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Daily Activity Recognition using Wearable Sensors via Machine Learning and Feature Selection

机译:通过机器学习和特征选择使用可穿戴式传感器进行日常活动识别

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Human activity recognition has been the focus of significant research due to its various applications. Bio-signals acquired by wearable inertial sensors is one type of data that can be used to accomplish that task. Also, machine learning techniques have become a standard pattern discovery tool in such a problem. This has stimulated the construction of many publicly available datasets to learn from, with variations in the number of sensors and activities, among others. The Human Gait Database (HuGaDB) is a state- of-the-art (SOTA) example of such datasets, and is considered the most comprehensive to date. In this paper, we incorporate four feature selection techniques along with four different classifiers to attain the highest recognition accuracy. Extensive analysis is first applied to determine the optimal number of features, which is then fed to four different techniques of sequential feature selection. We demonstrate that higher recognition accuracies are achievable with significant reduction in the number of features. We also show that sequential forward floating feature selection with the random forest classifier yields the highest recognition accuracies.
机译:由于人类活动识别的各种应用,它已成为重要研究的焦点。可穿戴式惯性传感器获取的生物信号是可用于完成该任务的一种数据。而且,机器学习技术已经成为解决这一问题的标准模式发现工具。这刺激了许多公开可用的数据集的构建,其中包括传感器和活动数量的变化等。步态数据库(HuGaDB)是此类数据集的最新示例(SOTA),并且被认为是迄今为止最全面的数据库。在本文中,我们结合了四种特征选择技术以及四种不同的分类器,以实现最高的识别精度。首先进行广泛的分析,以确定最佳的特征数量,然后将其馈送到顺序特征选择的四种不同技术中。我们证明,通过大量减少特征可以实现更高的识别精度。我们还表明,使用随机森林分类器进行顺序前向浮动特征选择会产生最高的识别精度。

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