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Multi-source homogeneous data clustering for multi-target detection from cluttered background with misdetection

机译:多源均质数据聚类,用于误入歧的多目标检测

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This paper investigates a particular data mining problem which is to identify an unknown number of targets based on homogeneous observations that are collected via multiple independent sources. This particular clustering problem corresponds to a significant problem of multi-target detection in the multi-sensor/scan context. No prior information is given about either the level of clutter (namely noisy data) or the number of targets/clusters, both of which have to be learned online from the data. In addition, the data-points from the same source cannot be grouped into the same cluster (namely the cannot link, CL, constraint) and the sizes of the generated clusters need to be bounded by the number of data sources. In the proposed approach, a density-based clustering mechanism is proposed firstly to identify dense regions as clusters and to remove clutter at the coarser level; the CL constraint is then applied for finer data mining and to distinguish overlapping clusters. Illustrative datasets are employed to demonstrate the validity of the present clustering approach for multi-target detection and estimation in cluttered environments which are affected by both misdetection and clutter. (C) 2017 Elsevier B.V. All rights reserved.
机译:本文研究了特定的数据挖掘问题,该问题是基于通过多个独立来源收集的均匀观察来识别未知数量的目标。该特定聚类问题对应于多传感器/扫描上下文中的多目标检测的重要问题。没有提前的信息被赋予杂波级别(即嘈杂数据)或目标/群集的数量,这两者都必须从数据中在线学习。另外,来自相同源的数据点不能被分组成相同的群集(即,无法链接,CL,约束),并且所生成的集群的大小需要由数据源的数量限制。在所提出的方法中,首先提出了一种基于密度的聚类机制,以识别致密区域作为簇,并在较粗糙水平处移除杂波;然后将CL约束应用于更精细的数据挖掘并区分重叠群集。采用说明性数据集来证明对受误报和杂波影响的杂乱环境中的多目标检测和估计的本聚类方法的有效性。 (c)2017 Elsevier B.v.保留所有权利。

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