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A signal processing algorithm for improving the performance of a gyroscopic head-borne computer mouse

机译:用于提高陀螺头戴式计算机鼠标性能的信号处理算法

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This paper presents a signal processing algorithm to remove different types of noise from a gyroscopic head-borne computer mouse. The proposed algorithm is a combination of a Kalman filter (KF), a Weighted-frequency Fourier Linear Combiner (WFLC) and a threshold with delay method (TWD). The gyroscopic head-borne mouse was developed to assist persons with movement disorders. However, since MEMS-gyroscopes are usually sensitive to environmental disturbances such as shock, vibration and temperature change, a large portion of noise is added at the same time as the head movement is sensed by the MEMS-gyroscope. The combined method is applied to the specially adapted mouse, to filter out different types of noise together with the offset and drift, with marginal need of the calculation capacity. The method is examined with both static state tests and movement operation tests. Angular position is used to evaluate the errors. The results demonstrate that the combined method improved the head motion signal substantially, with 100.0% error reduction during the static state, 98.2% position error correction in the case of movements without drift and 99.9% with drift. The proposed combination in this paper improved the static stability and position accuracy of the gyroscopic head-borne mouse system by reducing noise, offset and drift, and also has the potential to be used in other gyroscopic sensor systems to improve the accuracy of signals. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文提出了一种信号处理算法,可以消除陀螺式头戴式计算机鼠标中不同类型的噪声。所提出的算法是卡尔曼滤波器(KF),加权频率傅里叶线性组合器(WFLC)和阈值延迟方法(TWD)的组合。陀螺头戴式鼠标是为协助运动障碍人士而开发的。然而,由于MEMS陀螺仪通常对诸如震动,振动和温度变化之类的环境干扰敏感,因此在通过MEMS陀螺仪感测头部运动的同时,添加了大量的噪声。组合的方法适用于经过特殊调整的鼠标,以滤除不同类型的噪声以及偏移和漂移,而对计算能力的要求很小。对该方法进行了静态测试和运动操作测试。角位置用于评估误差。结果表明,该组合方法显着改善了头部运动信号,在静态状态下误差降低了100.0%,在无漂移的情况下校正了98.2%的位置误差,在有漂移的情况下校正了99.9%。本文提出的组合通过减少噪声,偏移和漂移提高了陀螺头戴式鼠标系统的静态稳定性和位置精度,并且还具有在其他陀螺仪传感器系统中使用的潜力,以提高信号的准确性。 (C)2017 Elsevier Ltd.保留所有权利。

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