Strona: Machine learning methods in modeling and analyzing of the legs and joints stiffness impact on injuries related to physical activity / Department of Complex Systems

Machine learning methods in modeling and analyzing of the legs and joints stiffness impact on injuries related to physical activity

2022-08-12
, red. Bartosz Kowal
Department Logo

The team form Department of Complex Systems (D. Strzałka, B. Kowal and P. Kuraś) will have the opportunity to work, together with scientists from the Faculty of Mathematics and Applied Physics, in a new project financed under the Podkarpackie Innovation Center (PCI) grants.

The aim of the project is to develop an IT system for tracking the running process, collecting data and analyzing them in terms of avoiding injuries and building an IT system for analyzing the degree of leg stiffness. As part of the project, measuring devices for testing traffic parameters will be made. Measurement data will be collected and analyzed using AI-based methods. The obtained mathematical models and algorithms will allow to create software that will measure the degree of leg stiffness in real time. Based on the expertise of specialists, changes in the leg stiffness parameter will be determined, which are correlated with the occurrence of the injury. The project requires the involvement of an interdisciplinary team including people representing the following disciplines:

  • physics - theoretical development of motion parameters, consultations in the construction and preparation of measuring devices, interpretation of measurement results.
  • biomedical engineering - designing devices for measuring motion parameters, making devices, preparing devices and software.
  • computer science - acquisition and collection of measurements, software of mathematical models, data filtering - machine, data processing and analysis - machine learning,
  • mathematics - analyzing data, filtering data according to specific rules, creating various mathematical models, optimizing models, creating machine learning rules.
Back to news list