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Analyzing the Effectiveness and Contribution of Each Axis of Tri-Axial Accelerometer Sensor for Accurate Activity Recognition

机译:分析三轴加速度传感器各轴的有效性和贡献以进行准确的活动识别

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摘要

Recognizing human physical activities from streaming smartphone sensor readings is essential for the successful realization of a smart environment. Physical activity recognition is one of the active research topics to provide users the adaptive services using smart devices. Existing physical activity recognition methods lack in providing fast and accurate recognition of activities. This paper proposes an approach to recognize physical activities using only2-axes of the smartphone accelerometer sensor. It also investigates the effectiveness and contribution of each axis of the accelerometer in the recognition of physical activities. To implement our approach, data of daily life activities are collected labeled using the accelerometer from 12 participants. Furthermore, three machine learning classifiers are implemented to train the model on the collected dataset and in predicting the activities. Our proposed approach provides more promising results compared to the existing techniques and presents a strong rationale behind the effectiveness and contribution of each axis of an accelerometer for activity recognition. To ensure the reliability of the model, we evaluate the proposed approach and observations on standard publicly available dataset WISDM also and provide a comparative analysis with state-of-the-art studies. The proposed approach achieved 93% weighted accuracy with Multilayer Perceptron (MLP) classifier, which is almost 13% higher than the existing methods.
机译:从流智能手机传感器读数中识别人类的身体活动对于成功实现智能环境至关重要。身体活动识别是使用智能设备为用户提供自适应服务的积极研究主题之一。现有的身体活动识别方法缺乏提供活动的快速和准确识别的能力。本文提出了一种仅使用智能手机加速度传感器的2轴识别身体活动的方法。它还研究了加速度计各轴在识别体育活动中的有效性和贡献。为了实施我们的方法,使用加速度计从12位参与者那里收集了标记为日常生活活动的数据。此外,实现了三个机器学习分类器,以在收集的数据集上训练模型并预测活动。与现有技术相比,我们提出的方法可提供更有希望的结果,并且在加速度计各轴用于活动识别的有效性和贡献背后提出了强有力的理由。为确保模型的可靠性,我们还对标准的公开数据集WISDM评估了提出的方法和观察结果,并提供了具有最新技术的比较分析。所提出的方法使用多层感知器(MLP)分类器实现了93%的加权精度,比现有方法高出近13%。

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