REVISTA
AI

   
Inicio  /  AI  /  Vol: 2 Par: 4 (2021)  /  Artículo
ARTÍCULO
TITULO

User Identity Protection in Automatic Emotion Recognition through Disguised Speech

Fasih Haider    
Pierre Albert and Saturnino Luz    

Resumen

Ambient Assisted Living (AAL) technologies are being developed which could assist elderly people to live healthy and active lives. These technologies have been used to monitor people?s daily exercises, consumption of calories and sleep patterns, and to provide coaching interventions to foster positive behaviour. Speech and audio processing can be used to complement such AAL technologies to inform interventions for healthy ageing by analyzing speech data captured in the user?s home. However, collection of data in home settings presents challenges. One of the most pressing challenges concerns how to manage privacy and data protection. To address this issue, we proposed a low cost system for recording disguised speech signals which can protect user identity by using pitch shifting. The disguised speech so recorded can then be used for training machine learning models for affective behaviour monitoring. Affective behaviour could provide an indicator of the onset of mental health issues such as depression and cognitive impairment, and help develop clinical tools for automatically detecting and monitoring disease progression. In this article, acoustic features extracted from the non-disguised and disguised speech are evaluated in an affect recognition task using six different machine learning classification methods. The results of transfer learning from non-disguised to disguised speech are also demonstrated. We have identified sets of acoustic features which are not affected by the pitch shifting algorithm and also evaluated them in affect recognition. We found that, while the non-disguised speech signal gives the best Unweighted Average Recall (UAR) of 80.01%, the disguised speech signal only causes a slight degradation of performance, reaching 76.29%. The transfer learning from non-disguised to disguised speech results in a reduction of UAR (65.13%). However, feature selection improves the UAR (68.32%). This approach forms part of a large project which includes health and wellbeing monitoring and coaching.

 Artículos similares

       
 
Haifa Alanzi and Mohammad Alkhatib    
An identity management system (IDMS) manages and organizes identities and credentials information exchanged between users, identity providers (IDPs), and service providers (SPs) to ensure confidentiality and enhance privacy of users? personal data. Tradi... ver más
Revista: Applied Sciences

 
Changsong Bing, Yirong Wu, Fangmin Dong, Shouzhi Xu, Xiaodi Liu and Shuifa Sun    
Social media has become more popular these days due to widely used instant messaging. Nevertheless, rumor propagation on social media has become an increasingly important issue. The purpose of this study is to investigate the impact of various features i... ver más
Revista: Information

 
Anna Slabouzova,Dmitry Namiot     Pág. 52 - 59
A physical browser is a context-sensitive browser in which a web application has access to information about the environment or context. Context refers to the location, identity of nearby people and objects, and changes in those objects. Information abou... ver más

 
Tsung-Hung Lin and Ming-Te Chen    
In the global village era, several competitions require pre-checkups for the participants who are qualified to participate that must be passed before the competition, so the accuracy of the checkup data must be confirmed and must not be leaked or tampere... ver más
Revista: Applied Sciences

 
Dimitrios Kounas, Orfefs Voutyras, Georgios Palaiokrassas, Antonios Litke and Theodora Varvarigou    
Location-based services are becoming extremely popular due to the widespread use of smartphones and other mobile and portable devices. These services mainly rely on the sincerity of users, who can spoof the location they report to them. For applications ... ver más