Conference Paper/Proceeding/Abstract 993 views 109 downloads
Preserving safety, privacy and mobility of persons living with Dementia by recognising uncharacteristic out-door movement using Recurrent Neural Networks with low computing capacity
Proceedings of the First Joint Workshop on AI in Health organized as part of the Federated AI Meeting (FAIM 2018), co-located with AAMAS 2018, ICML 2018, IJCAI 2018 and ICCBR 2018, Volume: 2142, Issue: 01.01.2018, Pages: 212 - 223
Swansea University Author: Bertie Muller
-
PDF | Accepted Manuscript
Download (2.42MB)
Abstract
A large proportion of the population has become used to sharing private infor- mation on the internet with their friends. This information can leak throughout their social network and the extent that personal information propagates depends on the privacy policy of large corporations. In an era of ar...
Published in: | Proceedings of the First Joint Workshop on AI in Health organized as part of the Federated AI Meeting (FAIM 2018), co-located with AAMAS 2018, ICML 2018, IJCAI 2018 and ICCBR 2018 |
---|---|
ISSN: | 1613-0073 |
Published: |
AIH 2018 - Joint Workshop on AI in Health
2018
|
Online Access: |
Check full text
|
URI: | https://cronfa.swan.ac.uk/Record/cronfa43607 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
first_indexed |
2018-08-31T19:44:15Z |
---|---|
last_indexed |
2019-01-23T13:56:02Z |
id |
cronfa43607 |
recordtype |
SURis |
fullrecord |
<?xml version="1.0"?><rfc1807><datestamp>2019-01-23T10:51:30.3922228</datestamp><bib-version>v2</bib-version><id>43607</id><entry>2018-08-31</entry><title>Preserving safety, privacy and mobility of persons living with Dementia by recognising uncharacteristic out-door movement using Recurrent Neural Networks with low computing capacity</title><swanseaauthors><author><sid>a9373756f492363d8453ecf3b828b811</sid><firstname>Bertie</firstname><surname>Muller</surname><name>Bertie Muller</name><active>true</active><ethesisStudent>false</ethesisStudent></author></swanseaauthors><date>2018-08-31</date><deptcode>SCS</deptcode><abstract>A large proportion of the population has become used to sharing private infor- mation on the internet with their friends. This information can leak throughout their social network and the extent that personal information propagates depends on the privacy policy of large corporations. In an era of artificial intelligence, data mining, and cloud computing, is it necessary to share personal information with unidentifiable people? Our research shows that deep learning is possible using relatively low capacity computing. The research demonstrates promising results in recognition of human geospatial activity, in prediction of movement, and assessment of contextual risk when applied to spatio-temporal positioning of human subjects. A private surveillance system is thought particularly suitable in the care of those who may, to some, be considered vulnerable.</abstract><type>Conference Paper/Proceeding/Abstract</type><journal>Proceedings of the First Joint Workshop on AI in Health organized as part of the Federated AI Meeting (FAIM 2018), co-located with AAMAS 2018, ICML 2018, IJCAI 2018 and ICCBR 2018</journal><volume>2142</volume><journalNumber>01.01.2018</journalNumber><paginationStart>212</paginationStart><paginationEnd>223</paginationEnd><publisher>AIH 2018 - Joint Workshop on AI in Health</publisher><issnElectronic>1613-0073</issnElectronic><keywords>privacy, deep learning, assisted-living, mobile computing, ethics, mHeath, wearable health, dementia, safer walking, GPS, LSTM, RNN</keywords><publishedDay>13</publishedDay><publishedMonth>7</publishedMonth><publishedYear>2018</publishedYear><publishedDate>2018-07-13</publishedDate><doi/><url>http://ceur-ws.org/Vol-2142/</url><notes/><college>COLLEGE NANME</college><department>Computer Science</department><CollegeCode>COLLEGE CODE</CollegeCode><DepartmentCode>SCS</DepartmentCode><institution>Swansea University</institution><apcterm/><lastEdited>2019-01-23T10:51:30.3922228</lastEdited><Created>2018-08-31T15:05:31.6674343</Created><path><level id="1">Faculty of Science and Engineering</level><level id="2">School of Mathematics and Computer Science - Computer Science</level></path><authors><author><firstname>Steve</firstname><surname>Williams</surname><order>1</order></author><author><firstname>J Mark</firstname><surname>Ware</surname><order>2</order></author><author><firstname>Bertie</firstname><surname>Muller</surname><order>3</order></author></authors><documents><document><filename>0043607-06092018114301.pdf</filename><originalFilename>43607.pdf</originalFilename><uploaded>2018-09-06T11:43:01.0030000</uploaded><type>Output</type><contentLength>2503249</contentLength><contentType>application/pdf</contentType><version>Accepted Manuscript</version><cronfaStatus>true</cronfaStatus><embargoDate>2018-09-06T00:00:00.0000000</embargoDate><copyrightCorrect>true</copyrightCorrect><language>eng</language></document></documents><OutputDurs/></rfc1807> |
spelling |
