Peter L. Reichertz Institute for Medical Informatics, University of Braunschweig - Institute of Technology and Hannover Medical School, Mühlenpfordtstr. 23, D-38106 Braunschweig, Germany.
Comput Methods Programs Biomed. 2013 Jul;111(1):62-71. doi: 10.1016/j.cmpb.2013.03.006. Epub 2013 Apr 6.
Calibration of accelerometers can be reduced to 3D-ellipsoid fitting problems. Changing extrinsic factors like temperature, pressure or humidity, as well as intrinsic factors like the battery status, demand to calibrate the measurements permanently. Thus, there is a need for fast calibration algorithms, e.g. for online analyses. The primary aim of this paper is to propose a non-iterative calibration algorithm for accelerometers with the focus on minimal execution time and low memory consumption. The secondary aim is to benchmark existing calibration algorithms based on 3D-ellipsoid fitting methods. We compared the algorithms regarding the calibration quality and the execution time as well as the number of quasi-static measurements needed for a stable calibration. As evaluation criterion for the calibration, both the norm of calibrated real-life measurements during inactivity and simulation data was used. The algorithms showed a high calibration quality, but the execution time differed significantly. The calibration method proposed in this paper showed the shortest execution time and a very good performance regarding the number of measurements needed to produce stable results. Furthermore, this algorithm was successfully implemented on a sensor node and calibrates the measured data on-the-fly while continuously storing the measured data to a microSD-card.
加速度计的校准可以简化为 3D-椭球拟合问题。改变温度、压力、湿度等外在因素,以及电池状态等内在因素,都需要对测量值进行持续校准。因此,需要快速的校准算法,例如用于在线分析。本文的主要目的是提出一种针对加速度计的非迭代校准算法,重点是最小化执行时间和低内存消耗。次要目的是基于 3D-椭球拟合方法对现有的校准算法进行基准测试。我们比较了算法在校准质量、执行时间以及稳定校准所需的准静态测量次数方面的性能。作为校准的评估标准,我们同时使用了非活动期间校准后实际测量值的范数和模拟数据。这些算法表现出了很高的校准质量,但执行时间差异很大。本文提出的校准方法具有最短的执行时间和在产生稳定结果所需的测量次数方面表现非常出色。此外,该算法已成功在传感器节点上实现,并在实时校准测量数据的同时,持续将测量数据存储到 microSD 卡上。