An ontological approach to focusing attention and enhancing machine perception on the Web

C. Henson, K. Thirunarayan, A. Sheth
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引用次数: 28

Abstract

Today, many sensor networks and their applications employ a brute force approach to collecting and analyzing sensor data. Such an approach often wastes valuable energy and computational resources by unnecessarily tasking sensors and generating observations of minimal use. People, on the other hand, have evolved sophisticated mechanisms to efficiently perceive their environment. One such mechanism includes the use of background knowledge to determine what aspects of the environment to focus our attention. In this paper, we develop an ontology of perception, IntellegO, that may be used to more efficiently convert observations into perceptions. IntellegO is derived from cognitive theory, encoded in set-theory, and provides a formal semantics of machine perception. We then present an implementation that iteratively and efficiently processes low level, heterogeneous sensor data into knowledge through use of the perception ontology and domain specific background knowledge. Finally, we evaluate IntellegO by collecting and analyzing observations of weather conditions on the Web, and show significant resource savings in the generation and storage of perceptual knowledge.
在Web上集中注意力和增强机器感知的本体论方法
今天,许多传感器网络及其应用采用蛮力方法来收集和分析传感器数据。这种方法常常浪费宝贵的能量和计算资源,因为它不必要地给传感器分配任务,产生的观测结果用处不大。另一方面,人类已经进化出复杂的机制来有效地感知他们的环境。其中一种机制包括利用背景知识来确定我们应该关注环境的哪些方面。在本文中,我们开发了一个感知本体,IntellegO,它可以更有效地将观察转化为感知。IntellegO来源于认知理论,用集合理论进行编码,并提供了机器感知的形式化语义。然后,我们提出了一种实现,通过使用感知本体和领域特定背景知识,迭代和有效地将低级异构传感器数据处理为知识。最后,我们通过收集和分析Web上的天气条件观测来评估IntellegO,并显示在感知知识的生成和存储方面节省了大量资源。
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