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A stream-based hierarchical anchoring framework

机译:基于流的分层锚定框架

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Autonomous systems situated in the real world often need to recognize, track, and reason about various types of physical objects. In order to allow reasoning at a symbolic level, one must create and continuously maintain a correlation between symbols labeling physical objects and the sensor data being collected about them, a process called anchoring. In this paper we present a stream-based hierarchical anchoring framework extending the DyKnow knowledge processing middleware. A classification hierarchy is associated with expressive conditions for hypothesizing the type and identity of an object given streams of temporally tagged sensor data. The anchoring process constructs and maintains a set of object linkage structures representing the best possible hypotheses at any time. Each hypothesis can be incrementally generalized or narrowed down as new sensor data arrives. Symbols can be associated with an object at any level of classification, permitting symbolic reasoning on different levels of abstraction. The approach has been applied to a traffic monitoring application where an unmanned aerial vehicle collects information about a small urban area in order to detect traffic violations.
机译:现实世界中的自治系统通常需要识别,跟踪和推理各种类型的物理对象。为了允许在符号级别进行推理,必须在标记物理对象的符号与正在收集的有关它们的传感器数据之间创建并持续保持相关性,这一过程称为锚定。在本文中,我们提出了一种基于流的分层锚定框架,该框架扩展了DyKnow知识处理中间件。分类层次结构与表达条件相关联,用于在给定时间标记的传感器数据流的情况下假设对象的类型和身份。锚定过程可构建并维护一组对象链接结构,这些对象链接结构随时表示最佳假设。随着新传感器数据的到来,每个假设都可以逐步概括或缩小。符号可以在任何分类级别与对象关联,从而可以在不同的抽象级别进行符号推理。该方法已应用于交通监控应用,其中无人驾驶飞机收集有关小市区的信息以检测交通违规。

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