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首页> 外文期刊>International journal of pervasive computing and communications >Dynamic similarity-based activity detection and recognition within smart homes
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Dynamic similarity-based activity detection and recognition within smart homes

机译:智能家居中基于动态相似度的活动检测和识别

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Purpose - Within smart homes, ambient sensors are used to monitor interactions between users and the home environment. The data produced from the sensors are used as the basis for the inference of the users' behaviour information. Partitioning sensor data in response to individual instances of activity is critical for a smart home to be fully functional and to fulfil its roles, such as correctly measuring health status and detecting emergency situations. The purpose of this study is to propose a similarity-based segmentation approach applied on time series sensor data in an effort to detect and recognise activities within a smart home.Design/methodology/approach - The paper explores methods for analysing time-related sensor activation events in an effort to undercover hidden activity events through the use of generic sensor modelling of activity based upon the general knowledge of the activities. Two similarity measures are proposed to compare a time series based sensor sequence and a generic sensor model of an activity. In addition, a framework is developed for automatically analysing sensor streams. Findings - The results from evaluation of the proposed methodology on a publicly accessible reference dataset show that the proposed methods can detect and recognise multi-category activities with satisfying accuracy, in addition to the capability of detecting interleaved activities. Originality/value - The concepts introduced in this paper will improve automatic detection and* recognition of daily living activities from timely ordered sensor events based on domain knowledge of the activities.
机译:目的-在智能家居中,环境传感器用于监视用户与家庭环境之间的交互。由传感器产生的数据被用作推断用户行为信息的基础。响应于各个活动实例而对传感器数据进行分区对于使智能家居充分发挥功能并发挥其作用至关重要,例如正确测量健康状况和检测紧急情况。这项研究的目的是提出一种应用于时间序列传感器数据的基于相似度的分割方法,以检测和识别智能家居中的活动。设计/方法/方法-本文探讨了分析与时间相关的传感器激活的方法通过基于活动的一般知识对活动进行通用的传感器建模来发现隐藏的活动事件,从而对事件进行隐藏。提出了两种相似性度量来比较基于时间序列的传感器序列和活动的通用传感器模型。另外,开发了用于自动分析传感器流的框架。调查结果-在公众可访问的参考数据集上对所提出的方法进行评估的结果表明,所提出的方法除了能够检测交错活动之外,还能够以令人满意的精度检测和识别多类别活动。原创性/价值-本文介绍的概念将根据活动领域的知识,根据适时的有序传感器事件来改进对日常生活活动的自动检测和*识别。

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