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Algebraic estimator of Parkinson's tremor frequency from biased and noisy sinusoidal signals

机译:帕金森的代数估计来自偏见和嘈杂的正弦信号的震颤频率

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Tremor is an uncontrolled trembling movement or shakes, which are defined as an involuntary, rhythmic oscillatory movement of the body. The dominant features of Parkinsonism are the motor task and its frequency. This paper presents studies on the tremor parameter identification to be used for obtaining the frequency as a dynamical feature of the tremor. The method is based on the analysis of time-varying signals for identification of the tremor's frequency from unknown noisy harmonic signals with an offset, using time-varying unstable filters and low-pass Butterworth filters. This approach uses an algebraic derivative method, in the frequency domain, to obtain the main frequency of tremors in the time domain. The first frequency mode of the tremor is one of the main characteristics to represent the low vibrational dynamics of Parkinson's tremor. The proposed frequency estimation is performed in less than a period of the slower component of the measured signal. Real tremor signals were used to experimentally validate the proposed method and the algorithm proved to be fast and robust to high-frequency noises tracking the time variation of the tremor accurately.
机译:震颤是一种不受控制的颤抖运动,被定义为身体的非自愿、有节奏的振荡运动。帕金森病的主要特征是运动任务及其频率。本文研究了用于获取作为地震动力学特征的频率的地震参数识别。该方法基于对时变信号的分析,使用时变不稳定滤波器和低通巴特沃斯滤波器,从具有偏移的未知噪声谐波信号中识别地震频率。该方法在频域中使用代数导数方法,在时域中获得地震的主频。震颤的第一频率模式是代表帕金森氏震颤低振动动力学的主要特征之一。建议的频率估计在测量信号的较慢分量的不到一个周期内执行。利用实际地震信号对该方法进行了实验验证,结果表明,该算法对高频噪声能准确跟踪地震的时间变化具有快速性和鲁棒性。

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