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A Novel Linear-Polynomial Kernel to Construct Support Vector Machines for Speech Recognition | Science Publications

机译:构建语音识别支持向量机的新型线性多项式核科学出版物

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> Problem statement: To accept the inputs as spoken word utterances uttered by various speakers, recognize the corresponding spoken words and initiate action pertaining to that word. Approach: A novel Linear-Polynomial (LP) Kernel function was used to construct support vector machines to classify the spoken word utterances. The support vector machines were constructed using various kernel functions. The use of well known one-versus-one approach considered with voting algorithm. Results: The empirical results compared by implementing various kernel functions such as linear kernel function, polynomial kernel function and LP kernel functions to construct different SVMs. Conclusion: The generalization performances based on the One-versus- One approach for speech recognition were compared with the novel LP kernel function. The SVMs using LP kernel function classifies the spoken utterances very efficiently as compared to other kernel functions. The performance of the novel LP kernel function was outstanding as compared to other kernel functions.
机译: > 问题陈述:要接受各种说话者所说的输入作为口语单词发音,请识别相应的口语单词并启动与该单词有关的动作。 方法:一种新颖的线性多项式(LP)核函数用于构造支持向量机,以对口头话语进行分类。支持向量机是使用各种内核功能构建的。在投票算法中考虑使用众所周知的一对一方法。 结果:通过实现各种核函数(例如线性核函数,多项式核函数和LP核函数)以构造不同的SVM来比较经验结果。 结论:将基于“一对一”语音识别的泛化性能与新颖的LP内核功能进行了比较。与其他内核功能相比,使用LP内核功能的SVM非常有效地对语音进行了分类。与其他内核功能相比,新型LP内核功能的性能非常出色。

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