<?xml version='1.0' encoding='utf-8'?>
<eprints xmlns='http://eprints.org/ep2/data/2.0'>
  <eprint id='https://researchdata.gla.ac.uk/id/eprint/1623'>
    <eprintid>1623</eprintid>
    <rev_number>23</rev_number>
    <documents>
      <document id='https://researchdata.gla.ac.uk/id/document/6375'>
        <docid>6375</docid>
        <rev_number>3</rev_number>
        <files>
          <file id='https://researchdata.gla.ac.uk/id/file/35102'>
            <fileid>35102</fileid>
            <datasetid>document</datasetid>
            <objectid>6375</objectid>
            <filename>ReadMe.docx</filename>
            <mime_type>application/vnd.openxmlformats-officedocument.wordprocessingml.document</mime_type>
            <hash>78c812efd0758e00fdebc2b072ca8332</hash>
            <hash_type>MD5</hash_type>
            <filesize>2727536</filesize>
            <mtime>2024-04-04 10:11:42</mtime>
            <url>https://researchdata.gla.ac.uk/1623/1/ReadMe.docx</url>
          </file>
        </files>
        <eprintid>1623</eprintid>
        <pos>1</pos>
        <placement>1</placement>
        <mime_type>application/vnd.openxmlformats-officedocument.wordprocessingml.document</mime_type>
        <format>Text</format>
        <language>en</language>
        <security>public</security>
        <license>cc_by_4</license>
        <main>ReadMe.docx</main>
        <content>readme</content>
      </document>
      <document id='https://researchdata.gla.ac.uk/id/document/6376'>
        <docid>6376</docid>
        <rev_number>1</rev_number>
        <files>
          <file id='https://researchdata.gla.ac.uk/id/file/35105'>
            <fileid>35105</fileid>
            <datasetid>document</datasetid>
            <objectid>6376</objectid>
            <filename>indexcodes.txt</filename>
            <mime_type>text/x-c++</mime_type>
            <hash>e07858015893a95cc7a3cdc195eee5aa</hash>
            <hash_type>MD5</hash_type>
            <filesize>2400</filesize>
            <mtime>2024-04-04 10:12:01</mtime>
            <url>https://researchdata.gla.ac.uk/1623/2/indexcodes.txt</url>
          </file>
        </files>
        <eprintid>1623</eprintid>
        <pos>2</pos>
        <placement>2</placement>
        <mime_type>text/x-c++</mime_type>
        <format>other</format>
        <formatdesc>Generate index codes conversion from Text to indexcodes</formatdesc>
        <language>en</language>
        <security>public</security>
        <main>indexcodes.txt</main>
        <relation>
          <item>
            <type>http://eprints.org/relation/isVersionOf</type>
            <uri>https://researchdata.gla.ac.uk/id/document/6375</uri>
          </item>
          <item>
            <type>http://eprints.org/relation/isVolatileVersionOf</type>
            <uri>https://researchdata.gla.ac.uk/id/document/6375</uri>
          </item>
          <item>
            <type>http://eprints.org/relation/isIndexCodesVersionOf</type>
            <uri>https://researchdata.gla.ac.uk/id/document/6375</uri>
          </item>
        </relation>
      </document>
    </documents>
    <eprint_status>archive</eprint_status>
    <userid>32961</userid>
    <dir>disk0/00/00/16/23</dir>
    <datestamp>2024-04-04 09:19:52</datestamp>
    <lastmod>2024-11-18 10:29:24</lastmod>
    <status_changed>2024-04-04 09:19:52</status_changed>
    <type>data_collection</type>
    <metadata_visibility>show</metadata_visibility>
    <creators>
      <item>
        <name>
          <family>Taylor</family>
          <given>William</given>
        </name>
        <enlightenid>60400</enlightenid>
      </item>
      <item>
        <name>
          <family>Pinkerton</family>
          <given>Scott</given>
        </name>
      </item>
      <item>
        <name>
          <family>Khan</family>
          <given>Muhammad Tufail</given>
        </name>
        <enlightenid>65884</enlightenid>
      </item>
      <item>
        <name>
          <family>Taha</family>
          <given>Mohammad M.A.</given>
        </name>
        <orcid>0000-0003-1246-8981</orcid>
      </item>
      <item>
        <name>
          <family>Barakat</family>
          <given>Basel</given>
        </name>
      </item>
      <item>
        <name>
          <family>Shawky</family>
          <given>Mahmoud A.</given>
        </name>
        <enlightenid>66074</enlightenid>
        <orcid>0000-0003-3393-8460</orcid>
      </item>
      <item>
        <name>
          <family>Abbasi</family>
          <given>Qammer H.</given>
        </name>
        <enlightenid>39488</enlightenid>
