Documentdetail
ID kaart

oai:arXiv.org:2409.14769

Onderwerp
Computer Science - Computation and...
Auteur
Binu, Sona Jose, Jismi K V, Fathima Shimna Hans, Alino Luke Cherian, Reni K. Alex, Starlet Ben Srivastava, Priyanka Yarra, Chiranjeevi
Categorie

Computer Science

Jaar

2024

vermelding datum

25-09-2024

Trefwoorden
detection sentences depression
Metriek

Beschrijving

The people with Major Depressive Disorder (MDD) exhibit the symptoms of tonal variations in their speech compared to the healthy counterparts.

However, these tonal variations not only confine to the state of MDD but also on the language, which has unique tonal patterns.

This work analyzes automatic speech-based depression detection across two languages, English and Malayalam, which exhibits distinctive prosodic and phonemic characteristics.

We propose an approach that utilizes speech data collected along with self-reported labels from participants reading sentences from IViE corpus, in both English and Malayalam.

The IViE corpus consists of five sets of sentences: simple sentences, WH-questions, questions without morphosyntactic markers, inversion questions and coordinations, that can naturally prompt speakers to speak in different tonal patterns.

Convolutional Neural Networks (CNNs) are employed for detecting depression from speech.

The CNN model is trained to identify acoustic features associated with depression in speech, focusing on both languages.

The model's performance is evaluated on the collected dataset containing recordings from both depressed and non-depressed speakers, analyzing its effectiveness in detecting depression across the two languages.

Our findings and collected data could contribute to the development of language-agnostic speech-based depression detection systems, thereby enhancing accessibility for diverse populations.

Binu, Sona,Jose, Jismi,K V, Fathima Shimna,Hans, Alino Luke,Cherian, Reni K.,Alex, Starlet Ben,Srivastava, Priyanka,Yarra, Chiranjeevi, 2024, Language-Agnostic Analysis of Speech Depression Detection

Document

Openen

Delen

Bron

Artikelen aanbevolen door ES/IODE AI

Bone metastasis prediction in non-small-cell lung cancer: primary CT-based radiomics signature and clinical feature
non-small-cell lung cancer bone metastasis radiomics risk factor predict cohort model cect cancer prediction 0 metastasis radiomics clinical