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Logistic Model Tree for Human Activity Recognition Using Smartphone-Based Inertial Sensors

机译:使用基于智能手机的惯性传感器的人类活动识别的物流模型树

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Human Activity Recognition (HAR) systems using sensor data have widespread use in many real-life applications, making it an important emerging area of research. As inertial sensors are readily available in many handheld devices, HAR systems are generally designed based on the data obtained from them. In this paper, the Logistic Model Trees (LMT) machine learning method for predicting the human motion from smartphone-based inertial sensors is considered. This study aims to demonstrate the capabilities of LMT in obtaining higher prediction rates even with short time segment of data (1 sec), in comparison with longer time segments (2.5 sec) used in the literature. The performance of HAR system designed with LMT is compared with those designed with Random Forest (RF) and Logistic Regression Tree (LR) for a set of dynamic and static activities. The system is trained and tested on two publically available datasets, namely WISDM and UCI HAR. The proposed LMT method outperforms RF and LR by achieving recognition accuracies 90.86% and 94.02% on WISDM and UCI HAR respectively, and achieves between 89.82% - 88.73% overall accuracy during cross-dataset evaluation.
机译:使用传感器数据的人类活动识别(HAR)系统在许多现实生活中具有广泛应用,使其成为重要的新兴的研究领域。随着惯性传感器在许多手持设备中容易获得,通常基于从它们获得的数据设计HAR系统。在本文中,考虑了用于预测基于智能手机的惯性传感器的人体运动的物流模型树(LMT)机器学习方法。本研究旨在展示LMT在获得更高的预测率时的能力,即使在文献中使用的较长时间段(2.5秒)相比,即使是数据短时间(1秒))。使用LMT设计的HAR系统的性能与随机森林(RF)和Logistic回归树(LR)设计的那些,用于一组动态和静态活动。系统培训并在两个公共可用数据集中进行培训并测试,即WisDM和UCI Har。所提出的LMT方法通过分别实现识别精度90.86%和94.02%,在Wisdm和Uci RAR上实现识别精度和94.02%,在交叉数据集评估期间实现89.82%-88.73%的总精度。

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