Smart-Object-Based Reasoning System for Indoor Acoustic Profiling of Elderly Inhabitants
Many countries are facing significant challenges in relation to providing adequate care for their elderly citizens. The roots of these issues are manifold, but include changing demographics, changing behaviours, and a shortage of resources. As has been witnessed in the health sector and many others...
Main Authors: | , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
MDPI AG
2021-06-01
|
Series: | Electronics |
Subjects: | |
Online Access: | https://www.mdpi.com/2079-9292/10/12/1433 |
id |
doaj-702a80733def49f6bc62f6395c0b156c |
---|---|
record_format |
Article |
spelling |
doaj-702a80733def49f6bc62f6395c0b156c2021-07-01T00:12:20ZengMDPI AGElectronics2079-92922021-06-01101433143310.3390/electronics10121433Smart-Object-Based Reasoning System for Indoor Acoustic Profiling of Elderly InhabitantsJeannette Chin0Alin Tisan1Victor Callaghan2David Chik3School of Computing Sciences, University of East Anglia, Norwich NR4 7TJ, UKDepartment of Electronic Engineering, Royal Holloway, University of London, Egham TW20 0EX, UKSchool of Computer Science and Electronic Engineering, Universtiy of Essex, Colchester CO4 3SQ, UKHong Kong Applied Science and Technology Research Institute, Hong Kong, ChinaMany countries are facing significant challenges in relation to providing adequate care for their elderly citizens. The roots of these issues are manifold, but include changing demographics, changing behaviours, and a shortage of resources. As has been witnessed in the health sector and many others in society, technology has much to offer in terms of supporting people’s needs. This paper explores the potential for ambient intelligence to address this challenge by creating a system that is able to passively monitor the home environment, detecting abnormal situations which may indicate that the inhabitant needs help. There are many ways that this might be achieved, but in this paper, we will describe our investigation into an approach involving unobtrusively ’listening’ to sound patterns within the home, which classifies these as either normal daily activities, or abnormal situations. The experimental system we built was composed of an innovative combination of acoustic sensing, artificial intelligence (AI), and the Internet-of-Things (IoT), which we argue in the paper that it provides a cost-effective approach to alerting care providers when an elderly person in their charge needs help. The majority of the innovation in our work concerns the AI in which we employ Machine Learning to classify the sound profiles, analyse the data for abnormal events, and to make decisions for raising alerts with carers. A Neural Network classifier was used to train and identify the sound profiles associated with normal daily routines within a given person’s home, signalling departures from the daily routines that were then used as templates to measure deviations from normality, which were used to make weighted decisions regarding calling for assistance. A practical experimental system was then designed and deployed to evaluate the methods advocated by this research. The methodology involved gathering pre-design and post-design data from both a professionally run residential home and a domestic home. The pre-design data gathered the views on the system design from 11 members of the residential home, using survey questionnaires and focus groups. These data were used to inform the design of the experimental system, which was then deployed in a domestic home setting to gather post-design experimental data. The experimental results revealed that the system was able to detect 84% of abnormal events, and advocated several refinements which would improve the performance of the system. Thus, the research concludes that the system represents an important advancement to the state-of-the-art and, when taken together with the refinements, represents a line of research which has the potential to deliver significant improvements to care provision for the elderly.https://www.mdpi.com/2079-9292/10/12/1433pervasive computingmachine learningneural networkambient intelligenceembedded systemssmart environments |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jeannette Chin Alin Tisan Victor Callaghan David Chik |
spellingShingle |
Jeannette Chin Alin Tisan Victor Callaghan David Chik Smart-Object-Based Reasoning System for Indoor Acoustic Profiling of Elderly Inhabitants Electronics pervasive computing machine learning neural network ambient intelligence embedded systems smart environments |
author_facet |
Jeannette Chin Alin Tisan Victor Callaghan David Chik |
author_sort |
Jeannette Chin |
title |
Smart-Object-Based Reasoning System for Indoor Acoustic Profiling of Elderly Inhabitants |
title_short |
Smart-Object-Based Reasoning System for Indoor Acoustic Profiling of Elderly Inhabitants |
title_full |
Smart-Object-Based Reasoning System for Indoor Acoustic Profiling of Elderly Inhabitants |
title_fullStr |
Smart-Object-Based Reasoning System for Indoor Acoustic Profiling of Elderly Inhabitants |
title_full_unstemmed |
Smart-Object-Based Reasoning System for Indoor Acoustic Profiling of Elderly Inhabitants |
title_sort |
smart-object-based reasoning system for indoor acoustic profiling of elderly inhabitants |
publisher |
MDPI AG |
series |
Electronics |
issn |
2079-9292 |
publishDate |
2021-06-01 |
description |
Many countries are facing significant challenges in relation to providing adequate care for their elderly citizens. The roots of these issues are manifold, but include changing demographics, changing behaviours, and a shortage of resources. As has been witnessed in the health sector and many others in society, technology has much to offer in terms of supporting people’s needs. This paper explores the potential for ambient intelligence to address this challenge by creating a system that is able to passively monitor the home environment, detecting abnormal situations which may indicate that the inhabitant needs help. There are many ways that this might be achieved, but in this paper, we will describe our investigation into an approach involving unobtrusively ’listening’ to sound patterns within the home, which classifies these as either normal daily activities, or abnormal situations. The experimental system we built was composed of an innovative combination of acoustic sensing, artificial intelligence (AI), and the Internet-of-Things (IoT), which we argue in the paper that it provides a cost-effective approach to alerting care providers when an elderly person in their charge needs help. The majority of the innovation in our work concerns the AI in which we employ Machine Learning to classify the sound profiles, analyse the data for abnormal events, and to make decisions for raising alerts with carers. A Neural Network classifier was used to train and identify the sound profiles associated with normal daily routines within a given person’s home, signalling departures from the daily routines that were then used as templates to measure deviations from normality, which were used to make weighted decisions regarding calling for assistance. A practical experimental system was then designed and deployed to evaluate the methods advocated by this research. The methodology involved gathering pre-design and post-design data from both a professionally run residential home and a domestic home. The pre-design data gathered the views on the system design from 11 members of the residential home, using survey questionnaires and focus groups. These data were used to inform the design of the experimental system, which was then deployed in a domestic home setting to gather post-design experimental data. The experimental results revealed that the system was able to detect 84% of abnormal events, and advocated several refinements which would improve the performance of the system. Thus, the research concludes that the system represents an important advancement to the state-of-the-art and, when taken together with the refinements, represents a line of research which has the potential to deliver significant improvements to care provision for the elderly. |
topic |
pervasive computing machine learning neural network ambient intelligence embedded systems smart environments |
url |
https://www.mdpi.com/2079-9292/10/12/1433 |
work_keys_str_mv |
AT jeannettechin smartobjectbasedreasoningsystemforindooracousticprofilingofelderlyinhabitants AT alintisan smartobjectbasedreasoningsystemforindooracousticprofilingofelderlyinhabitants AT victorcallaghan smartobjectbasedreasoningsystemforindooracousticprofilingofelderlyinhabitants AT davidchik smartobjectbasedreasoningsystemforindooracousticprofilingofelderlyinhabitants |
_version_ |
1721349218395750400 |