EMG analysis of complete denture wearers using a three-dimensional representation of the time behavior of AR model parameters.

Three-dimensional representation to screen the adaptation process of individual dentures is presented. In the parametric analysis of electromyographic (EMG) signals, we have to deal with the complicated behavior of a lot of parameters in the time domain. We have employed the less-biased time varying AR model parameters estimated by locally quasi-stationary processing. Hence, we propose the time-suppressed representation of the behavior, projecting the time series of less-biased time-varying vectors onto three standard planes. The vector is composed of the k parameters, K(i) for i = 1, 2, 3. Therefore, the mutually perpendicular coordinates are K(1), K(2) and K(3). Significant changes which appear to result from the muscle dynamics are observed in the K(2)-K(3) plane, as the masticatory function is recovered.

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