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Particle based probability density fusion with differential Shannon entropy criterion

机译:基于粒子概率密度融合,差动Shannon熵标准

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This paper focuses on a decentralised nonlinear estimation problem in a multiple sensor network. The stress is laid on the optimal fusion of probability densities conditioned by different data. The probability density conditioned by the common data is supposed to be unavailable. The optimal fusion is elaborated in the particle filtering and differential Shannon entropy framework. The conversion of weighted particles into a continuous probability density function is performed implicitly by the time update. Further, the issue of sampling density proposal is explored. The proposed approach is illustrated in numerical examples.
机译:本文重点介绍了多个传感器网络中的分散的非线性估计问题。应力铺设了不同数据调节的概率密度的最佳融合。通用数据的概率密度应该是不可用的。在颗粒滤波和差示Shannon熵框架中阐述了最佳融合。通过时间更新将加权粒子转换为连续概率密度函数。此外,探讨了采样密度提案的问题。在数值例子中示出了所提出的方法。

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