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Position-Based Feature Selection for Body Sensors regarding Daily Living Activity Recognition

机译:关于日常生活活动识别的身体传感器的基于位置的特征选择

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摘要

This paper proposes a novel approach to recognize activities based on sensor-placement feature selection. The method is designed to address a problem of multisensor fusion information of wearable sensors which are located in different positions of a human body. Precisely, the approach can extract the best feature set that characterizes each activity regarding a body-sensor location to recognize daily living activities. We firstly preprocess the raw data by utilizing a low-pass filter. After extracting various features, feature selection algorithms are applied separately on feature sets of each sensor to obtain the best feature set for each body position. Then, we investigate the correlation of the features in each set to optimize the feature set. Finally, a classifier is applied to an optimized feature set, which contains features from four body positions to classify thirteen activities. In experimental results, we obtain an overall accuracy of 99.13% by applying the proposed method to the benchmark dataset. The results show that we can reduce the computation time for the feature selection step and achieve a high accuracy rate by performing feature selection for the placement of each sensor. In addition, our proposed method can be used for a multiple-sensor configuration to classify activities of daily living. The method is also expected to deploy to an activity classification system-based big data platform since each sensor node only sends essential information characterizing itself to a cloud server.
机译:本文提出了一种基于传感器展示特征选择来识别活动的新方法。该方法旨在解决可穿戴传感器的多传感器融合信息的问题,其位于人体的不同位置。精确地,该方法可以提取表征关于主体传感器位置的每个活动的最佳特征集,以识别日常生活活动。我们首先通过利用低通滤波器预处理原始数据。在提取各种特征之后,特征选择算法在每个传感器的特征组上单独应用,以获得为每个主体位置设置的最佳特征。然后,我们调查每个集合中的特征的相关性以优化特征集。最后,将分类器应用于优化的特征集,其中包含四个身体位置的特征来分类十三个活动。在实验结果中,我们通过将建议的方法应用于基准数据集来获得99.13%的整体准确性。结果表明,我们可以通过执行每个传感器的放置来减少特征选择步骤的计算时间,并通过执行特征选择来实现高精度率。此外,我们的提出方法可用于多传感器配置,以对日常生活的活动进行分类。该方法还期望部署到基于活动分类系统的大数据平台,因为每个传感器节点仅将特征的基本信息发送到云服务器。

著录项

  • 来源
    《Journal of Sensors》 |2018年第4期|共13页
  • 作者单位

    Kookmin Univ Dept Elect Engn Seoul South Korea;

    Kookmin Univ Dept Elect Engn Seoul South Korea;

    Korea Inst Ind Technol Ansan South Korea;

    Kookmin Univ Dept Elect Engn Seoul South Korea;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 TP212;
  • 关键词

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