This paper addresses a technique to estimate the muscle activity from the movement data. Statistical models, such as linear regression (LR) models and artificial neural networks (ANNs), are good candidate estimation techniques. Although an ANN has a high estimation capability, it is frequently in the clinical application that a very small amount of data leads to performance deterioration. Conversely, an LR model needs fewer data, while its generalization performance is limited. In this paper, therefore, a muscle activity estimation method is proposed that uses a linear logistic regression model to improve the generalization performance. The proposed method was compared with an LR model and an ANN in verification experiments with several different conditions. The results suggest that the proposed method has a higher generalization performance than the conventional methods.
CITATION STYLE
Sekiya, M., Sakaino, S., & Toshiaki, T. (2019). Linear Logistic Regression for Estimation of Lower Limb Muscle Activations. IEEE Transactions on Neural Systems and Rehabilitation Engineering, 27(3), 523–532. https://doi.org/10.1109/TNSRE.2019.2898207
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