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Machine Learning Based Activity Learning for Behavioral Contexts in Internet of Things (IoT)

机译:基于机器学习的行为背景信息中互联网(物联网)

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摘要

Ontology based activity learning models play a vital role in diverse fields of Internet of Things (IoT) such as smart homes, smart hospitals or smart communities etc. The prevalent challenges with ontological models are their static nature and inability of self-evolution. The models cannot be completed at once and smart home inhabitants cannot be restricted to limit their activities. Also, inhabitants are not predictable in nature and may perform "Activities of Daily Life (ADL)" not listed in ontological model. This gives rise to the need of developing an integrated framework based on unified conceptual backbone (i.e. activity ontologies), addressing the lifecycle of activity recognition and producing behavioral models according to inhabitant's routine. In this paper, an ontology evolution process has been proposed that learns particular activities from existing set of activities in daily life (ADL). It learns new activities that have not been identified by the recognition model, adds new properties with existing activities and learns inhabitant's newest behavior of performing activities through Artificial Neural Network (ANN). The better degree of true positivity is evidence of activity recognition with detection of noisy sensor data. Effectiveness of proposed approach is evident from improved rate of activity learning, activity detection and ontology evolution.
机译:基于本体的活动学习模型在不同互联网(物联网)的不同领域(如智能家居,智能医院或智能社区等)起着重要作用。本体论模型的普遍挑战是他们的静态性和自我进化无法实现。模型不能立即完成,智能家庭居民不能仅限于限制他们的活动。此外,居民本质上不可预测,并且可以在本体论模型中列出的“日常生活(ADL)活动”。这引起了基于统一的概念骨干(即活动本体)开发综合框架的需要,解决活动识别的生命周期,并根据居民的常规产生行为模型。在本文中,提出了一个本文的进化过程,从而了解日常生活中现有活动集合的特殊活动(ADL)。它学习尚未通过识别模型确定的新活动,增加了现有活动的新属性,并学习通过人工神经网络(ANN)进行居民的表演活动的最新行为。较好程度的真正积极性是具有噪声传感器数据的活动识别的证据。从活动学习,活动检测和本体演化的提高速度明显,提出方法的有效性是显而易见的。

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  • 来源
    《Programming and Computer Software》 |2020年第8期|626-635|共10页
  • 作者单位

    Lahore Govt Coll Univ GC Univ Lahore 54000 Punjab Pakistan;

    London South Bank Univ Sch Engn London SE1 0AA England;

    Allama Iqbal Open Univ H-8-2 H 8-2 H-8 Islamabad 44000 Islamabad Capit Pakistan;

    London South Bank Univ Sch Engn London SE1 0AA England;

    Unviers West England UWE Bristol Frenchay Campus Bristol BS16 1QY Avon England;

    Ozyegin Univ Nisantepe Orman Sk 13 TR-34794 Cekmekoy Istanbul Turkey;

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