MACHINE LEARNING APPLICATION FOR GAIT ABNORMALITY DETECTION USING INERTIAL MEASUREMENT UNITS

Disturbance on human gait can be used as indicator to detect a disease in human. Machine learning has been used to help in classifying diseases in medical science. The purpose of the application is to help doctor by detecting the diseases automatically. Previous researches tend to classify gait i...

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Main Author: Angsetya, Raymond
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/67446
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:67446
spelling id-itb.:674462022-08-22T13:40:18ZMACHINE LEARNING APPLICATION FOR GAIT ABNORMALITY DETECTION USING INERTIAL MEASUREMENT UNITS Angsetya, Raymond Indonesia Final Project random forest, pathological gait, Inertial Measurement Units, Shapley Additive Explanation INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/67446 Disturbance on human gait can be used as indicator to detect a disease in human. Machine learning has been used to help in classifying diseases in medical science. The purpose of the application is to help doctor by detecting the diseases automatically. Previous researches tend to classify gait into healthy and one or few types of pathological gait. These automatic classification failed in task where detection of pathological gait in general is needed. Each of the model is limited to classify one or a few type of disease depending on the training dataset. Thus, the purpose of this research is to develop a method which able to detect gait abnormality in general. Data used in this research are taken from Inertial Measurement Unit. Linear acceleration and angular velocity data collected from the sensors will be standarized and alligned with allignment method called piecewise linear length normalization. Each of the gait signal is compared to the upper and lower control limit of gait signal for the purpose of calculating anomaly percentage of each gait cycle. The anomaly percentage of each signal is then fed to machine learning for training by random forest classifier. Best test result can be seen with sensors position are on the hip, knee, and feet, with accuracy value of 96.38% and recall value of 95.05%. The result of automatic detection is then completed with Shapley Additive Explanation to extract more information from the detection result for the doctor to do analysis. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Disturbance on human gait can be used as indicator to detect a disease in human. Machine learning has been used to help in classifying diseases in medical science. The purpose of the application is to help doctor by detecting the diseases automatically. Previous researches tend to classify gait into healthy and one or few types of pathological gait. These automatic classification failed in task where detection of pathological gait in general is needed. Each of the model is limited to classify one or a few type of disease depending on the training dataset. Thus, the purpose of this research is to develop a method which able to detect gait abnormality in general. Data used in this research are taken from Inertial Measurement Unit. Linear acceleration and angular velocity data collected from the sensors will be standarized and alligned with allignment method called piecewise linear length normalization. Each of the gait signal is compared to the upper and lower control limit of gait signal for the purpose of calculating anomaly percentage of each gait cycle. The anomaly percentage of each signal is then fed to machine learning for training by random forest classifier. Best test result can be seen with sensors position are on the hip, knee, and feet, with accuracy value of 96.38% and recall value of 95.05%. The result of automatic detection is then completed with Shapley Additive Explanation to extract more information from the detection result for the doctor to do analysis.
format Final Project
author Angsetya, Raymond
spellingShingle Angsetya, Raymond
MACHINE LEARNING APPLICATION FOR GAIT ABNORMALITY DETECTION USING INERTIAL MEASUREMENT UNITS
author_facet Angsetya, Raymond
author_sort Angsetya, Raymond
title MACHINE LEARNING APPLICATION FOR GAIT ABNORMALITY DETECTION USING INERTIAL MEASUREMENT UNITS
title_short MACHINE LEARNING APPLICATION FOR GAIT ABNORMALITY DETECTION USING INERTIAL MEASUREMENT UNITS
title_full MACHINE LEARNING APPLICATION FOR GAIT ABNORMALITY DETECTION USING INERTIAL MEASUREMENT UNITS
title_fullStr MACHINE LEARNING APPLICATION FOR GAIT ABNORMALITY DETECTION USING INERTIAL MEASUREMENT UNITS
title_full_unstemmed MACHINE LEARNING APPLICATION FOR GAIT ABNORMALITY DETECTION USING INERTIAL MEASUREMENT UNITS
title_sort machine learning application for gait abnormality detection using inertial measurement units
url https://digilib.itb.ac.id/gdl/view/67446
_version_ 1822005450137141248