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Foot Arch Classification via ML-based Image Classification
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Metadata
Document Title
Foot Arch Classification via ML-based Image Classification
Author
Sawangphol W. Panphattarasap P. Praiwattana P. Kraisangka J. Noraset T. Prommin D.
Affiliations
Faculty of Information and Communication Technology Mahidol University Thailand; National Metal and Materials Technology Center National Science and Technology Development Agency Thailand
Type
Article
Source Title
Computer-Aided Design and Applications
ISSN
16864360
Year
2023
Volume
20
Issue
4
Page
600-613
Open Access
All Open Access Bronze
Publisher
CAD Solutions LLC
DOI
10.14733/cadaps.2023.600-613
Abstract
Foot pain have become one of the common health problem. One of the commonly-used noninvasive method to relieve foot pain is to insert insoles in ones� shoes. However choosing the right insoles strongly depends on foot arch types i.e. high arch normal arch and flat foot. Aside from manual classification using foot images become an alternative methods to classify the foot type. We propose to develop mathematical models using machine learning techniques to improve the accuracy and reduce the time of the foot arch classification from foot pressure scanning image. 200 foot images were used to develop the models by applying decision tree random forest support vector machine artificial neural network and XGBoost algorithm. We found that the decision tree classifier with the features including different areas of part of foots arch index whole foot area and side of foot has the best performance than the other classifiers in terms of accuracy precision recall F1 score and the number of features. The results also demonstrates that the obtained model can classify foot arch types with high accuracy at 95% on the testing experiment. ? 2023 CAD Solutions LLC.
License
N/A
Rights
CAD Solutions LLC
Publication Source
Scopus