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Radar emitters classification and clustering with a scale mixture of normal distributions

机译:雷达辐射源的分类和聚类与正态分布的比例混合

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In this paper, a scale mixture of Normal distributions model is developed for classification and clustering of radar emitters. A radar signal is characterised by a pulse-to-pulse modulation pattern and is often partially observed. The proposed model can classify and cluster different radar emitters even in presence of outliers and missing values. The classification method, based on a mixture model, focuses on the introduction of latent variables that gives us the possibility to handle sensitivity of model to outliers and to allow a less restrictive modelling of missing data. A Bayesian treatment is adopted for model learning, supervised classification and clustering. Inference is processed through a Variational Bayesian Approximation. Some numerical experiments on real data show that the proposed method provides more accurate results than state of the art classification algorithms.
机译:本文针对雷达辐射源的分类和聚类,建立了正态分布模型的比例混合模型。雷达信号的特征在于脉冲到脉冲的调制模式,通常会被部分观察到。所提出的模型甚至可以在存在异常值和缺失值的情况下对不同的雷达辐射器进行分类和聚类。基于混合模型的分类方法着重于引入潜在变量,这使我们有可能处理模型对异常值的敏感性,并允许对丢失的数据进行较少限制的建模。贝叶斯处理用于模型学习,监督分类和聚类。通过变分贝叶斯近似来处理推论。对真实数据的一些数值实验表明,与最新的分类算法相比,所提出的方法提供了更准确的结果。

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