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A new probabilistic and entropy fusion approach for management of information sources

机译:一种新的概率信息熵融合方法

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This paper describes a new probabilistic fusion methodology based on Shannon's entropy, whose goal is to reduce the combination space by explicitly representing the notions of source redundancy and source complementarity in form of entropy measures. This fusion methodology called Entropy Fusion Model (EFM) is defined and implemented in three steps: modeling step, combination step and decision step. The EFM approach shows how an information fusion problem can be formulated by using entropy criteria minimization as a basis for guiding the fusion system to the best fused information. The main advantage of such a fusion approach is to optimize the choice of measurements provided by information sources in order to improve the performance of the information fusion system. Experimental results from an application to mobile robotics are presented illustrating the performances and the robustness of the Entropy Adaptative Aggregation (EA2) resulting algorithm.
机译:本文介绍了一种基于香农熵的新概率融合方法,其目的是通过以熵测度的形式明确表示源冗余和源互补的概念来减少组合空间。这种称为熵融合模型(EFM)的融合方法是通过三个步骤定义和实现的:建模步骤,组合步骤和决策步骤。 EFM方法显示了如何通过使用熵准则最小化作为指导融合系统获得最佳融合信息的基础来解决信息融合问题。这种融合方法的主要优点是优化信息源提供的测量值的选择,以提高信息融合系统的性能。给出了从应用到移动机器人的实验结果,这些结果说明了熵自适应聚合(EA2)结果算法的性能和鲁棒性。

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