Automatic Assessment of Functional Movement Screening Exercises with Deep Learning Architectures
(1) Background: The success of physiotherapy depends on the regular and correct performance of movement exercises. A system that automatically evaluates these could support the therapy. Previous approaches in this area rarely rely on Deep Learning methods and do not yet fully use their potential. (2...
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Zusammenfassung: | (1) Background: The success of physiotherapy depends on the regular and
correct performance of movement exercises. A system that automatically
evaluates these could support the therapy. Previous approaches in this area
rarely rely on Deep Learning methods and do not yet fully use their potential.
(2) Methods: Using a measurement system consisting of 17 IMUs, a dataset of
four Functional Movement Screening (FMS) exercises is recorded. Exercise
execution is evaluated by physiotherapists using the FMS criteria. This dataset
is used to train a neural network that assigns the correct FMS score to an
exercise repetition. We use an architecture consisting of CNN, LSTM and Dense
layers. Based on this framework, we apply various methods to optimize the
performance of the network. For the optimization, we perform a extensive
hyperparameter optimization. In addition, we are comparing different CNN
structures that have been specifically adapted for use with IMU data. Finally,
the developed network is trained with the data of different FMS exercises and
the performance is compared. (3) Results: The evaluation shows that the
presented approach achieves a convincing performance in the classification of
unknown repetitions of already known subjects. However, the trained network is
yet unable to achieve consistent performance on the data of a previously
unknown subjects. Additionally, it can be seen that the performance of the
network differs significantly depending on the exercise it is trained for. |
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DOI: | 10.48550/arxiv.2210.01209 |