Depression Detection in Arabic Using Speech Language Recognition

Zainab Alsharif, Salma Elhag, S. Alfakeh
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Abstract

Depression is one of the most common mental illnesses. Inaccurate assessments and misdiagnosis of illness are quite common for such mental disorder. In response to the issue of inaccurate assessment and misdiagnosis of depression, this study discusses the use of speech-language recognition to improve the detection of depression in Arabic speech. In this study, we extract speech features after collecting the dataset. These speech features can be obtained from both linguistic (uttered words) and para-linguistic (acoustic cues) features which we focus on. We classify the participants into two groups: clinically depressed and non-depressed. To do that, we start by recording speeches from interviews with the two groups. Then we extract para-linguistic features by using MFCC to help in building a model to detect depression. We use CNN to build the classification model. The accuracy of the classification model is 98% which will help in detecting depression depending on audio data.
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基于语音语言识别的阿拉伯语抑郁检测
抑郁症是最常见的精神疾病之一。对于这种精神障碍,不准确的评估和误诊是很常见的。针对抑郁症的不准确评估和误诊问题,本研究探讨了使用语音语言识别来提高阿拉伯语语音中抑郁症的检测。在本研究中,我们在收集数据集后提取语音特征。这些语音特征可以从我们关注的语言特征(发出的单词)和准语言特征(声音线索)中获得。我们将参与者分为两组:临床抑郁和非抑郁。为了做到这一点,我们首先记录了对这两组人的采访。然后,我们利用MFCC提取准语言特征,帮助建立抑郁症检测模型。我们使用CNN来建立分类模型。该分类模型的准确率为98%,有助于根据音频数据检测抑郁症。
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