描述运动行为的自主学习方法

Rashmi Anil, Hemen Khanna, A. Keshavamurthy, R. Khanna, Asif Haswarey
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引用次数: 1

摘要

在老年人中,无人看管的跌倒会导致严重的医疗问题,尤其是当运动功能可能变得不活跃时。像加速度计这样的运动传感器可以帮助人类运动的自动表征和分类。未分类运动可以解释异常,当报告给在线知识生成器时,可以纠正现有模型或估计该模型中的其他类。在本文中,我们开发了一个使用低功耗英特尔夸克D1000 MCU的警报系统,该系统使用逻辑模型树(LMT)来表征运动行为,并在使用在线学习增强模型的同时估计运动行为中的异常。目标是建立一个可用性模型,在该模型中,可以记录未分类的行为(对应于加速度计数据),并在额外的干预后重新评估以重新分类。这将导致自动检测不希望的运动活动(如跌倒),并避免误报日常生活活动。
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Autonomous learning approach to characterizing motion behavior
Unattended falls can lead to serious medical issues among the elderly, especially when motor functions may become inactive. Motion sensors like accelerometer can aid in automatic characterization and classification of human motion. Un-Classified motion can be accounted for anomaly that when reported to the online knowledge builder can correct the existing model or estimate additional classes into that model. In this paper we develop an alert system using low power Intel Quark D1000 MCU that characterizes the motion behavior using Logistic Model Trees (LMT) and estimates an anomaly in motion behavior while augmenting the model using online learning. The goal is to build a useability model where an unclassified behavior (corresponding to accelerometer data) can be logged and upon additional intervention can be re-evaluated for re-classification. This will lead to autodetecting un-desired motion activities (like falls) and avoid false positives to activities of daily life.
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