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Affinity Propagation Clustering of Measurements for Multiple Extended Target Tracking

机译:多个扩展目标跟踪的测量的亲和力传播聚类

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摘要

More measurements are generated by the target per observation interval, when the target is detected by a high resolution sensor, or there are more measurement sources on the target surface. Such a target is referred to as an extended target. The probability hypothesis density filter is considered an efficient method for tracking multiple extended targets. However, the crucial problem of how to accurately and effectively partition the measurements of multiple extended targets remains unsolved. In this paper, affinity propagation clustering is introduced into measurement partitioning for extended target tracking, and the elliptical gating technique is used to remove the clutter measurements, which makes the affinity propagation clustering capable of partitioning the measurement in a densely cluttered environment with high accuracy. The Gaussian mixture probability hypothesis density filter is implemented for multiple extended target tracking. Numerical results are presented to demonstrate the performance of the proposed algorithm, which provides improved performance, while obviously reducing the computational complexity.
机译:当目标被高分辨率传感器检测到,或者目标表面上有更多测量源时,每个观察间隔内目标都会产生更多测量。这样的目标被称为扩展目标。概率假设密度滤波器被认为是跟踪多个扩展目标的有效方法。但是,如何准确有效地划分多个扩展目标的测量的关键问题仍然没有解决。本文将亲和度传播聚类引入到用于扩展目标跟踪的测量分区中,并使用椭圆门控技术去除了杂乱的测量结果,这使得亲和度传播聚类能够在密集的杂乱环境中高精度地对测量进行划分。高斯混合概率假设密度滤波器用于多个扩展目标跟踪。数值结果表明了所提算法的性能,改进了算法性能,同时明显降低了计算复杂度。

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