition, there are often different features extracted from raw data which needs recognizing. Methods of combining multiple classifiers with different features are viewed as a general problem in various application areas of pattern recognition. In this paper, a systematic investigation has been made and possible solutions are classified into three frameworks, i.e. linear opinion pools, winner-take-all and evidential reasoning. For combining multiple classifiers with different features, a novel method is presented in the framework of linear opinion pools and a modified training algorithm for associative switch is also proposed in the framework of winner-take-all. In the framework of evidential reasoning, several typical methods are briefly reviewed for use. All aforementioned methods have already been applied to text-independent speaker identification. The simulations show that results yielded by the methods described in this paper are better than not only the individual classifiers' but also ones obtained by combining multiple classifiers with the same feature. It indicates that the use of combining multiple classifiers with different features is an effective way to attack the problem of text-independent speaker identification.
机译:在模式识别的实际应用中,通常需要从原始数据中提取需要识别的不同特征。在模式识别的各种应用领域中,将具有不同特征的多个分类器组合的方法被视为一个普遍的问题。在本文中,我们进行了系统的调查,并将可能的解决方案分为三个框架,即线性意见库,获胜者通吃和证据推理。为了结合具有不同特征的多个分类器,在线性意见池的框架内提出了一种新方法,并在赢家通吃的框架下提出了一种改进的关联切换训练算法。在证据推理的框架内,简要回顾了几种典型方法的使用。所有上述方法已被应用于与文本无关的说话人识别。仿真表明,本文描述的方法所产生的结果不仅优于单个分类器,而且优于将多个具有相同特征的分类器组合得到的结果。这表明结合使用具有不同特征的多个分类器是解决与文本无关的说话人识别问题的有效方法。

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