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Probabilistic and fuzzy information fusion applied to radar system ranking

机译:概率和模糊信息融合在雷达系统排序中的应用

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摘要

The decision making systems make use of heterogeneous information to identify an object class or a target, which are affected by various kinds of imperfection. First, information issued from measures (radar measures, images) of an observation is represented by X variables. Generally, on these X variables, each class can be described through a probability distribution function. These decision systems also integrate expert prior knowledge to assist the decision. Such information is defined by Y variables and is represented by fuzzy membership functions. The question is how to combine appropriately these two kinds of variables in order to improve the efficiency of the decision process. In this paper, we present a decision model combining probabilistic and fuzzy variables. The decision is defined using a fuzzy Bayesian approach, which takes into account these two imperfections. Only two classes are considered using one X variable and one Y variable. Then an extension is proposed to suit more complicated cases. To validate the interest of this approach, we compare it with the standard Bayesian classification and fuzzy classification, applied separately to synthetic data. In addition, we will see how our approach can be applied to the problem of radar system ranking, on which system resources are limited and as a consequence, decisions about priorities must be taken. Using the system information sources (i.e. probabilistic: radar measurements, fuzzy: prior expert knowledge, evidential), a comparison between Bayesian classification, fuzzy classification, system decision and the proposed approach is presented.
机译:决策系统利用异构信息来识别受各种缺陷影响的对象类别或目标。首先,从观测值的度量(雷达度量,图像)发出的信息由X变量表示。通常,在这X个变量上,可以通过概率分布函数描述每个类别。这些决策系统还集成了专家的先验知识以协助决策。此类信息由Y变量定义,并由模糊隶属函数表示。问题是如何适当地组合这两种变量以提高决策过程的效率。在本文中,我们提出了一种将概率变量和模糊变量结合起来的决策模型。该决策使用模糊贝叶斯方法定义,该方法考虑了这两个缺陷。使用一个X变量和一个Y变量仅考虑两个类。然后提出扩展以适合更复杂的情况。为了验证这种方法的趣味性,我们将其与分别应用于综合数据的标准贝叶斯分类和模糊分类进行了比较。另外,我们将看到我们的方法如何应用于雷达系统排名问题,因为雷达资源排名有限,因此必须做出有关优先级的决定。使用系统信息源(即概率:雷达测量,模糊:先验专家知识,证据),对贝叶斯分类,模糊分类,系统决策与所提出的方法进行了比较。

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