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On-Line Linear Combination of Classifiers Based on Incremental Information in Speaker Verification

机译:说话人验证中基于增量信息的分类器在线线性组合

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A novel multiclassifier system (MCS) strategy is proposed and applied to a text-dependent speaker verification task. The presented scheme optimizes the linear combination of classifiers on an on-line basis. In contrast to ordinary MCS approaches, neither a priori distributions nor pre-tuned parameters are required. The idea is to improve the most accurate classifier by making use of the incremental information provided by the second classifier. The on-line multiclassifier optimization approach is applicable to any pattern recognition problem. The proposed method needs neither a priori distributions nor pre-estimated weights, and does not make use of any consideration about training/testing matching conditions. Results with Yoho database show that the presented approach can lead to reductions in equal error rate as high as 28%, when compared with the most accurate classifier, and 11% against a standard method for the optimization of linear combination of classifiers.
机译:提出了一种新颖的多分类器系统(MCS)策略,并将其应用于与文本相关的说话人验证任务。提出的方案在线优化了分类器的线性组合。与普通的MCS方法相比,既不需要先验分布又不需要预先调整的参数。这个想法是通过利用第二个分类器提供的增量信息来改进最准确的分类器。在线多分类器优化方法适用于任何模式识别问题。所提出的方法既不需要先验分布也不需要预先估计的权重,并且不使用关于训练/测试匹配条件的任何考虑。 Yoho数据库的结果表明,与最精确的分类器相比,所提出的方法可将同等错误率降低多达28%,而与优化线性分类器组合的标准方法相比,该方法可降低11%。

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