基于低成本惯性传感器和速度分类的减聚类Takagi-Sugeno位置跟踪

Dariusz Maton, J. Economou, David Galvão Wall, David Ward, Simon Trythall
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引用次数: 0

摘要

在这项工作中,使用低成本惯性测量单元的开环位置跟踪通过使用减法聚类算法的Takagi-Sugeno速度分类来帮助生成模糊规则库。采用网格搜索的方法,获得一个合适的速度矢量分类窗口,然后进行积分生成轨迹段。利用公开的实验数据,将该方法的重建精度与四种竞争的行人跟踪算法进行了比较。通过对选定测试数据的比较,展示了更具竞争力的相对和绝对弹道误差指标。本文提出的方法也在一个独立的实验数据集上得到了验证。与使用深度学习的方法不同,所提出的方法具有透明性(模糊规则库)。最后,研究了速度分类模型在测试时对训练方向扰动的敏感性分析,以指导这种数据驱动算法的开发人员在集成建模方法中所需的粒度。该方法的准确性和透明度可能对需要低成本惯性位置跟踪的应用产生积极影响,例如应急响应人员的增强现实耳机。
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Subtractive clustering Takagi-Sugeno position tracking for humans by low-cost inertial sensors and velocity classification
In this work, open-loop position tracking using low-cost inertial measurement units is aided by Takagi-Sugeno velocity classification using the subtractive clustering algorithm to help generate the fuzzy rule base. Using the grid search approach, a suitable window of classified velocity vectors was obtained and then integrated to generate trajectory segments. Using publicly available experimental data, the reconstruction accuracy of the method is compared against four competitive pedestrian tracking algorithms. The comparison on selected test data, has demonstrated more competitive relative and absolute trajectory error metrics. The proposed method in this paper is also verified on an independent experimental data set. Unlike the methods which use deep learning, the proposed method has shown to be transparent (fuzzy rule base). Lastly, a sensitivity analysis of the velocity classification models to perturbations from the training orientation at test time is investigated, to guide developers of such data-driven algorithms on the granularity required in an ensemble modeling approach. The accuracy and transparency of the approach may positively influence applications requiring low-cost inertial position tracking such as augmented reality headsets for emergency responders.
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