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A Feature Ranking and Selection Algorithm for Machine Learning-Based Step Counters

机译:基于机器学习的步进计数器的特征排序和选择算法

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Although ultra wideband (UWB) positioning is considered as one of the most promising solutions for indoor positioning due to its high positioning accuracy, the accuracy in situations with a large number of users will be reduced because the time between two UWB position updates can be very high. To obtain a position estimate in between these updates, we can combine the UWB positioning with a different technology, e.g., an inertial measurement unit (IMU) that captures data from an accelerometer, gyroscope, and magnetometer. Previous research using the IMU outputs for location-based services employs the periodic behaviour of the accelerometer signal to count steps. However, most of these algorithms require extensive manual tuning of multiple parameters to obtain satisfactory accuracy. To overcome these practical issues, step counting algorithms using machine learning (ML) principles can be developed. In this paper, we consider accelerometer-based step counters using ML. As the performance and complexity of such algorithms depend on the features used in the training and inference phase, proper selection of the employed features is important. Therefore, in this paper, we propose a novel feature selection algorithm, where we first rank the features based on their Bhattacharyya coefficients and then systematically construct a subset of these ranked features. In this paper, we compare three ranking approaches and apply our algorithm to different ML algorithms employing an experimental set. Although the performance of the evaluated combinations slightly varies for different ML algorithms, their performance is comparable to state-of-the-art step counters, without the need to tune parameters manually.
机译:虽然超宽带(UWB)定位被认为是由于其高定位精度导致的室内定位的最有希望的解决方案之一,但由于两个UWB位置更新之间的时间,因此将减少大量用户的情况下的准确性高的。为了在这些更新之间获得估计的位置,我们可以将UWB定位与不同的技术相结合,例如,默认从加速度计,陀螺仪和磁力计捕获数据的惯性测量单元(IMU)。以前使用用于基于位置的服务的IMU输出的研究采用加速度计信号的周期性行为来计算步骤。然而,大多数这些算法需要大量手动调整多个参数以获得令人满意的精度。为了克服这些实际问题,可以开发使用机器学习(ML)原则的步骤计数算法。在本文中,我们考虑使用ML的加速度计的步进计数器。由于这种算法的性能和复杂性取决于训练和推理阶段中使用的特征,因此正确选择所采用的功能是重要的。因此,在本文中,我们提出了一种新颖的特征选择算法,在那里我们首先基于其Bhattacharyya系数排列特征,然后系统地构造这些排名特征的子集。在本文中,我们比较三种排名方法并将算法应用于采用实验组的不同ML算法。虽然评估的组合的性能略有不同于不同的ML算法,但它们的性能与最先进的步数相当,而无需手动调谐参数。

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