        <orcid>0000-0002-7097-9969</orcid>
      </item>
      <item>
        <name>
          <family>Imran</family>
          <given>Muhammad Ali</given>
        </name>
        <enlightenid>37001</enlightenid>
        <orcid>0000-0003-4743-9136</orcid>
      </item>
      <item>
        <name>
          <family>Taha</family>
          <given>Ahmad</given>
        </name>
        <enlightenid>57890</enlightenid>
        <orcid>0000-0003-1246-8981</orcid>
      </item>
    </creators>
    <uniqueid>glaresearchdata:2024-04-04-1623</uniqueid>
    <title>WiPE-FaLl: Wi-Fi-based Prediction and Estimation of Fall Likelihood</title>
    <ispublished>pub</ispublished>
    <divisions>
      <item>30300000</item>
      <item>30305000</item>
      <item>30304000</item>
    </divisions>
    <note>Additional Funding: EP/T021063/1.</note>
    <abstract>This dataset contains Channel State Information (CSI) amplitude data for a single human subject performing a Timed Up-and-go (TUG) test within an office environment within the University of Glasgow’s James Watt South Building. The data has been collected by using a pair of Universal Software Radio Peripheral (USRP) X300 devices. One is used as the transmitter and the other is used as the receiver. This dataset aims to explore if it is possible to recognise if a walking pattern can be associated with a low, medium or high risk of fall from the CSI data.

Due to the size of the files, dataset is only available on an on-request basis. Please use the &apos;Request Data&apos; button and see the readme document for more information. This dataset is licensed with a Creative Commons Attribution CC-BY 4.0 license.</abstract>
    <date>2024-04-04</date>
    <date_type>published</date_type>
    <publisher>University of Glasgow</publisher>
    <id_number>10.5525/gla.researchdata.1623</id_number>
    <data_type>
      <item>Mixed</item>
    </data_type>
    <copyright_holders>
      <item>University of Glasgow</item>
    </copyright_holders>
    <funding>
      <item>
        <project_code>305200</project_code>
        <project_name>DTP 2018-19 University of Glasgow</project_name>
        <investigator_name>Mary Beth Kneafsey</investigator_name>
        <funder_name>Engineering and Physical Sciences Research Council (EPSRC)</funder_name>
        <funder_code>EP/R513222/1</funder_code>
        <investigator_dept>MVLS - Education Hub</investigator_dept>
      </item>
      <item>
        <project_code>307829</project_code>
        <project_name>Quantum-Inspired Imaging for Remote Monitoring of Health &amp; Disease in Community Healthcare</project_name>
        <investigator_name>Jonathan Cooper</investigator_name>
        <funder_name>Engineering and Physical Sciences Research Council (EPSRC)</funder_name>
        <funder_code>EP/T021020/1</funder_code>
        <investigator_dept>ENG - Biomedical Engineering</investigator_dept>
      </item>
      <item>
        <project_code>320276</project_code>
        <project_name>CHEDDAR: Communications Hub For Empowering Distributed ClouD Computing Applications And Research CODSE_PA6130</project_name>
        <investigator_name>Muhammad Imran</investigator_name>
        <funder_name>Engineering and Physical Sciences Research Council (EPSRC)</funder_name>
        <funder_code>PA6130</funder_code>
        <investigator_dept>ENG - Autonomous Systems &amp; Connectivity</investigator_dept>
      </item>
      <item>
        <project_code>325518</project_code>
        <project_name>CHEDDAR Uplift</project_name>
        <investigator_name>Muhammad Imran</investigator_name>
        <funder_name>Engineering and Physical Sciences Research Council (EPSRC)</funder_name>
        <funder_code>PB1398</funder_code>
        <investigator_dept>ENG - Autonomous Systems &amp; Connectivity</investigator_dept>
      </item>
    </funding>
    <pending>FALSE</pending>
    <language>English</language>
    <collection_date>
      <date_from>2022-07-21</date_from>
      <date_to>2022-08-04</date_to>
    </collection_date>
    <retention_date>2034-04-04</retention_date>
    <retention_action>R</retention_action>
    <dataset_origin>
      <item>file_transfer</item>
    </dataset_origin>
    <ingest_data>
      <item>
      </item>
      <item>
      </item>
      <item>
      </item>
    </ingest_data>
    <archive_data>
      <item>
      </item>
      <item>
      </item>
      <item>
      </item>
    </archive_data>
    <ethics_consent_required>FALSE</ethics_consent_required>
    <request_copy>TRUE</request_copy>
  </eprint>
</eprints>
