Speech vs. text: A comparative analysis of features for depression detection systems

M. Morales, Rivka Levitan
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引用次数: 57

Abstract

Depression is a serious illness that affects millions of people globally. In recent years, the task of automatic depression detection from speech has gained popularity. However, several challenges remain, including which features provide the best discrimination between classes or depression levels. Thus far, most research has focused on extracting features from the speech signal. However, the speech production system is complex and depression has been shown to affect many linguistic properties, including phonetics, semantics, and syntax. Therefore, we argue that researchers should look beyond the acoustic properties of speech by building features that capture syntactic structure and semantic content. We provide a comparative analyses of various features for depression detection. Using the same corpus, we evaluate how a system built on text-based features compares to a speech-based system. We find that a combination of features drawn from both speech and text lead to the best system performance.
语音与文本:抑郁症检测系统特征的比较分析
抑郁症是一种严重的疾病,影响着全球数百万人。近年来,语音抑郁的自动检测得到了广泛的应用。然而,仍然存在一些挑战,包括哪些特征可以最好地区分阶级或抑郁程度。到目前为止,大多数研究都集中在从语音信号中提取特征上。然而,语音产生系统是复杂的,抑郁症已经被证明会影响许多语言特性,包括语音、语义和句法。因此,我们认为研究人员应该通过构建捕捉句法结构和语义内容的特征来超越语音的声学特性。我们为抑郁症检测提供了各种特征的比较分析。使用相同的语料库,我们评估了基于文本特征的系统与基于语音的系统的比较。我们发现,从语音和文本中提取的特征组合可以获得最佳的系统性能。
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