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Contact clustering and classification using likelihood-based similarities

机译:使用基于可能性的相似性进行联系人聚类和分类

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This paper presents the results of using a likelihood-based clustering step before tracking on a multistatic sonar step. The likelihood-based clustering appropriately models the measurement noise and allows for the incorporation of features. The clustering step also allows for the rejection of clutter and fusion of the contact measurements within a cluster. After clustering, fusion and classification, the tracking results are improved over previous preprocessing methods. Results are shown for the three scenarios in the PACSim dataset.
机译:本文介绍了在跟踪多静态声纳步骤之前使用基于似然度的聚类步骤的结果。基于似然的聚类适当地对测量噪声进行建模,并允许合并特征。群集步骤还允许排除群集中的混乱和接触测量值的融合。经过聚类,融合和分类后,跟踪结果比以前的预处理方法有所改善。在PACSim数据集中显示了这三种情况的结果。

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