模糊快照:缺失和不确定数据的时间推断

V. Rajamani, C. Julien
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引用次数: 9

摘要

许多普适计算应用程序通过获取、解释和响应嵌入在环境中的传感器的信息,持续监控环境中的状态变化。然而,要获得一个连续的、完整的、一致的、不断变化的操作环境的图像是极其困难和昂贵的。缓解这一问题的一种标准技术是采用数学模型,从抽样观察中计算缺失数据,从而近似于连续和完整的信息流。然而,现有模式传统上没有纳入时间有效性的概念,也没有量化与从过去或未来观测推断数据值相关的不精确性。在本文中,我们通过使用一系列快照查询来支持对动态普适计算现象的持续监控。我们定义了一个衰减函数和一组推理方法来填补这个连续查询中的缺失和不确定数据。我们评估了这种抽象在普适计算网络中复杂时空模式查询应用中的实用性。
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Blurring snapshots: Temporal inference of missing and uncertain data
Many pervasive computing applications continuously monitor state changes in the environment by acquiring, interpreting and responding to information from sensors embedded in the environment. However, it is extremely difficult and expensive to obtain a continuous, complete, and consistent picture of a continuously evolving operating environment. One standard technique to mitigate this problem is to employ mathematical models that compute missing data from sampled observations thereby approximating a continuous and complete stream of information. However, existing models have traditionally not incorporated a notion of temporal validity, or the quantification of imprecision associated with inferring data values from past or future observations. In this paper, we support continuous monitoring of dynamic pervasive computing phenomena through the use of a series of snapshot queries. We define a decay function and a set of inference approaches to filling in missing and uncertain data in this continuous query.We evaluate the usefulness of this abstraction in its application to complex spatio-temporal pattern queries in pervasive computing networks.
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