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Adaptive Evidence Accrual for Context-Sensitive Situation Understanding

机译:背景敏感情况理解的自适应证据应计

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Context is used in data fusion to provide expectations and to constrain processing. It also is used to infer or refine inferences of desired information ("problem variables") on the basis of other available information ("context variables"). Context is used in refining data alignment and association as well as in target and situation state estimation. Relevant contexts are often not self-evident, but must be discovered or selected as a means to problem-solving. Therefore, context exploitation involves an integration of data fusion with planning and control functions. Discovering and selecting useful context variables is an abductive data fusion/ management problem that can be characterized in a utility/ uncertainty framework. An adaptive evidence-accrual inference method –originally developed for Scene Understanding – is presented, whereby context variables are selected on the basis of (a) their utility in refining explicit problem variables (expressed as mutual information), (b) the probability of evaluating these variables to within a given accuracy, given candidate system actions (data collection, mining or processing), and (c) the cost of such actions.
机译:上下文用于数据融合以提供期望和约束处理。它还用于在其他可用信息(“上下文变量”)的基础上推断或优化所需信息的推论(“问题变量”)。上下文用于精炼数据对齐和关联以及目标和情况状态估计。相关的上下文通常不是不言而喻的,但必须被发现或选择作为解决问题的手段。因此,上下文剥削涉及与规划和控制功能的数据融合集成。发现和选择有用的上下文变量是一个绑架数据融合/管理问题,可以在实用程序/不确定性框架中表征。呈现了一种自适应证据应计算法 - 介绍了用于场景的理解 - 是基于(a)在精炼显式问题变量(表示为互信息)的实用程序的基础上选择上下文变量,(b)评估的概率这些变量在给定的准确性范围内,给定候选系统操作(数据收集,挖掘或处理),以及(c)这些动作的成本。

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