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A classification and modeling of the quality of contextual information in smart spaces

机译:智能空间中上下文信息质量的分类和建模

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摘要

Reliable contextual information should be generated to provide pervasive services to the occupant in smart spaces. This is difficult for several reasons. First, the number of ways to describe an event or an object is unlimited and there is no standard regarding granularity of context information in context classification schemes. Second, the quality of a given piece of contextual information is not guaranteed by uncertainty. In this paper, we propose a pragmatic context classification and a generalized context modeling scheme based on sensor fusion techniques. To make a pragmatic context classification, we introduce two approaches, ldquooccupant-centered pragmatic approachrdquo and ldquorelation-dependencyrdquo approach. To improve the quality of given contextual information by reducing uncertainty, we introduce ldquostate-space based sensor fusion modelingrdquo as a generalized context modeling. Finally, we show an example within the applied scenario as an evidential network.
机译:应生成可靠的上下文信息,以向智能空间中的乘员提供普遍的服务。由于几个原因,这很困难。首先,描述事件或对象的方式数量不受限制,并且在上下文分类方案中没有关于上下文信息的粒度的标准。其次,不确定性不能保证给定上下文信息的质量。在本文中,我们提出了一种基于传感器融合技术的实用语境分类和广义语境建模方案。为了进行语用上下文分类,我们引入了两种方法,以“以居住者为中心”的语用方法和“以关系-依赖关系”方法。为了通过减少不确定性来提高给定上下文信息的质量,我们引入了基于状态空间的传感器融合建模方法作为广义上下文建模。最后,我们在应用场景中以证据网络为例。

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