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Estimating Severity of Depression From Acoustic Features and Embeddings of Natural Speech

机译:估算声学特征的抑郁严重程度和自然语音嵌入

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Major depressive disorder, referred to as depression, is a leading cause of disability, absence from work, and premature death. Automatic assessment of depression from speech is a critical step towards improving diagnosis and treatment of depression. Previous works on depression assessment from speech considered various acoustic features extracted from speech to estimate depression severity. But performance of these approaches is not at clinical standards, and thus requires further improvement. In this work, we examine two novel approaches for improving depression severity estimation from short audio recordings of speech. Specifically, in audio recordings of a narrative by individuals diagnosed with major depressive disorder, we analyze spectral-based and excitation source-based features extracted from speech, and significance of sentiment and emotion classification in estimation of depression severity. Initial results indicate synchrony between depression scores and the sentiment and emotion labels. We propose the use of sentiment and emotion based embeddings obtained using machine learning techniques in estimation of depression severity. We also propose use of multi-task training to better estimate depression severity. We show that the proposed approaches provide additive improvements in the estimation of depression severity.
机译:主要的抑郁症,被称为抑郁症,是残疾的主要原因,缺乏工作,过早死亡。自动评估抑郁症来自言论是改善抑郁症诊断和治疗的关键步骤。以前关于抑郁症评估的作品被认为是从语音中提取的各种声学特征,以估计抑郁症严重程度。但这些方法的性能不是临床标准,因此需要进一步改善。在这项工作中,我们研究了一种从语音短路记录中改善抑郁严重性估计的两种新方法。具体而言,在诊断患有主要抑郁症的个体的叙述的录音中,我们分析了从语音中提取的基于光谱和激励源的特征,以及在抑郁严重程度估算中的情感和情感分类的重要性。初始结果表明了抑郁症分数与情感标签之间的同步。我们提出使用在抑制严重程度估计中使用机器学习技术获得的情感和情感的嵌入。我们还建议使用多任务培训来更好地估计抑郁严重程度。我们表明,拟议的方法提供了抑郁症严重程度的估计中的添加剂。

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