Effects of Intra-Subject Variation in Gait Analysis on ASD Classification Performance in Machine Learning Models

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Effects of Intra-Subject Variation in Gait Analysis on ASD Classification Performance in Machine Learning Models. / Henderson, Benn; Pratheepan, Yogarajah; Gardiner, Bryan et al.
2020 31st Irish Signals and Systems Conference (ISSC), Letterkenny, Ireland. IEEE, 2020.

Allbwn ymchwil: Pennod mewn Llyfr/Adroddiad/Trafodion CynhadleddCyfraniad i Gynhadleddadolygiad gan gymheiriaid

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Henderson, B, Pratheepan, Y, Gardiner, B, McGinnity, TM, Forster, K, Nicholas, B, Wimpory, D & Wanigasinghe, J 2020, Effects of Intra-Subject Variation in Gait Analysis on ASD Classification Performance in Machine Learning Models. yn 2020 31st Irish Signals and Systems Conference (ISSC), Letterkenny, Ireland. IEEE. https://doi.org/10.1109/ISSC49989.2020.9180201

APA

Henderson, B., Pratheepan, Y., Gardiner, B., McGinnity, T. M., Forster, K., Nicholas, B., Wimpory, D., & Wanigasinghe, J. (2020). Effects of Intra-Subject Variation in Gait Analysis on ASD Classification Performance in Machine Learning Models. Yn 2020 31st Irish Signals and Systems Conference (ISSC), Letterkenny, Ireland IEEE. https://doi.org/10.1109/ISSC49989.2020.9180201

CBE

Henderson B, Pratheepan Y, Gardiner B, McGinnity TM, Forster K, Nicholas B, Wimpory D, Wanigasinghe J. 2020. Effects of Intra-Subject Variation in Gait Analysis on ASD Classification Performance in Machine Learning Models. Yn 2020 31st Irish Signals and Systems Conference (ISSC), Letterkenny, Ireland. IEEE. https://doi.org/10.1109/ISSC49989.2020.9180201

MLA

Henderson, Benn et al. "Effects of Intra-Subject Variation in Gait Analysis on ASD Classification Performance in Machine Learning Models". 2020 31st Irish Signals and Systems Conference (ISSC), Letterkenny, Ireland. IEEE. 2020. https://doi.org/10.1109/ISSC49989.2020.9180201

VancouverVancouver

Henderson B, Pratheepan Y, Gardiner B, McGinnity TM, Forster K, Nicholas B et al. Effects of Intra-Subject Variation in Gait Analysis on ASD Classification Performance in Machine Learning Models. Yn 2020 31st Irish Signals and Systems Conference (ISSC), Letterkenny, Ireland. IEEE. 2020 doi: https://doi.org/10.1109/ISSC49989.2020.9180201

Author

Henderson, Benn ; Pratheepan, Yogarajah ; Gardiner, Bryan et al. / Effects of Intra-Subject Variation in Gait Analysis on ASD Classification Performance in Machine Learning Models. 2020 31st Irish Signals and Systems Conference (ISSC), Letterkenny, Ireland. IEEE, 2020.

RIS

TY - GEN

T1 - Effects of Intra-Subject Variation in Gait Analysis on ASD Classification Performance in Machine Learning Models

AU - Henderson, Benn

AU - Pratheepan, Yogarajah

AU - Gardiner, Bryan

AU - McGinnity, T.Martin

AU - Forster, Kitty

AU - Nicholas, Bradley

AU - Wimpory, Dawn

AU - Wanigasinghe, Jithangi

PY - 2020/6

Y1 - 2020/6

N2 - Autism Spectrum Disorder (ASD) is a developmental disorder that is prevalent globally. Research into detecting autism traditionally focused on behavioural aspects of the condition, however, more recently, focus has shifted to more objective alternatives using techniques such as machine learning and gait analysis. Gait measurements, having been used for person identification, varies from person to person, introducing a lot of intra-subject variance. This applies to the 8 spatial-temporal features used in this study, representing the time that an individual spends in each phase of a gait cycle, collected using a Vicon motion tracking system. The features were averaged across each gait trial that the subjects performed, producing a second set of features with reduced intra-subject variance. Four common classifiers, a Support Vector Machine (SVM), K-Nearest Neighbour (KNN), Random Forests (RF) and a Decision Tree (DT) classifier, were all trained using the two feature sets and their classification rates were compared. The results show that for the RF classifier, reducing the intra-subject variance, was able to successfully increase the classification power. The KNN and DT classifiers experienced a minimal decrease in accuracy, where the SVM suffered the greatest loss when intra-subject variance was reduced. Results overall show that the effect intra-subject variance has on classification power depends heavily on the suitability of the classifier to the initial problem as well as size and class balance of the data.

AB - Autism Spectrum Disorder (ASD) is a developmental disorder that is prevalent globally. Research into detecting autism traditionally focused on behavioural aspects of the condition, however, more recently, focus has shifted to more objective alternatives using techniques such as machine learning and gait analysis. Gait measurements, having been used for person identification, varies from person to person, introducing a lot of intra-subject variance. This applies to the 8 spatial-temporal features used in this study, representing the time that an individual spends in each phase of a gait cycle, collected using a Vicon motion tracking system. The features were averaged across each gait trial that the subjects performed, producing a second set of features with reduced intra-subject variance. Four common classifiers, a Support Vector Machine (SVM), K-Nearest Neighbour (KNN), Random Forests (RF) and a Decision Tree (DT) classifier, were all trained using the two feature sets and their classification rates were compared. The results show that for the RF classifier, reducing the intra-subject variance, was able to successfully increase the classification power. The KNN and DT classifiers experienced a minimal decrease in accuracy, where the SVM suffered the greatest loss when intra-subject variance was reduced. Results overall show that the effect intra-subject variance has on classification power depends heavily on the suitability of the classifier to the initial problem as well as size and class balance of the data.

U2 - https://doi.org/10.1109/ISSC49989.2020.9180201

DO - https://doi.org/10.1109/ISSC49989.2020.9180201

M3 - Conference contribution

BT - 2020 31st Irish Signals and Systems Conference (ISSC), Letterkenny, Ireland

PB - IEEE

ER -