Automated Design of Affordable Modular Custom Insoles By Multi-Classification Algorithms
Publicado en línea: 21 may 2021
Páginas: 151 - 161
Recibido: 01 ene 2021
Aceptado: 01 mar 2021
DOI: https://doi.org/10.2478/mspe-2021-0020
Palabras clave
© 2021 Hnin Phyu Khaing et al., published by Sciendo
This work is licensed under the Creative Commons Attribution 4.0 International License.
Custom designed insoles are a niche product that is not always affordable to all who need them. When commercial insoles are fabricated using advanced technologies, the insoles in this study are assembled out of pre-cut modular components to keep the production cost down, hence their price. In this study, algorithms driven by a fuzzy inference were proposed in comparison with a decision tree in order to select the best component combination. One hundred and twelve subjects were recruited to collect foot data extracted from their foot images. Approximately 95% of 182 AI-designed insole pads were found in perfect agreement with the professional podiatrist’s decision with acceptable 5% deviation. Differences in the algorithms’ strength were also discussed. In addition to their superior performance, both algorithms allow the podiatrists to speed up the diagnosis and design phases. This approach, when integrated with applications of mobile devices for remotely retrieving foot data, will expand another simple yet effective customer-oriented product design service.