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Human activity data discovery from triaxial accelerometer sensor: Non-supervised learning sensitivity to feature extraction parametrization

机译:从三轴加速度传感器获取人类活动数据:对特征提取参数化的无监督学习敏感性

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摘要

Background: Our methodology describes a human activity recognition framework based on feature extraction and feature selection techniques where a set of time, statistical and frequency domain features taken from 3-dimensional accelerometer sensors are extracted. This framework specifically focuses on activity recognition using on-body accelerometer sensors. We present a novel interactive knowledge discovery tool for accelerometry in human activity recognition and study the sensitivity to the feature extraction parametrization. Results: The implemented framework achieved encouraging results in human activity recognition. We have implemented a new set of features extracted from wearable sensors that are ambitious from a computational point of view and able to ensure high classification results comparable with the state of the art wearable systems (Mannini et al. 2013). A feature selection framework is developed in order to improve the clustering accuracy and reduce computational complexity.1 Several clustering methods such as K-Means, Affinity Propagation, Mean Shift and Spectral Clustering were applied. The K-means methodology presented promising accuracy results for person-dependent and independent cases, with 99.29% and 88.57%, respectively. Conclusions: The presented study performs two different tests in intra and inter subject context and a set of 180 features is implemented which are easily selected to classify different activities. The implemented algorithm does not stipulate, a priori, any value for time window or its overlap percentage of the signal but performs a search to find the best parameters that define the specific data. A clustering metric based on the construction of the data confusion matrix is also proposed. The main contribution of this work is the design of a novel gesture recognition system based solely on data from a single 3-dimensional accelerometer.
机译:背景:我们的方法论描述了一种基于特征提取和特征选择技术的人类活动识别框架,其中提取了从3维加速度传感器获取的一组时域,统计和频域特征。该框架专门针对使用人体加速度传感器的活动识别。我们提出了一种新的交互式知识发现工具,用于人类活动识别中的加速度计,并研究了特征提取参数化的敏感性。结果:已实施的框架在人类活动识别方面取得了令人鼓舞的结果。我们已经实现了从可穿戴传感器中提取的一组新功能,这些功能从计算角度来看是雄心勃勃的,并且能够确保与先进的可穿戴系统状态相媲美的高分类结果(Mannini等人,2013)。开发了一种特征选择框架,以提高聚类的准确性并减少计算的复杂性。1应用了几种聚类方法,例如K-Means,亲和传播,均值漂移和谱聚类。 K均值方法论为依赖于人和独立的病例提供了有希望的准确性结果,分别为99.29%和88.57%。结论:本研究在受试者内和受试者间进行了两种不同的测试,并实现了180种功能,可以轻松选择这些功能以对不同的活动进行分类。所实现的算法没有预先规定时间窗口的任何值或其信号的重叠百分比,而是执行搜索以查找定义特定数据的最佳参数。还提出了一种基于数据混淆矩阵构造的聚类度量。这项工作的主要贡献是仅基于来自单个3维加速度计的数据的新型手势识别系统的设计。

著录项

  • 来源
    《Information Processing & Management》 |2015年第2期|204-214|共11页
  • 作者单位

    Faculty of Sciences and Technology, New University of Lisbon, 2829-516 Caparica, Portugal,Champalimaud Neuroscience Programme, Champalimaud Institute for the Unknown, Avenida de Brasilia, 1400-038 Lisbon, Portugal;

    Faculty of Sciences and Technology, New University of Lisbon, 2829-516 Caparica, Portugal;

    Faculty of Sciences and Technology, New University of Lisbon, 2829-516 Caparica, Portugal,PLUX, Wireless Biosignals, Avenida 5 de Outubro, 70, 1050-059 Lisbon, Portugal;

    Champalimaud Neuroscience Programme, Champalimaud Institute for the Unknown, Avenida de Brasilia, 1400-038 Lisbon, Portugal;

    Champalimaud Neuroscience Programme, Champalimaud Institute for the Unknown, Avenida de Brasilia, 1400-038 Lisbon, Portugal;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Human activity recognition; Interactive knowledge discovery; Feature extraction; Dimensionality reduction; Clustering algorithms;

    机译:人类活动识别;互动知识发现;特征提取;降维;聚类算法;

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