基于智能手机的无线basns方向传感数据融合研究

Danish Mahmood, N. Javaid, M. Imran, Z. Khan, U. Qasim, M. Alnuem
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引用次数: 0

摘要

定向传感并不是一个新概念。它已经使用了很长时间,然而,随着无线身体区域传感器网络(WBASNs)等新技术的出现,它提出了新的挑战。内置定向传感器的智能手机正在取代为特定用途而设计的昂贵而复杂的惯性测量单元(imu)。WBASN中的方向传感有着广泛的应用。在电子健康应用中,脊柱损伤的康复调查可以通过持续读取姿势来测量。为此,陀螺仪和加速度计是起着至关重要作用的关键传感器。对于像机器人和飞机这样的机器,这种数据融合正在实践中。然而,考虑到人体的运动,需要找到一种精确的融合算法,以满足所有要求,并降低复杂度。在这项工作中,我们讨论并比较了两种考虑无线身体区域传感器融合(WBASF)的算法,即卡尔曼和互补数据融合技术。根据我们的研究结果,卡尔曼滤波器可能在机器上给出了非常好的结果,然而,互补滤波器在wbasn中证明了自己在性能、复杂性和所需的计算能力方面更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Data Fusion for Orientation Sensing in WBASNs Using Smart Phones
Orientation sensing is not a new concept. It is being used since ages however, with emergence of new technologies such as Wireless Body Area Sensor Networks (WBASNs), it gives new challenges. Commencement of smart phones that have built in orientation sensors are replacing expensive and complex Inertial Measurement Units (IMUs) designed for a specific purpose. Orientation sensing in WBASN have numerous applications. In e-health applications, rehabilitation investigation of backbone injuries can be measured by continues readings of posture. For that, gyroscopes and accelerometers are key sensors that play vital role. For machines such as robots and air crafts, such data fusion is in practice. However, considering human body movements yet there is a need to find an accurate fusion algorithm that meets all demands with low complexity. In this work, we discussed and compared two algorithms considering Wireless Body Area Sensor Fusion (WBASF) i.e. Kalman and Complementary data fusion techniques. According to our findings, Kalman Filter may have given very good results regarding machines however, Complementary filter proved itself better in performance, complexity and required computational power in WBASNs.
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