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A position-independent method for soil types recognition using inertial data from a wearable device

机译:使用可穿戴设备的惯性数据进行土壤类型识别的位置无关方法

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摘要

This paper describes a novel method for recognizing different soil types based on inertial data generated by a user's gait. To achieve this objective, a new wearable device which aims at collecting data produced by an embedded 6-axis accelerometer/gyroscope was designed first. To command this piece of hardware (start and stop recording, as well as annotate raw data), a mobile application was specifically developed. A total of 70 well-known features both from time and frequency domains that are mostly used in activity recognition were computed over each signal to produce enough discriminating characteristics. Then, two machine learning algorithms (Random Forest and k-Nearest Neighbors) were employed to classify such data. The proposed method was tested with 9 participants on four soil types with an experimental setup close to real use case situations. Results obtained let us state that a soil-types recognition is not only possible but also accurate and reliable since overall median F-Score measures of 82% and 86% were obtained respectively with the Random Forest and the k-NN classifiers. Although the user independence of our system was not proven due to a limited number of involved users, the independence condition of the position of the wearable device was clearly demonstrated.
机译:本文介绍了一种基于用户步态生成的惯性数据识别不同土壤类型的新方法。为了实现这一目标,首先设计了一种新的可穿戴设备,该设备旨在收集由嵌入式6轴加速度计/陀螺仪产生的数据。为了命令该硬件(开始和停止记录以及注释原始数据),专门开发了移动应用程序。在每个信号上计算了总共70个时域和频域中最常用于活动识别的著名特征,以产生足够的区分特征。然后,采用了两种机器学习算法(Random Forest和k-Nearest Neighbors)对这些数据进行分类。在9种参与者对4种土壤类型进行了测试的基础上,该实验方法接近实际用例。获得的结果表明,土壤类型识别不仅是可行的,而且是准确可靠的,因为使用随机森林和k-NN分类器分别获得了82 \\%和86 \\%的总体中位数F得分。 。尽管由于涉及的用户数量有限,我们的系统的用户独立性尚未得到证明,但可穿戴设备位置的独立性条件已得到明确证明。

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