We present local Bayesian fusion approaches for the reduction of storage and computational costs of Bayesian fusion which is detached from fixed modelling assumptions. Using local approaches, Bayesian fusion is not performed in detail on the whole space that is spanned by the quantities of interest but only locally - at least in regions that are task relevant with a high probability. These regions are determined using common bounds for the probability of misleading evidence. Coarsening and restriction techniques are then used to create local Bayesian setups in a top-down or a more general bottom-up manner. Distributed local Bayesian fusion is realizable via an agent based fusion architecture
In complex multi-agent fusion systems resource conflicts are very likely to occur. We propose an alg...
This work concerns an automatic information fusion scheme for state estimation where the inputs (or ...
This paper introduces an information theoretic approach to verification of causal models in modular ...
Local Bayesian fusion approaches aim to reduce high storage and computational costs of Bayesian fusi...
In the field of reconnaissance and in many other real world applications, information from different...
Abstract: In the field of reconnaissance and in many other real world applications, information from...
Bayesian theory delivers a powerful theoretical platform for the mathematical description and execut...
Information fusion is essential for the retrieval of desired information in a sufficiently precise, ...
In fusing heterogeneous information sources, their different abstraction levels and formalizations h...
Bayesian statistics leads to a powerful fusion methodology, especially for the fusion of heterogeneo...
Focussed Bayesian fusion is a local Bayesian fusion technique by that high costs caused by Bayesian ...
Data fusion is a common issue of mobile robotics, computer assisted medical diagnosis or behavioral ...
There has recently been considerable interest in addressing the problem of unifying distributed stat...
International audienceMore and more fields of applied computer science involve fusion of multiple da...
We introduce a robust approach to diagnostic information fusion within a network of probabilistic mo...
In complex multi-agent fusion systems resource conflicts are very likely to occur. We propose an alg...
This work concerns an automatic information fusion scheme for state estimation where the inputs (or ...
This paper introduces an information theoretic approach to verification of causal models in modular ...
Local Bayesian fusion approaches aim to reduce high storage and computational costs of Bayesian fusi...
In the field of reconnaissance and in many other real world applications, information from different...
Abstract: In the field of reconnaissance and in many other real world applications, information from...
Bayesian theory delivers a powerful theoretical platform for the mathematical description and execut...
Information fusion is essential for the retrieval of desired information in a sufficiently precise, ...
In fusing heterogeneous information sources, their different abstraction levels and formalizations h...
Bayesian statistics leads to a powerful fusion methodology, especially for the fusion of heterogeneo...
Focussed Bayesian fusion is a local Bayesian fusion technique by that high costs caused by Bayesian ...
Data fusion is a common issue of mobile robotics, computer assisted medical diagnosis or behavioral ...
There has recently been considerable interest in addressing the problem of unifying distributed stat...
International audienceMore and more fields of applied computer science involve fusion of multiple da...
We introduce a robust approach to diagnostic information fusion within a network of probabilistic mo...
In complex multi-agent fusion systems resource conflicts are very likely to occur. We propose an alg...
This work concerns an automatic information fusion scheme for state estimation where the inputs (or ...
This paper introduces an information theoretic approach to verification of causal models in modular ...