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Goal oriented recognition of composed activities for reliable and adaptable intelligence systems

机译:面向目标的对组成活动的认可,以实现可靠且适应性强的情报系统

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摘要

The emerging availability of already deployed sensors that can be utilized for activity and context recognition raised a new paradigm. This paradigm called opportunistic sensing utilizes the available sensing infrastructure for activity and context recognition. This work focuses on utilizing this dynamically varying sensing infrastructure to recognize high-level composed activities in an adaptable way. The proposed methods use activity relations modeled in an ontology. This domain knowledge is used to dynamically configure hidden Markov models (HMM) and evidential networks. These models are popular in activity and context recognition systems due to their high recognition accuracy. A goal oriented approach is proposed to dynamically create and instantiate these models. The goal encapsulates the recognition purpose of the activity and context recognition system and is expressed in an abstracted and semantic manner. This flexible approach utilizes the opportunistic sensing principles. It directs the dynamic configuration of the activity and context recognition system during runtime. The configured recognition models are based on the recognition purpose of the system, and the configured sensing ensemble depends on the available sensing infrastructure. This enables the dynamic configuration and adaption of the activity and context recognition system during runtime to detect composed and time sequenced activities using HMMs or evidential networks in an opportunistic way.
机译:可以用于活动和上下文识别的已部署传感器的新兴可用性提出了新的范例。这种称为机会感测的范式将可用的感测基础结构用于活动和上下文识别。这项工作的重点是利用这种动态变化的传感基础结构,以自适应方式识别高层组合活动。所提出的方法使用在本体中建模的活动关系。该领域知识用于动态配置隐马尔可夫模型(HMM)和证据网络。这些模型具有很高的识别精度,因此在活动和上下文识别系统中很受欢迎。提出了一种面向目标的方法来动态创建和实例化这些模型。目标封装了活动和上下文识别系统的识别目的,并以抽象和语义的方式表示。这种灵活的方法利用了机会感测原理。它在运行时指导活动和上下文识别系统的动态配置。配置的识别模型基于系统的识别目的,并且配置的感测集合取决于可用的感测基础结构。这使得活动和上下文识别系统能够在运行时进行动态配置和调整,从而以机会性方式使用HMM或证据网络来检测组成的活动和按时间顺序排列的活动。

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