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Design and evaluation of reduced-size feature sets for the assessment of sincerity in speech

机译:言论中诚信评估减少特征集的设计与评价

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The recognition of states and traits of speakers is a significant issue to investigate, to be able to achieve more useful interactive systems. The sincerity of a speaker is a relevant paralinguistic phenomenon, which have not received too much attention from the affective computing community. In this work, we tackle the problem using novel feature sets proposed for emotion recognition. In addition, bioinspired features (using an auditory signal representation) and other spectral features are also evaluated. Finally, diverse combinations of these reduced-size feature sets are built. The provided standard, complete set with 6373 features is used for comparison purposes. Results show that using the combination of the proposed representations and state-of-art features, it is possible to obtain very small feature sets (less than 3% of the original size) that get comparable correlation measure with respect to the baseline.
机译:对扬声器的州和特征的认可是调查的重要问题,能够实现更有用的互动系统。发言者的诚意是一个相关的级语言语现象,没有从情感计算社区接受过多的关注。在这项工作中,我们使用提出的情感认可的新功能集来解决问题。另外,还评估生物定位特征(使用听觉信号表示)和其他光谱特征。最后,构建了这些减少尺寸特征集的不同组合。提供的标准,具有6373个功能的完整设置用于比较目的。结果表明,使用所提出的表示和最先进的特征的组合,可以获得非常小的特征集(少于原始尺寸的3%),其获得相对于基线的相当相关度量。

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