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Modeling of Nonlinear Aggregation for Information Fusion Systems with Outliers Based on the Choquet Integral

机译:基于Choquet积分的具有离群值的信息融合系统非线性聚合建模。

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摘要

Modern information fusion systems essentially associate decision-making processes with multi-sensor systems. Precise decision-making processes depend upon aggregating useful information extracted from large numbers of messages or large datasets; meanwhile, the distributed multi-sensor systems which employ several geographically separated local sensors are required to provide sufficient messages or data with similar and/or dissimilar characteristics. These kinds of information fusion techniques have been widely investigated and used for implementing several information retrieval systems. However, the results obtained from the information fusion systems vary in different situations and performing intelligent aggregation and fusion of information from a distributed multi-source, multi-sensor network is essentially an optimization problem. A flexible and versatile framework which is able to solve complex global optimization problems is a valuable alternative to traditional information fusion. Furthermore, because of the highly dynamic and volatile nature of the information flow, a swift soft computing technique is imperative to satisfy the demands and challenges. In this paper, a nonlinear aggregation based on the Choquet integral (NACI) model is considered for information fusion systems that include outliers under inherent interaction among feature attributes. The estimation of interaction coefficients for the proposed model is also performed via a modified algorithm based on particle swarm optimization with quantum-behavior (QPSO) and the high breakdown value estimator, least trimmed squares (LTS). From simulation results, the proposed MQPSO algorithm with LTS (named LTS-MQPSO) readily corrects the deviations caused by outliers and swiftly achieves convergence in estimating the parameters of the proposed NACI model for the information fusion systems with outliers.
机译:现代信息融合系统实质上将决策过程与多传感器系统相关联。精确的决策过程取决于汇总从大量消息或大型数据集中提取的有用信息;同时,需要采用几个地理上分开的本地传感器的分布式多传感器系统,以提供具有相似和/或相似特性的足够消息或数据。这类信息融合技术已被广泛研究并用于实现多种信息检索系统。但是,从信息融合系统获得的结果在不同情况下会有所不同,并且从分布式多源多传感器网络执行信息的智能聚合和融合本质上是一个优化问题。灵活而通用的框架能够解决复杂的全局优化问题,是传统信息融合的宝贵替代方案。此外,由于信息流的高度动态和易变的特性,必须采用快速的软计算技术来满足需求和挑战。在本文中,考虑了基于Choquet积分(NACI)模型的非线性聚合,用于信息融合系统,其中包括特征属性之间固有相互作用下的异常值。通过基于量子行为的粒子群优化(QPSO)和高击穿值估计器(最小修整平方)(LTS)的改进算法,还可以通过改进的算法对提出的模型进行交互系数的估计。从仿真结果看,提出的带有LTS的MQPSO算法(称为LTS-MQPSO)可以很容易地校正由异常值引起的偏差,并在估计带有异常值的信息融合系统的NACI模型的参数时迅速达到收敛。

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