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Bridging the sense-reasoning gap: DyKnow - Stream-based middleware for knowledge processing

机译:弥合感官差距:DyKnow-用于知识处理的基于流的中间件

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摘要

Engineering autonomous agents that display rational and goal-directed behavior in dynamic physical environments requires a steady flow of information from sensors to high-level reasoning components. However, while sensors tend to generate noisy and incomplete quantitative data, reasoning often requires crisp symbolic knowledge. The gap between sensing and reasoning is quite wide, and cannot in general be bridged in a single step. Instead, this task requires a more general approach to integrating and organizing multiple forms of information and knowledge processing on different levels of abstraction in a structured and principled manner.rnWe propose knowledge processing middleware as a systematic approach to organizing such processing. Desirable properties are presented and motivated. We argue that a declarative stream-based system is appropriate for the required functionality and present DyKnow, a concrete implemented instantiation of stream-based knowledge processing middleware with a formal semantics. Several types of knowledge processes are defined and motivated in the context of a UAV traffic monitoring application.rnIn the implemented application, DyKnow is used to incrementally bridge the sense-reasoning gap and generate partial logical models of the environment over which metric temporal logical formulas are evaluated. Using such formulas, hypotheses are formed and validated about the type of vehicles being observed. DyKnow is also used to generate event streams representing for example changes in qualitative spatial relations, which are used to detect traffic violations expressed as declarative chronicles.
机译:在动态物理环境中显示理性和目标导向行为的工程自主代理程序,需要从传感器到高层推理组件的稳定信息流。但是,尽管传感器往往会生成嘈杂且不完整的定量数据,但推理通常需要清晰的符号知识。感知和推理之间的鸿沟非常大,通常无法一步步弥合。相反,此任务需要一种更通用的方法,以结构化和原则化的方式在不同的抽象级别上集成和组织多种形式的信息和知识处理。我们提出知识处理中间件作为组织这种处理的系统方法。提出并激励了理想的属性。我们认为基于声明式的基于流的系统适合于所需的功能,并且提出了DyKnow,这是具有形式语义的基于流的知识处理中间件的具体实现实例。在无人机交通监控应用程序的上下文中定义并激发了几种类型的知识过程。在已实现的应用程序中,DyKnow用于逐步弥合感官差距并生成环境的部分逻辑模型,在该模型上度量时间逻辑公式是评估。使用这样的公式,可以形成假设并验证所观察到的车辆类型。 DyKnow还用于生成事件流,这些事件流表示例如定性空间关系的变化,这些事件流用于检测表示为声明性编年史的流量违规。

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  • 来源
    《Advanced engineering informatics》 |2010年第1期|14-26|共13页
  • 作者单位

    Department of Computer and Information Science, Linkoeping University, SE-581 83 Linkoeping, Sweden;

    Department of Computer and Information Science, Linkoeping University, SE-581 83 Linkoeping, Sweden;

    Department of Computer and Information Science, Linkoeping University, SE-581 83 Linkoeping, Sweden;

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