利用短时傅里叶变换和ResNet从语音数据中诊断抑郁症

Ayman Elfaki, A. L. Asnawi, A. Jusoh, A. F. Ismail, S. Ibrahim, N. F. Mohamed Azmin, Nik Nur Wahidah Binti Nik Hashim
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引用次数: 2

摘要

抑郁症是一种常见病,如今影响着许多人,随着COVID-19大流行的到来,这种情况尤其明显。它通常出现在一个人难以应对压力生活事件的时候。它可以发生在一个人的一生中,它遍及我们生活的方方面面。目前,抑郁症的诊断依赖于患者访谈和自我报告问卷,这在很大程度上依赖于患者的诚实和临床医生的主观经验。在本文中,我们将首先研究使用短时傅里叶变换(STFT)作为特征描述符从语音数据中客观诊断抑郁症的可行性。本研究使用的数据集是视听情感挑战2017 (AVEC2017)。该模型基于修改后的ResNet18模型架构来执行二元分类(即,抑制或非抑制)。从语音信号中计算STFT生成梅尔谱图,用于训练和测试模型。实验表明,单纯依靠STFT作为输入特征,对抑郁症进行分类的F1得分为74.71%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using the Short-Time Fourier Transform and ResNet to Diagnose Depression from Speech Data
Depression is a common illness that is affecting many people nowadays, this is especially true now with the advent of the COVID-19 pandemic. It often arises when a person is having difficulty coping with stressful life events. It can occur throughout the lifespan of a person, and it pervades all aspects of our lives. Currently, depression diagnoses rely on patient interviews and self-report questionnaires, which depend heavily on the patient honesty and the subjective experience of the clinician. In this paper, we will begin with investigating the viability of using the Short-Time Fourier Transform (STFT) as a feature descriptor to objectively diagnose depression from speech data. The dataset used in this research is the Audio-Visual Emotion Challenging 2017 (AVEC2017). The model is based on a modified ResNet18 model architecture to perform a binary classification (i.e., depressed or non-depressed). The STFT is computed from the speech signal to generate a mel-spectrogram for training and testing the model. The experiment shows that relying solely on STFT as an input feature resulted in an F1 score of 74.71% in classifying depression.
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