首页> 外文会议>2018 IEEE/ACM International Conference on Connected Health: Applications, Systems and Engineering Technologies >SmartEAR: Smartwatch-Based Unsupervised Learning for Multi-modal Signal Analysis in Opportunistic Sensing Framework
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SmartEAR: Smartwatch-Based Unsupervised Learning for Multi-modal Signal Analysis in Opportunistic Sensing Framework

机译:SmartEAR:基于Smartwatch的无监督学习,用于机会传感框架中的多模式信号分析

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Wrist-bands such as smartwatches have become an unobtrusive interface for collecting physiological and contextual data from users. Smartwatches are being used for smart healthcare, telecare, and wellness monitoring. In this paper, we used data collected from the AnEAR framework leveraging smartwatches to gather and store physiological data from patients in naturalistic settings. This data included temperature, galvanic skin response (GSR), acceleration, and heart rate (HR). In particular, we focused on HR and acceleration, as these two modalities are often correlated. Since the data was unlabeled we relied on unsupervised learning for multi-modal signal analysis. We propose using k-means clustering, GMM clustering, and Self-Organizing maps based on Neural Networks for group the multi-modal data into homogeneous clusters. This strategy helped in discovering latent structures in our data.
机译:腕带(例如智能手表)已成为用于从用户收集生理和上下文数据的简便界面。 Smartwatch已用于智能医疗保健,远程护理和健康监测。在本文中,我们使用了利用智能手表从AnEAR框架收集的数据,以收集和存储自然环境中患者的生理数据。该数据包括温度,皮肤电反应(GSR),加速度和心率(HR)。尤其是,我们专注于HR和加速,因为这两种方式通常是相关的。由于数据没有标签,因此我们依靠无监督学习进行多模式信号分析。我们建议使用基于神经网络的k均值聚类,GMM聚类和自组织映射,将多峰数据分组为同质聚类。这种策略有助于发现我们数据中的潜在结构。

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