让物体告诉你在做什么

Gabriele Civitarese, S. Belfiore, C. Bettini
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引用次数: 20

摘要

当考虑到居民与家居物品的互动时,在智能家居中进行的日常生活活动(adl)识别被证明是非常有效的。分析物体是如何被操纵的,结合其他传感器数据,可以特别有用地检测执行adl时的异常情况,从而支持老年人认知障碍的早期诊断。传感技术的最新改进可以克服现有技术的几个限制,以检测物体的操作,通常基于RFID,可穿戴传感器和/或计算机视觉方法。在这项工作中,我们提出了一个不引人注目的解决方案,它转移了所有对象侧的监控负担。特别是,我们研究了使用微型BLE信标的有效性,这些信标配备了附着在日常物品上的加速度计和温度传感器。我们采用统计方法对来自物体的加速度计数据进行实时分析,目的是检测老年人在家中进行的特定操作。我们描述了我们的技术,并给出了通过在真实数据集上评估该方法获得的初步结果。结果表明,该方法通过提供关于对象操作的详细信息,在丰富adl和异常行为识别系统中具有潜在的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Let the objects tell what you are doing
Recognition of activities of daily living (ADLs) performed in smart homes proved to be very effective when the interaction of the inhabitant with household items is considered. Analyzing how objects are manipulated can be particularly useful, in combination with other sensor data, to detect anomalies in performing ADLs, and hence to support early diagnosis of cognitive impairments for elderly people. Recent improvements in sensing technologies can overcome several limitations of the existing techniques to detect object manipulations, often based on RFID, wearable sensors and/or computer vision methods. In this work we propose an unobtrusive solution which shifts all the monitoring burden at the objects side. In particular, we investigate the effectiveness of using tiny BLE beacons equipped with accelerometer and temperature sensors attached to everyday objects. We adopt statistical methods to analyze in realtime the accelerometer data coming from the objects, with the purpose of detecting specific manipulations performed by seniors in their homes. We describe our technique and we present the preliminary results obtained by evaluating the method on a real dataset. The results indicate the potential utility of the method in enriching ADLs and abnormal behaviors recognition systems, by providing detailed information about object manipulations.
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