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引用次数: 0
摘要
Lwin Lwin Mar, Win Pa Pa和Tin Lay Nwe1,2,3缅甸仰光大学摘要一个人的内在情绪状态的识别在许多与人类相关的领域中起着重要的作用。情绪是我们存在的重要组成部分,因为它对人们的身心健康有很大的影响。抑郁症是一种常见的精神疾病。以声学特征为重点的情感感知技术的发展可能会给抑郁症患者缓慢、犹豫、单调的声音作为显著特征带来改变。该系统旨在通过语音信号对情绪和抑郁进行分类。在特征向量提取中,将同时使用时域和频域特征。在特征提取方面,系统将使用小波变换和MFCC。DenseNet将用于检测情绪,对情绪类型进行分类,然后是抑郁症。本文将介绍为该系统收集的数据集以及使用支持向量机在数据集上的实验结果。
Dataset for Depression Detection from Speech Emotion Recognition
Lwin Lwin Mar , Win Pa Pa and Tin Lay Nwe 1, 2, 3 UCSY, Myanmar Abstract. The recognition of internal emotional state of a person plays an important role in several human related fields. Emotions constitute an essential part of our existence as it exerts great influence on the physical and mental health of people. Depression is a common mental d isorder. Developments in affect ive sensing technology with focus on acoustic features will potentially bring a change due to depressed patients’ slow, hesitating, monotonous voice as remarkable characteristics. The system is intended for classification of emotions and depression by using speech signals. Both time and frequency domain features will be used in feature vector extraction. In feature extraction, the system will use wavelet transform and MFCC. DenseNet will be used to detect the emotion, classify the type of emotion and then depression. This paper will present about the datasets collected for the system and the experimental results on the dataset using Support Vector Machine.