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Investigating Voice Quality as a Speaker-Independent Indicator of Depression and PTSD

机译:调查语音质量作为扬声器的抑郁症和PTSD的指标

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We seek to investigate voice quality characteristics, in particular on a breathy to tense dimension, as an indicator for psychological distress, i.e. depression and post-traumatic stress disorder (PTSD), within semi-structured virtual human interviews. Our evaluation identifies significant differences between the voice quality of psychologically distressed participants and not-distressed participants within this limited corpus. We investigate the capability of automatic algorithms to classify psychologically distressed speech in speaker-independent experiments. Additionally, we examine the impact of the posed questions' affective polarity, as motivated by findings in the literature on positive stimulus attenuation and negative stimulus potentiation in emotional reactivity of psychologically distressed participants. The experiments yield promising results using standard machine learning algorithms and solely four distinct features capturing the tenseness of the speaker's voice.
机译:我们寻求调查语音质量特征,特别是在呼吸到紧张的尺寸,作为心理困扰的指标,即抑郁和创伤后应激障碍(PTSD),在半结构化虚拟人体访谈中。我们的评估识别出在这个有限的语料库中的心理困扰参与者和不受痛苦的参与者的语音质量与不痛苦的参与者之间的显着差异。我们调查了自动算法的能力,在扬声器的实验中对心理痛苦的语音进行分类。此外,我们审查了提出的问题的影响'情感极性,通过文献中的结果,在心理上遇险参与者的情绪反应性中的积极刺激衰减和负刺激增强性的影响。实验产生了使用标准机器学习算法的有希望的结果,并单独进行四个不同的特征,捕获扬声器的声音的张力。

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