模糊隶属函数形状对多传感器-多目标数据融合系统聚类性能的影响

A. Aziz
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引用次数: 18

摘要

模糊系统已经在许多重要的应用中被证明是非常成功的,并且正在迅速发展成为一种强大的多传感器-多目标数据融合技术。模糊多传感器-多目标数据融合的功能范式包括模糊化、模糊知识库、模糊推理机制和去模糊化。在模糊系统设计中,用户从一些基于经验的启发式选择的模糊规则和隶属函数开始,在很多情况下,用户是基于对问题的理解而主观选择的隶属函数,然后使用开发的系统来调整这些规则和隶属函数。隶属函数的构造是模糊系统设计中最重要的一步。本文研究了在多传感器-多目标环境下,从输入数据中构造最优隶属函数的问题。该方法已应用于二维多传感器-多目标数据融合系统中多传感器信息的聚类。比较了使用最优隶属函数和使用非最优隶属函数的聚类性能。结果表明,使用最优隶属度函数可以显著提高性能。
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Effects of fuzzy membership function shapes on clustering performance in multisensor-multitarget data fusion systems
Fuzzy systems have been proven very successfully in many important applications and are rapidly growing to become a powerful technique for multisenosr-multitarget data fusion. The functional paradigm for fuzzy multisenosr-multitarget data fusion consists of fuzzification, fuzzy knowledge-base, fuzzy inference mechanism, and defuzzification. In fuzzy system design, users start with some fuzzy rules, which are chosen heuristically based on their experience, and membership functions, which in many cases are chosen subjectively based on understanding the problem, and they use the developed system to tune these rules and membership functions. Constructing membership function is the most important step in the fuzzy system design. This paper addresses the problem of constructing the optimal membership functions from input data in a multisenosr-multitarget environment. This analysis has been applied to clustering of multisensor information in a two-dimensional multisenosr-multitarget data fusion system. Clustering performance using optimal membership functions is compared to that of clustering using non-optimal membership functions. The results show that there is a significant performance improvement when using optimal membership functions.
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