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Proceedings ArticleDOI

Clinical Depression Analysis Using Speech Features

TLDR
A survey of speech signal features which relates for depression analysis is presented, specially focused on adolescence speech, and it is hypothesized that many speech features are there which are responsible for depression like linear features Prosodic, cepstral, spectral and glottal features and non-linear feature Teager energy operator (TEO).
Abstract
Depression is a most common severe mental disturbance health disorder causing high societal costs. In clinical practice rating for depression depends almost on self questionnaires and clinical patient history report opinion. In recent years, the awareness has generated for automatic detection of depression from the speech signal. Some queries are raised that which features are more responsible for depression from speech and which classifiers gives good results. By identifying proper features from speech signal system even one can save the life of a patient. In this paper, a survey of speech signal features which relates for depression analysis is presented. Specially focused on adolescence speech. After surveying it is hypothesized that many speech features are there which are responsible for depression like linear features Prosodic, cepstral, spectral and glottal features and non-linear feature Teager energy operator (TEO). Some classification methods for depression analysis from previous studies are summarized.

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Citations
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Journal ArticleDOI

Investigation of different speech types and emotions for detecting depression using different classifiers

TL;DR: A new computational methodology for detecting depression (STEDD) was developed and tested and showed a high accuracy level, with a desirable sensitivity/specificity ratio of 75.00%/85.29% for males and 77.36%/74.51% for females.
Proceedings ArticleDOI

A framework for monitoring of depression patient using WBAN

TL;DR: The proposed work presents a framework to monitor the depression patient with the help of their daily physical activities, posture movement, location detection, behavioral changes, and significant biomedical parameter changes using WBAN sensors.
Journal ArticleDOI

Voice Acoustic Parameters as Predictors of Depression.

TL;DR: In this article, a case-control study was conducted to analyze whether voice acoustic parameters are discriminant and predictive in patients with and without depression, and the results showed that acoustic parameters were able to discriminate between patients with depression and were associated with BDI-II scores.
Journal ArticleDOI

A hybrid KNN-MLP algorithm to diagnose bipolar disorder

TL;DR: An attempt has been made to the other corner of the power of neural networks, which can by using the MLP model achieve an error of 16% for the diagnosis of bipolar disorder.
Journal ArticleDOI

Depression Detection Through Speech Analysis : A Survey

TL;DR: It is found that speech of a person is dramatically affected and various vocal features are used to classify depression.
References
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Journal ArticleDOI

Acoustical properties of speech as indicators of depression and suicidal risk

TL;DR: The results support theories that identify psychomotor disturbances as central elements in depression and suicidality.
Journal ArticleDOI

Acoustical Properties of Speech as Indicators of Depression and Suicidal Risk

TL;DR: In this paper, the authors used multiple regression analysis to relate the independent energy band ratio variables with the dependent BDI scores, and thus allow the determination of equitable BDI score for future patients.
Journal ArticleDOI

Detection of Clinical Depression in Adolescents’ Speech During Family Interactions

TL;DR: The findings indicate the importance of nonlinear mechanisms associated with the glottal flow formation as cues for clinical depression in adolescents.
Journal ArticleDOI

Critical Analysis of the Impact of Glottal Features in the Classification of Clinical Depression in Speech

TL;DR: Analysis of discriminating feature sets used in the study reflect a clear indication that glottal descriptors are vital components of vocal affect analysis.
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