2019-01-23T10:51:30.3922228 v2 43607 2018-08-31 Preserving safety, privacy and mobility of persons living with Dementia by recognising uncharacteristic out-door movement using Recurrent Neural Networks with low computing capacity a9373756f492363d8453ecf3b828b811 Bertie Muller Bertie Muller true false 2018-08-31 SCS A large proportion of the population has become used to sharing private infor- mation on the internet with their friends. This information can leak throughout their social network and the extent that personal information propagates depends on the privacy policy of large corporations. In an era of artificial intelligence, data mining, and cloud computing, is it necessary to share personal information with unidentifiable people? Our research shows that deep learning is possible using relatively low capacity computing. The research demonstrates promising results in recognition of human geospatial activity, in prediction of movement, and assessment of contextual risk when applied to spatio-temporal positioning of human subjects. A private surveillance system is thought particularly suitable in the care of those who may, to some, be considered vulnerable. Conference Paper/Proceeding/Abstract Proceedings of the First Joint Workshop on AI in Health organized as part of the Federated AI Meeting (FAIM 2018), co-located with AAMAS 2018, ICML 2018, IJCAI 2018 and ICCBR 2018 2142 01.01.2018 212 223 AIH 2018 - Joint Workshop on AI in Health 1613-0073 privacy, deep learning, assisted-living, mobile computing, ethics, mHeath, wearable health, dementia, safer walking, GPS, LSTM, RNN 13 7 2018 2018-07-13 http://ceur-ws.org/Vol-2142/ COLLEGE NANME Computer Science COLLEGE CODE SCS Swansea University 2019-01-23T10:51:30.3922228 2018-08-31T15:05:31.6674343 Faculty of Science and Engineering School of Mathematics and Computer Science - Computer Science Steve Williams 1 J Mark Ware 2 Bertie Muller 3 0043607-06092018114301.pdf 43607.pdf 2018-09-06T11:43:01.0030000 Output 2503249 application/pdf Accepted Manuscript true 2018-09-06T00:00:00.0000000 true eng |
title |
Preserving safety, privacy and mobility of persons living with Dementia by recognising uncharacteristic out-door movement using Recurrent Neural Networks with low computing capacity |
spellingShingle |
Preserving safety, privacy and mobility of persons living with Dementia by recognising uncharacteristic out-door movement using Recurrent Neural Networks with low computing capacity Bertie Muller |
title_short |
Preserving safety, privacy and mobility of persons living with Dementia by recognising uncharacteristic out-door movement using Recurrent Neural Networks with low computing capacity |
title_full |
Preserving safety, privacy and mobility of persons living with Dementia by recognising uncharacteristic out-door movement using Recurrent Neural Networks with low computing capacity |
title_fullStr |
Preserving safety, privacy and mobility of persons living with Dementia by recognising uncharacteristic out-door movement using Recurrent Neural Networks with low computing capacity |
title_full_unstemmed |
Preserving safety, privacy and mobility of persons living with Dementia by recognising uncharacteristic out-door movement using Recurrent Neural Networks with low computing capacity |
title_sort |
Preserving safety, privacy and mobility of persons living with Dementia by recognising uncharacteristic out-door movement using Recurrent Neural Networks with low computing capacity |
author_id_str_mv |
a9373756f492363d8453ecf3b828b811 |
author_id_fullname_str_mv |
a9373756f492363d8453ecf3b828b811_***_Bertie Muller |
author |
Bertie Muller |
author2 |
Steve Williams J Mark Ware Bertie Muller |
format |
Conference Paper/Proceeding/Abstract |
container_title |
Proceedings of the First Joint Workshop on AI in Health organized as part of the Federated AI Meeting (FAIM 2018), co-located with AAMAS 2018, ICML 2018, IJCAI 2018 and ICCBR 2018 |
container_volume |
2142 |
container_issue |
01.01.2018 |
container_start_page |
212 |
publishDate |
2018 |
institution |
Swansea University |
issn |
1613-0073 |
publisher |
AIH 2018 - Joint Workshop on AI in Health |
college_str |
Faculty of Science and Engineering |
hierarchytype |
|
hierarchy_top_id |
facultyofscienceandengineering |
hierarchy_top_title |
Faculty of Science and Engineering |
hierarchy_parent_id |
facultyofscienceandengineering |
hierarchy_parent_title |
Faculty of Science and Engineering |
department_str |
School of Mathematics and Computer Science - Computer Science{{{_:::_}}}Faculty of Science and Engineering{{{_:::_}}}School of Mathematics and Computer Science - Computer Science |
url |
http://ceur-ws.org/Vol-2142/ |
document_store_str |
1 |
active_str |
0 |
description |
A large proportion of the population has become used to sharing private infor- mation on the internet with their friends. This information can leak throughout their social network and the extent that personal information propagates depends on the privacy policy of large corporations. In an era of artificial intelligence, data mining, and cloud computing, is it necessary to share personal information with unidentifiable people? Our research shows that deep learning is possible using relatively low capacity computing. The research demonstrates promising results in recognition of human geospatial activity, in prediction of movement, and assessment of contextual risk when applied to spatio-temporal positioning of human subjects. A private surveillance system is thought particularly suitable in the care of those who may, to some, be considered vulnerable. |
published_date |
2018-07-13T03:54:52Z |
_version_ |
1763752744468873216 |
score |
11.035634 |