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A Comparison of Classification Paradigms for Speaker Likeability Determination

机译:演讲者可爱性确定的分类范例比较

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In this paper we investigate the performance of different classification paradigms, testing each with a range of acoustic features, to find a system that is well suited to speaker likeability classification. We introduce a Sparse Representation Classifier for paralinguistic classification and explore, the role of training data selection for a GMM classifier. Results demonstrate that (1) Single dimensional: features of pitch direction, shimmer and spectral roll-off were the most suitable features found when testing on the development set but we were unable to reproduce their performance in the final classification task, (2) Using UBM training data selection increased accuracy of MFCC's and (3) Sparse Representation showed promise as a paralinguistic classifier with results comparable to that of SVM.
机译:在本文中,我们研究了不同分类范式的性能,在各种声学特征中测​​试每个分类范式,找到一个非常适合扬声器可爱分类的系统。我们为Paralinguistic分类和探索引入稀疏表示分类器,培训GMM分类器的数据选择的作用。结果表明(1)单维:俯仰方向,光泽和光谱滚动的特征是在开发集上测试时发现的最合适的功能,但我们无法在最终分类任务中重现它们的性能,(2)使用UBM培训数据选择提高了MFCC和(3)稀疏表示的准确性,显示了作为Paralinguistic分类器的承诺,其结果与SVM相当。

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