Using a TensorFlow-Based Neural Network for Gesture Recognition and Control of a Bionic Prosthesis

Authors

  • R. I. Bilyy Vinnytsia National Technical University

DOI:

https://doi.org/10.31649/1997-9266-2024-174-3-71-77

Keywords:

neural network, TensorFlow, gesture recognition, bionic prosthesis, electromyography, recognition accuracy

Abstract

This study analyzes in detail the recognition accuracy of various gestures using a neural network built on TensorFlow to control a bionic prosthesis. By conducting a series of experiments using data sets and model parameters, it is investigated how effectively the neural network recognizes various gestures in the context of prosthesis control. The results of the experiments will allow us to understand the potential limitations and opportunities of this technology for practical application in real conditions. The neural network model and architecture, activation functions and parameters used for training are described. Learning parameters that affect the effectiveness of model learning are also considered. To evaluate the effectiveness of the model, results such as model evaluation metrics, model performance graphs, and confusion matrix are used to evaluate the level of reliability and performance of the trained neural network. Method of collecting electromyography (EMG) data is proposed, which consists in the use of electrical signals arising in muscles during their contraction. This process involves placing electrodes on the surface of the skin over the muscles being analyzed to record the electrical signals that occur at the moment of muscle activity. This approach allows collecting objective data on muscle activity and their movements, which can then be used to train a neural network and further use it in controlling a bionic prosthesis. A series of experiments was conducted to assess the accuracy of recognition of various movements using the trained model. Analyzing the results of the experiments, it is possible to understand how efficiently and reliably the trained model works in real conditions and how suitable it is for practical use in control systems of bionic prostheses.

Author Biography

R. I. Bilyy, Vinnytsia National Technical University

Post-Graduate Student t of the Chair of Biomedical Engineering and Opto-Electronic Systems

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Published

2024-06-27

How to Cite

[1]
R. I. . Bilyy, “Using a TensorFlow-Based Neural Network for Gesture Recognition and Control of a Bionic Prosthesis”, Вісник ВПІ, no. 3, pp. 71–77, Jun. 2024.

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Information technologies and computer sciences

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