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An interpretable machine learning approach to sway-metric based fall-risk assessment. For Queen's University's ELEC 872 (AI and Intelligent Systems) final project.

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CamBish/KINECAL-Fall-Risk-Assessment

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An Interpretable Machine Learning Approach to Sway-Metric Based Fall-Risk Assessment

Created by: Cameron Bishop and Leonard Moen at Queen's University ECE Department.

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An interpretable machine learning approach to sway-metric based fall-risk assessment. For Queen's University's ELEC 872 (AI and Intelligent Systems) final project.

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