Livia Colucci
Development of Human Pose Estimation and Machine Learning-based algorithms for assessing physical exercise proficiency.
Rel. Danilo Demarchi, Paolo Bonato, Giulia Corniani. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Biomedica, 2023
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Abstract
The aim of this Thesis is to create a framework that employs Machine-Learning algorithms to automatically assess proficiency in the practice of Tai Chi Chuan by analyzing video recordings and extracting information through Human Pose Estimation. Tai Chi is a form of low-impact mind-body exercise characterized by slow and fluid movements and whose positive impacts on health, particularly in relation to balance, have been analyzed by numerous studies. The data employed to achieve the goal of this Thesis was collected from thirty-two older adults aged between 65 and 85 years who were asked to perform six different Tai Chi exercises chosen in collaboration with Tai Chi experts.
Study participants were enrolled regardless of their prior Tai Chi experience to acquire data across various proficiency levels
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