Measurement partition algorithm based on density analysis and spectral clustering for multiple extended target tracking

Jinlong Yang, Fengmei Liu, H. Ge, Yunhao Yuan
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引用次数: 2

Abstract

For the multiple extended target tracking (METT), one crucial problem is how to partition the measurement sets accurately and rapidly. Due to the disturbance of clutter, the conventional methods, such as distance partition method, K-means++ method, etc., cannot give a perfect partition. In this paper, a novel partition method is proposed based on density analysis and spectral clustering technique. Firstly, construct the density distribution function of the measurements by using the Gaussian kernel, and then eliminate the clutter from the measurements. Secondly, the spectral clustering technique based on neighbor propagation is introduced to partition the measurements. Finally, the Gaussian mixture probability hypothesis density method is used to achieve the METT. Simulation results show that the proposed algorithm has a better performance, especially a better real-time performance, than the conventional methods.
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基于密度分析和谱聚类的多扩展目标跟踪测量分割算法
对于多扩展目标跟踪(METT),如何准确、快速地划分测量集是一个关键问题。由于杂波的干扰,传统的距离划分方法、k -means++方法等无法给出完美的划分。本文提出了一种基于密度分析和谱聚类技术的分区方法。首先利用高斯核构造测量数据的密度分布函数,然后消除测量数据中的杂波;其次,引入基于邻居传播的光谱聚类技术对测量数据进行分割;最后,采用高斯混合概率假设密度法实现METT。仿真结果表明,该算法具有较好的性能,特别是实时性较好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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