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A light weight smartphone based human activity recognition system with high accuracy

机译:轻量级的基于智能手机的高精度人体活动识别系统

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With the pervasive use of smartphones, which contain numerous sensors, data for modeling human activity is readily available. Human activity recognition is an important area of research because it can be used in context-aware applications. It has significant influence in many other research areas and applications including healthcare, assisted living, personal fitness, and entertainment. There has been a widespread use of machine learning techniques in wearable and smartphone based human activity recognition. Despite being an active area of research for more than a decade, most of the existing approaches require extensive computation to extract feature, train model, and recognize activities. This study presents a computationally efficient smartphone based human activity recognizer, based on dynamical systems and chaos theory. A reconstructed phase space is formed from the accelerometer sensor data using time-delay embedding. A single accelerometer axis is used to reduce memory and computational complexity. A Gaussian mixture model is learned on the reconstructed phase space. A maximum likelihood classifier uses the Gaussian mixture model to classify ten different human activities and a baseline. One public and one collected dataset were used to validate the proposed approach. Data was collected from ten subjects. The public dataset contains data from 30 subjects. Out-of-sample experimental results show that the proposed approach is able to recognize human activities from smartphones' one-axis raw accelerometer sensor data. The proposed approach achieved 100% accuracy for individual models across all activities and datasets. The proposed research requires 3 to 7 times less amount of data than the existing approaches to classify activities. It also requires 3 to 4 times less amount of time to build reconstructed phase space compare to time and frequency domain features. A comparative evaluation is also presented to compare proposed approach with the state-of-the-art works.
机译:随着智能手机的广泛使用,其中包含许多传感器,可以轻松获得用于模拟人类活动的数据。人类活动识别是一个重要的研究领域,因为它可以用于情境感知应用程序中。它在许多其他研究领域和应用中具有重要影响,包括医疗保健,生活辅助,个人健身和娱乐。机器学习技术已在可穿戴和基于智能手机的人类活动识别中得到广泛使用。尽管已经有十多年的活跃研究领域,但是大多数现有方法仍需要大量计算以提取特征,训练模型并识别活动。这项研究基于动态系统和混沌理论,提出了一种基于计算效率的基于智能手机的人类活动识别器。使用延时嵌入根据加速度计传感器数据形成重构的相空间。单个加速度计轴用于减少内存和计算复杂性。在重构的相空间上学习了高斯混合模型。最大似然分类器使用高斯混合模型对十种不同的人类活动和基线进行分类。使用一个公众和一个收集的数据集来验证所提出的方法。从十个受试者收集数据。公开数据集包含来自30个主题的数据。样本外实验结果表明,该方法能够从智能手机的单轴原始加速度传感器数据中识别人类活动。对于所有活动和数据集的单个模型,该方法的准确性达到100%。拟议的研究所需的数据量比现有的活动分类方法少3至7倍。与时域和频域特征相比,构建重构的相空间还需要3至4倍的时间。还提出了一个比较评估,以比较提议的方法和最新技术。

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