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首页> 外文期刊>Neural computing & applications >Tracking changes in user activity from unlabelled smart home sensor data using unsupervised learning methods
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Tracking changes in user activity from unlabelled smart home sensor data using unsupervised learning methods

机译:跟踪用户活动的更改,使用无监督的学习方法从未标记的智能家庭传感器数据进行

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摘要

This paper investigates the utility of unsupervised machine learning and data visualisation for tracking changes in user activity over time. This is done through analysing unlabelled data generated from passive and ambient smart home sensors, such as motion sensors, which are considered less intrusive than video cameras or wearables. The challenge in using unlabelled passive and ambient sensors data for activity recognition is to find practical methods that can provide meaningful information to support timely interventions based on changing user needs, without the overhead of having to label the data over long periods of time. The paper addresses this challenge to discover patterns in unlabelled sensor data using kernel density estimation (KDE) for pre-processing the data, together with t-distributed stochastic neighbour embedding and uniform manifold approximation and projection for visualising changes. The methodology is developed and tested on the Aruba CASAS smart home dataset and focusses on discovering and tracking changes in kitchen-based activities. The traditional approach of using sliding windows to segment the data requires a priori knowledge of the temporal characteristics of activities being identified. In this paper, we show how an adaptive approach for segmentation, KDE, is a suitable alternative for identifying temporal clusters of sensor events from unlabelled data that can represent an activity. The ability to visualise different recurring patterns of activity and changes to these over time is illustrated by mapping the data for separate days of the week. The paper then demonstrates how this can be used to track patterns over longer time-frames which could be used to help highlight differences in the user's day-to-day behaviour. By presenting the data in a format that can be visually reviewed for temporal changes in activity over varying periods of time from unlabelled sensor data, opens up the opportunity for carers to then initiate further enquiry if variations to previous patterns are noted. This is seen as an accessible first step to enable carers to initiate informed discussions with the service user to understand what may be causing these changes and suggest appropriate interventions if the change is found to be detrimental to their well-being.
机译:本文调查了无监督机器学习和数据可视化的效用,以跟踪用户活动随时间的变化。这是通过分析从无源和环境智能家庭传感器产生的未标记数据,例如运动传感器,这些数据被认为是比摄像机或可穿戴物更少的侵入性。使用未标记的被动和环境传感器进行活动识别的挑战是寻找实用的方法,可以提供基于更改用户需求的及时干预的有意义信息,而没有必须在长时间标记数据的开销。本文解决了使用内核密度估计(KDE)来预先处理数据的未标记传感器数据中的模式,以及用于将数据进行预处理数据,以及用于可视化变化的T分布式随机邻居和均匀歧管近似和投影。该方法在Aruba Casas Smart Home数据集上开发和测试,并专注于发现和跟踪基于厨房活动的变化。使用滑动窗口分割数据的传统方法需要先知所识别活动的时间特征的先验知识。在本文中,我们展示了如何进行分割的自适应方法KDE是一种合适的替代方案,用于识别可以代表活动的未标记数据的传感器事件的时间集群。通过映射本周单独的几天来说明可视化不同重复活动和随时间的改变的能力。然后,该文件演示了如何用于跟踪模式超过更长的时间帧,该模式可用于帮助突出用户日常行为中的差异。通过以可视觉审查的格式呈现数据,可以在未变化的传感器数据的不同时间段内进行活动的时间变化,打开所需的机会,然后如果注意到先前模式的变化,则会发起进一步查询。这被视为一个可访问的第一步,使得护理人员能够与服务用户启动知情讨论以了解可能导致这些变化的可能导致这些更改,并建议如果发现改变对其福祉有害。

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