基于星形凸矩阵的GMCPHD不规则群目标生成滤波器

Yue Liu, Wenxin Li, Haiyi Mao, Cong Peng, Wei Yi
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引用次数: 0

摘要

目标生成和扩展形状估计是群目标跟踪中的重要问题。本文提出了一种基于星凸随机超曲面模型(RHM)的高斯混合基数化概率假设密度(GMCPHD)滤波器,用于不规则形状的可再生群体目标。为了解决群形不规则的问题,我们使用星凸RHM来描述测量源的分布。此外,我们还利用距离分割的方法实现了测量集的分割和分组划分的判断。在此基础上,在GMCPHD框架下实现了运动状态和扩展形状的实时跟踪。通过与基于椭圆rhm的GMCPHD滤波器的比较,验证了该算法的性能,结果表明,该算法能有效提高群体形状和运动状态的估计精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The GMCPHD Filter for Irregular Group Target Spawning Based on Star-Convex RHMs
Target spawning and extended shape estimation are important problems in group target tracking. In this paper, we propose a Gaussian mixture cardinalized probability hypothesis density (GMCPHD) filter for group targets with spawning and irregular shape based on star-convex Random Hypersurface Model (RHM). In order to solve the problem of irregular group shape, we use star-convex RHM to describe the distribution of measurement sources. Besides, we use the distance division method to realize the division of measurement sets and the judgment of group splitting. On this basis, the real-time tracking of the motion state and extended shape is realized under the framework of GMCPHD. The performance of this algorithm is showcased by comparison with the elliptical RHM-based GMCPHD filter, and the results show that the proposed algorithm can improve the estimation accuracy of group shape and motion state effectively.
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