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Online sequential extreme learning machine algorithm based human activity recognition using inertial data

机译:基于惯性数据的在线顺序极限学习机算法基于人类活动的识别

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Human activity recognition (HAR) is the basis for many real world applications concerning health care, sports and gaming industry. Different methodological perspectives have been proposed to perform HAR. One appealing methodology is to take an advantage of data that are collected from inertial sensors which are embedded in the individual's smartphone. These data contain rich amount of information about daily activities of the user. However, there is no straightforward analytical mapping between a performed activity and its corresponding data. Besides, online training for the classification in these types of applications is a concern. This paper aims at classifying human activities based on the inertial data collected from a user's smartphone. An Online Sequential Extreme Learning Machine (OSELM) method is implemented to train a single hidden layer feed-forward network (SLFN). Experimental results with an average accuracy of 82.05% are achieved.
机译:人类活动识别(HAR)是许多现实世界中有关医疗保健,体育和游戏行业的应用程序的基础。已经提出了用于执行HAR的不同方法论观点。一种有吸引力的方法是利用从嵌入在个人智能手机中的惯性传感器收集的数据。这些数据包含有关用户日常活动的大量信息。但是,在执行的活动及其对应的数据之间没有直接的分析映射。此外,针对这些类型的应用程序中的分类的在线培训也值得关注。本文旨在根据从用户智能手机收集的惯性数据对人类活动进行分类。实现了在线顺序极限学习机(OSELM)方法来训练单个隐藏层前馈网络(SLFN)。获得了平均准确度为82.05%的实验结果。

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