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Inference Degradation of Active Information Fusion within Bayesian Network Models

机译:贝叶斯网络模型中主动信息融合的推理退化

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摘要

Bayesian networks have been extensively used in active information fusion that selects the best sensor based on expected utility calculation However, inference degradation happens when the same sensors are selected repeatedly over time if the applied strategy is not well designed to consider the history of sensor engagement. This phenomenon decreases fusion accuracy and efficiency, in direct conflict to the objective of information integration with multiple sensors This paper provides mathematical scrutiny of the inference degradation problem in the popular myopia planning It examines the generic dynamic Bayesian network models and shows experimentation results for mental state recognition tasks It also discusses the candidate solutions with initial results The inference degradation problem is not limited to the discussed fusion tasks and may emerge in variants of sensor planning strategies with more global optimization approach This study provides common guidelines in information integration applications for information awareness and intelligent decision.
机译:贝叶斯网络已广泛用于主动信息融合中,该融合基于期望的效用计算来选择最佳传感器。但是,如果应用的策略设计得不好,无法考虑传感器参与的历史,则随着时间的推移反复选择相同的传感器,就会发生推理退化。这种现象降低了融合的准确性和效率,与使用多个传感器进行信息集成的目标直接冲突。本文对流行的近视计划中的推理退化问题进行了数学审查。它研究了通用动态贝叶斯网络模型并显示了心理状态的实验结果识别任务还讨论了具有初始结果的候选解决方案。推理退化问题不仅限于所讨论的融合任务,而且可能在具有更多全局优化方法的传感器规划策略的变体中出现。这项研究为信息集成和信息识别应用提供了通用指南。明智的决定。

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