Probabilistic Estimation of Posture Metrics Using Novel Loadsols

Dan Huynh, J. J. Steckenrider, Gregory M Freisinger
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Abstract

This paper presents an original technique for estimating human posture metrics using Novel Loadsols®. Under the proposed technique, center of pressure (COP) metrics are derived by combining physics- and data-driven estimates to achieve reasonably high accuracy at relatively low cost. To develop a training set upon which the probabilistic data model was constructed, 79 trials were conducted in which participants stood comfortably still for 30 seconds at a time simultaneously on a force plate and a pair of Loadsols, where the force plate is considered to be the gold-standard of COP measurement. These data were then used to generate Gaussian mixture models (GMMs) of pairwise combinations of force plate and Loadsol metrics. The GMMs can then be conditioned on Loadsol measurements and fused using Bayesian inference. When the training set was re-processed by converting 12 Loadsol metrics into estimated force plate metrics, it was found that the converted metrics matched ground-truth more accurately on average than raw Loadsol metrics. Furthermore, there was improvement in the r2 values of the regression lines after conversion for 75% of the metrics. Given some experiment and algorithm refinement, the proposed probabilistic approach has potential to offer the accuracy of force plate COP estimation at a fraction of the cost.
基于新型载荷的姿态度量概率估计
本文介绍了一种使用Novel Loadsols®估计人体姿势指标的原始技术。在该技术下,压力中心(COP)指标通过结合物理和数据驱动的估计来获得,以相对较低的成本获得相当高的精度。为了建立一个训练集,在此基础上构建概率数据模型,进行了79次试验,在这些试验中,参与者同时在一个力板和一对Loadsols上舒适地站立30秒,其中力板被认为是COP测量的金标准。然后使用这些数据生成力板和Loadsol指标两两组合的高斯混合模型(GMMs)。然后,GMMs可以以Loadsol测量为条件,并使用贝叶斯推理进行融合。当将12个Loadsol指标转换为估计的力板指标对训练集进行重新处理时,发现转换后的指标平均比原始Loadsol指标更准确地匹配真实情况。此外,75%的指标转换后,回归线的r2值有改善。经过一些实验和算法改进,所提出的概率方法有可能以一小部分成本提供力板COP估计的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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