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Generalized Exponential Bidirectional Fuzzy Associative Memory with Fuzzy Cardinality-Based Similarity Measures Applied to Face Recognition

机译:基于模糊基数相似性度量的广义指数双向模糊联想记忆在人脸识别中的应用

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Associative memories are biologically inspired models designed for the storage and recall by association. Such models aim to store a finite set of associations, called the fundamental memory set. The generalized exponential bidirectional fuzzy associative memory (GEB-FAM) is a heteroassociative memory model designed for the storage and recall of fuzzy sets. A similarity measure, that is, a function that indicates how much two fuzzy sets are equal, is at the core of a GEB-FAM model. In this paper, we present a detailed study on the use of cardinality-based similarity measures in the definition of a GEB-FAM. Moreover, we evaluate the performance of the GEB-FAMs defined using such measures in a face recognition problem.
机译:联想记忆是受生物学启发的模型,旨在通过联想进行存储和调用。这样的模型旨在存储有限的关联集,称为基本存储集。广义指数双向模糊联想记忆(GEB-FAM)是一种用于存储和调用模糊集的异构联想记忆模型。相似性度量(即指示两个模糊集相等的函数)是GEB-FAM模型的核心。在本文中,我们将对基于基数的相似性度量在GEB-FAM定义中的使用进行详细研究。此外,我们评估在面部识别问题中使用此类措施定义的GEB-FAM的性能。

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