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Recursive Bayesian classification of surveillance radar tracks based on kinematic with temporal dynamics and static features

机译:基于时间动态和静态特征的运动学雷达雷达轨迹的递归贝叶斯分类

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In this paper, it is shown that kinematic and static features are very useful in on-line classification of surveillance radar tracks based on real radar data. A simple classifier called recursive Gaussian mixture model (RGMM) is constructed using a recursive naive Bayesian approach combined with a multivariate GMM. The kinematic features used in the RGMM classifier are speed and normal acceleration, the geographic features are road, sea, land and the sensor features are intensities. It is then shown that if the feature vector is augmented with information about the temporal dynamics of the kinematic parameters, a substantial improvement in target classification is achieved. The classifiers are tested with several target classes relevant for coastal surveillance and different data sources such as radar and GPS. The proposed algorithms are classifying with 86% accuracy with 10 target classes versus 78% for the RGMM classifier.
机译:本文表明,运动学和静态特征在基于真实雷达数据的监视雷达航迹的在线分类中非常有用。一个简单的分类器称为递归高斯混合模型(RGMM),是使用递归朴素贝叶斯方法与多变量GMM组合而成的。 RGMM分类器中使用的运动学特征是速度和法向加速度,地理特征是道路,海洋,陆地,而传感器特征是强度。然后示出,如果特征向量被关于运动学参数的时间动态的信息所增强,则实现了目标分类的显着改善。对分类器进行了与沿海监视和不同数据源(如雷达和GPS)相关的几种目标类别的测试。所提出的算法对10个目标类别的分类准确度为86%,而RGMM分类器的分类准确度为78%。

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