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A Loosely Coupled and Distributed Bayesian Framework for Multi-context Recognition in Dynamic Ubiquitous Environments

机译:一种松散耦合和分布的贝叶斯框架,用于动态无处不在环境中的多语境识别

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Today's ubiquitous environments are characterized by smart applications with variable context requirements on the one hand and a dynamic availability of heterogeneous sensors on the other hand. Currently, many existing systems pursue a structured ad-hoc approach with rigid mappings between the applications and the context sources, adversely affecting the performance of these applications when the availability of the context sources drops. Furthermore, such ad-hoc and tightly coupled approaches suffer from reduced flexibility when simultaneously handling multiple smart applications in dynamic environments characterized by a high sensor churn rate. We present a loosely coupled Bayesian-based learning framework that addresses these challenges by allowing dynamic many to many relations between smart applications and context sources with support for recognizing diverse contexts more reliably in the presence of disappearing sensors. Our approach is able to lift these limitations by leveraging the availability of multiple co occurring contexts and their conditional dependencies. On the one hand, the framework exhibits flexibility to dynamically add and remove contexts through autonomic learning of individual contexts appropriate for the spatially distributed ubiquitous infrastructures. On the other hand, it incorporates the advantages of multi-view learning by boot-strapping and fusing multiple heterogeneous context information streams. Our experimental evaluation using a personal assistant application demonstrates the performance and robustness of the proposed framework with significant adaptability and resilience to missing data and partial observability.
机译:今天的普遍存在的环境是通过一方面具有可变上下文要求的智能应用的智能应用以及另一方面的异构传感器的动态可用性。目前,许多现有系统追求结构化的ad-hoc方法,在应用程序和上下文源之间使用刚性映射,在上下文源的可用性下降时对这些应用的性能产生不利影响。此外,在同时处理具有高传感器流失率的动态环境中的多个智能应用时,这种ad-hoc和紧密耦合的方法遭受降低的灵活性。我们介绍了一个松散耦合的基于贝叶斯的学习框架,通过允许动态许多在智能应用和上下文来源之间的许多关系中来解决这些挑战,并且在存在消失的传感器的情况下更可靠地识别不同的环境。我们的方法能够利用多功能情况的可用性及其条件依赖性来提升这些限制。一方面,该框架通过自主学习适用于空间分布的无处不在基础设施的个人背景,具有灵活性地动态添加和删除上下文。另一方面,它通过启动捆绑和融合多个异构语境信息流来结合多视图学习的优点。我们使用个人助理应用程序的实验评估展示了所提出的框架的性能和稳健性,具有显着的适应性和缺失数据和部分可观察性的恢复力。

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