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The effect of personality trait, age, and gender on the performance of automatic speech valence recognition

机译:人格特质,年龄和性别对自动语音价识别性能的影响

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Individual differences have significant effects on the expression of emotions. One may express the emotions openly such that they are easily recognizable, and one may be less expressive. Consequently, an emotion recognizer system will be affected by the emotion expressions from different individuals. Knowing which human factors improve or deteriorate the performance of the emotion recognizer, we can train systems based on those factors and select one of those systems that corresponds to the detected human factor of the target person. In this paper, we investigate the effect of age, gender, and Big-Five personality traits (Openness to Experience, Conscientiousness, Extroversion, Agreeableness, and Neuroticism) on the performance of a speech emotion recognizer. We found that, age is the paramount factor followed by gender. Conscientiousness and Neuroticism also have a substantial effect. These findings are in congruent with the literature, meaning that the performance of a speech emotion recognizer is closely correlated with the emotion expressivity of the individuals whose speech are used for training the recognition models. Additionally, based on these findings, we create a set of simple rules to select an appropriate trained model for new speech samples. This model selection approach yields higher emotion recognition accuracy.
机译:个体差异对情绪表达有重要影响。一个人可以公开地表达情绪,以使它们易于识别,而一个人的表达能力可能较低。因此,情感识别器系统将受到来自不同个人的情感表达的影响。知道哪些人为因素会改善或降低情绪识别器的性能,我们可以基于这些因素来训练系统,并选择与目标人的检测到的人为因素相对应的系统之一。在本文中,我们研究了年龄,性别和五种人格特质(开放经验,尽责,性格外向,和tic可亲和神经质)对语音情感识别器性能的影响。我们发现,年龄是紧随其后的性别。尽责和神经质也有重要作用。这些发现与文献一致,这意味着语音情感识别器的性能与语音用于训练识别模型的个体的情感表达密切相关。此外,基于这些发现,我们创建了一组简单的规则来为新的语音样本选择适当的训练模型。这种模型选择方法可产生更高的情感识别精度。

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