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Kolmogorov-Smirnov test for feature selection in emotion recognition from speech

机译:语音情感识别中的特征选择的Kolmogorov-Smirnov测试

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Automatic emotion recognition from speech is limited by the ability to discover the relevant predicting features. The common approach is to extract a very large set of features over a generally long analysis time window. In this paper we investigate the applicability of two-sample Kolmogorov-Smirnov statistical test (KST) to the problem of segmental speech emotion recognition. We train emotion classifiers for each speech segment within an utterance. The segment labels are then combined to predict the dominant emotion label. Our findings show that KST can be successfully used to extract statistically relevant features. KST criterion is used to optimize the parameters of the statistical segmental analysis, namely the window segment size and shift. We carry out seven binary class emotion classification experiments on the Emo-DB and evaluate the impact of the segmental analysis and emotion-specific feature selection.
机译:语音的自动情感识别受到发现相关预测特征的能力的限制。常用的方法是在通常较长的分析时间范围内提取大量特征。在本文中,我们研究了两样本Kolmogorov-Smirnov统计检验(KST)在分段语音情感识别问题上的适用性。我们针对语音中的每个语音片段训练情绪分类器。然后将片段标签组合以预测主导情绪标签。我们的发现表明,KST可以成功地用于提取统计上相关的特征。 KST准则用于优化统计分段分析的参数,即窗口分段的大小和偏移。我们在Emo-DB上进行了七个二元类情感分类实验,并评估了分段分析和特定情感特征选择的影响。

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