Using machine learning to detect pedestrian locomotion from sensor-based data
The integration of low cost microelectromagnetic (MEM) sensors into smart phones have made inertial navigation systems (INS) possible for ubiquitous use. Many research studies developed algorithms to detect a user's steps, and to calculate a user's stride to know the position displacement...
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oai:animorepository.dlsu.edu.ph:faculty_research-94572023-02-22T00:11:52Z Using machine learning to detect pedestrian locomotion from sensor-based data Ngo, Courtney Anne M. See, Solomon Legaspi, Roberto The integration of low cost microelectromagnetic (MEM) sensors into smart phones have made inertial navigation systems (INS) possible for ubiquitous use. Many research studies developed algorithms to detect a user's steps, and to calculate a user's stride to know the position displacement of the user. Subsequent research have already integrated the phone's heading to map out the user's movement across a physical area. These research, however, have not taken into account negative pedestrian locomotion, wherein the user is moving but is not exhibiting any position displacement. Current INSs are not suited to handle negative pedestrian locomotion movements, and this leads them to consider false steps as real steps. As the INS's modules depend heavily on the outputs of the other modules, a cascading error would most likely occur. This research aims to solve this problem by collecting positive and negative pedestrian locomotion with data from phone-embedded sensors positioned in the research subject's front pocket. Using these data, a model will be built to classify negative pedestrian locomotion from positive ones, and to eventually improve the INS's accuracy overall. 2014-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/faculty_research/8418 Faculty Research Work Animo Repository Inertial navigation systems Motion Spatial data mining Databases and Information Systems |
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Inertial navigation systems Motion Spatial data mining Databases and Information Systems Ngo, Courtney Anne M. See, Solomon Legaspi, Roberto Using machine learning to detect pedestrian locomotion from sensor-based data |
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The integration of low cost microelectromagnetic (MEM) sensors into smart phones have made inertial navigation systems (INS) possible for ubiquitous use. Many research studies developed algorithms to detect a user's steps, and to calculate a user's stride to know the position displacement of the user. Subsequent research have already integrated the phone's heading to map out the user's movement across a physical area. These research, however, have not taken into account negative pedestrian locomotion, wherein the user is moving but is not exhibiting any position displacement. Current INSs are not suited to handle negative pedestrian locomotion movements, and this leads them to consider false steps as real steps. As the INS's modules depend heavily on the outputs of the other modules, a cascading error would most likely occur. This research aims to solve this problem by collecting positive and negative pedestrian locomotion with data from phone-embedded sensors positioned in the research subject's front pocket. Using these data, a model will be built to classify negative pedestrian locomotion from positive ones, and to eventually improve the INS's accuracy overall. |
format |
text |
author |
Ngo, Courtney Anne M. See, Solomon Legaspi, Roberto |
author_facet |
Ngo, Courtney Anne M. See, Solomon Legaspi, Roberto |
author_sort |
Ngo, Courtney Anne M. |
title |
Using machine learning to detect pedestrian locomotion from sensor-based data |
title_short |
Using machine learning to detect pedestrian locomotion from sensor-based data |
title_full |
Using machine learning to detect pedestrian locomotion from sensor-based data |
title_fullStr |
Using machine learning to detect pedestrian locomotion from sensor-based data |
title_full_unstemmed |
Using machine learning to detect pedestrian locomotion from sensor-based data |
title_sort |
using machine learning to detect pedestrian locomotion from sensor-based data |
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Animo Repository |
publishDate |
2014 |
url |
https://animorepository.dlsu.edu.ph/faculty_research/8418 |
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