Fractal analysis of gait
DOI:
https://doi.org/10.34767/SIMIS.2020.02.04Keywords:
computational models, clinical gait analysis, health-related quality of life, HRQoLAbstract
Walking is one of the most complex and most frequently performed human activities. Despite technological
progress, there is no single, universal tool for the diagnosis and evaluation of gait functions. Solutions based on
computational intelligence can complement traditional methods of clinical analysis of gait. The article presents
the method of fractal analysis of gait developed by the authors.
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