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A new methodology for determining fuzzy densities in the fusion model based on fuzzy integral

机译:基于模糊积分的融合模型中确定模糊密度的新方法

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In the model of fusion of multiple classifiers based on fuzzy integral, the fused results are heavily dependent on the fuzzy measures which are defined on singletons and named fuzzy densities. Therefore, estimation of the densities or the measures is very important for the entire fusion process. Most of the existing methods regard the accuracy as an essential factor in constructing fuzzy densities. In this paper, the uncertainty of classifiers appeared during the classifying process is considered, and a new definition of fuzzy density which incorporated accuracy and uncertainty of the classifier is presented. A new method for determining fuzzy densities is proposed by considering both randomness and the cognitive uncertainty that is inherent in the source. This new method can reasonably measure the importance of each classifier and makes the performance of the fusion model improve significantly.
机译:在基于模糊积分的多分类器的融合模型中,融合结果严重依赖于单身和名为模糊密度的模糊措施。因此,对密度或措施的估计对于整个融合过程非常重要。大多数现有方法将准确性视为构建模糊密度的基本因素。在本文中,考虑了在分类过程中出现的分类器的不确定性,并呈现了掺入分类器的准确性和不确定度的模糊密度的新定义。通过考虑源中固有的随机性和认知不确定性,提出了一种确定模糊密度的新方法。这种新方法可以合理地测量每个分类器的重要性,并使融合模型的性能显着提高。

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