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Comparing Multiple Classifiers for Speech-Based Detection of Self-Confidence - A Pilot Study

机译:比较基于语音的自信心检测的多个分类器-一项初步研究

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The aim of this study is to compare several classifiers commonly used within the field of speech emotion recognition (SER) on the speech based detection of self-confidence. A standard acoustic feature set was computed, resulting in 170 features per one-minute speech sample (e.g. fundamental frequency, intensity, formants, MFCCs). In order to identify speech correlates of self-confidence, the lectures of 14 female participants were recorded, resulting in 306 one-minute segments of speech. Five expert raters independently assessed the self-confidence impression. Several classification models (e.g. Random Forest, Support Vector Machine, Naïve Bayes, Multi-Layer Perceptron) and ensemble classifiers (AdaBoost, Bagging, Stacking) were trained. AdaBoost procedures turned out to achieve best performance, both for single models (AdaBoost LR: 75.2% class-wise averaged recognition rate) and for average boosting (59.3%) within speaker-independent settings.
机译:这项研究的目的是在基于语音的自信检测上比较语音情感识别(SER)领域中常用的几种分类器。计算了标准声学特征集,每1分钟语音样本产生了170个特征(例如基本频率,强度,共振峰,MFCC)。为了确定自信的言语相关性,记录了14名女性参与者的演讲,得出306个一分钟的言语片段。五位专家评估者独立评估了自信心印象。训练了几种分类模型(例如随机森林,支持向量机,朴素贝叶斯,多层感知器)和集成分类器(AdaBoost,装袋,堆叠)。事实证明,对于单个模型(AdaBoost LR:75.2%的类平均识别率)和独立于说话者的设置中的平均增强(59.3%),AdaBoost程序均能达到最佳性能。

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