This paper investigates the acoustical and perceptual speech features that differentiate a depressed individual from a healthy one. The speech data gathered was a collection from both healthy and depressed subjects in the Italian language, each comprising of a read and spontaneous narrative. The pre-processing of this dataset was done using Mel Frequency Cepstral Coefficient (MFCC). The speech samples were further processed using Principal Component Analysis (PCA) for correlation and dimensionality reduction. It was found that both groups differed with respect to the extracted speech features. To distinguish the depressed group from the healthy one on the basis the proposed speech processing algorithm the Self Organizing Map (SOM) algorithm...
BACKGROUND: Depression is a debilitating disorder that at present lacks a reliable biomarker to aid ...
BACKGROUND: Depression is a debilitating disorder that at present lacks a reliable biomarker to aid ...
In this paper we propose a method for computer based depression detection. It is focusing on two asp...
This paper investigates the acoustical and perceptual speech features that differentiate a depressed...
This paper investigates the acoustical and perceptual speech features that differentiate a depressed...
This paper investigates the acoustical and perceptual speech features that differentiate a depressed...
This paper investigates the acoustical and perceptual speech features that differentiate a depressed...
The increase in cases of depression in recent years makes necessary to develop new objective and rel...
Major depressive disorders are mental disorders of high prevalence, leading to a high impact on indi...
Major depressive disorders are mental disorders of high prevalence, leading to a high impact on indi...
In recent years, the problem of automatic detection of mental illness from the speech signal has gai...
In this paper, we investigate the problem of detecting depres-sion from recordings of subjects ’ spe...
Currently, AI-based assistive technologies, particularly those involving sensitive data, such as sys...
Currently, AI-based assistive technologies, particularly those involving sensitive data, such as sys...
BACKGROUND: Depression is a debilitating disorder that at present lacks a reliable biomarker to aid ...
BACKGROUND: Depression is a debilitating disorder that at present lacks a reliable biomarker to aid ...
BACKGROUND: Depression is a debilitating disorder that at present lacks a reliable biomarker to aid ...
In this paper we propose a method for computer based depression detection. It is focusing on two asp...
This paper investigates the acoustical and perceptual speech features that differentiate a depressed...
This paper investigates the acoustical and perceptual speech features that differentiate a depressed...
This paper investigates the acoustical and perceptual speech features that differentiate a depressed...
This paper investigates the acoustical and perceptual speech features that differentiate a depressed...
The increase in cases of depression in recent years makes necessary to develop new objective and rel...
Major depressive disorders are mental disorders of high prevalence, leading to a high impact on indi...
Major depressive disorders are mental disorders of high prevalence, leading to a high impact on indi...
In recent years, the problem of automatic detection of mental illness from the speech signal has gai...
In this paper, we investigate the problem of detecting depres-sion from recordings of subjects ’ spe...
Currently, AI-based assistive technologies, particularly those involving sensitive data, such as sys...
Currently, AI-based assistive technologies, particularly those involving sensitive data, such as sys...
BACKGROUND: Depression is a debilitating disorder that at present lacks a reliable biomarker to aid ...
BACKGROUND: Depression is a debilitating disorder that at present lacks a reliable biomarker to aid ...
BACKGROUND: Depression is a debilitating disorder that at present lacks a reliable biomarker to aid ...
In this paper we propose a method for computer based depression detection. It is focusing on two asp...