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Combining evidence from multiple classifiers for recognition of consonant-vowel units of speech in multiple languages

机译:组合来自多个分类器的证据以识别多种语言的辅音元音

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In this paper, we present studies on combining evidence from multiple classifiers to recognize a large number of consonant-vowel (CV) units of speech. Multiple classifier systems may lead to a better solution to the complex speech recognition tasks, when the evidence obtained from individual systems is complementary in nature. Hidden Markov models (HMMs) are based on the maximum likelihood (ML) approach for training CV patterns of variable length. Support vector machine (SVM) models are based on discriminative learning approach for training fixed length CV patterns. Because of the differences in the training methods and in the pattern representation used; they may provide complementary evidence for CV classes. Complementary evidence available from these classifiers is combined using the sum rule. Effectiveness of the multiple classifier system is demonstrated for recognition of CV units of speech in Indian languages.
机译:在本文中,我们将结合来自多个分类器的证据来识别大量的语音元音(CV)。当从各个系统获得的证据本质上是互补的时,多个分类器系统可能会为复杂的语音识别任务提供更好的解决方案。隐马尔可夫模型(HMM)基于最大似然(ML)方法来训练可变长度的CV模式。支持向量机(SVM)模型基于判别学习方法,用于训练定长CV模式。由于训练方法和使用的模式表示形式的差异;它们可以为CV类提供补充证据。从这些分类器中获得的补充证据将使用求和规则进行合并。证明了多分类器系统对于识别印度语言的CV语音单位的有效性。

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