多普勒雷达在杂波条件下的多目标跟踪

Anirban Roy, D. Mitra
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引用次数: 24

摘要

高斯混合概率假设密度(GM-PHD)滤波器的一个主要特征是它不需要任何测量-跟踪关联来完成其更新步骤。根据作者的说法,这应该比传统的基于数据关联的方法具有显著的优势,特别是在存在高误报率、频繁漏检和近距离目标的情况下。为了验证这一假设,考虑了多普勒雷达的多目标跟踪(MTT)问题,在上述不利跟踪条件下,将GM-PHD算法与六种基于数据关联的MTT滤波器的性能进行了比较。为了处理多普勒引起的非线性,在所有MTT算法的框架中都使用了cubature Kalman滤波(CKF)。利用非线性贝叶斯滤波的基本原理,导出了一种新的基于CKF的非线性GM-PHD模型的详细数学框架。命名为CK-GM-PHD。CK-GM-PHD采用近似高斯混合假设,遵循轨迹导向方法。本文采用Cubature积分法对高斯混合物中各分量的均值和协方差进行了数值计算。仿真结果支持了这一假设,表明CK-GM-PHD算法在中重度杂波率、较低检测概率和紧密间隔目标场景下的性能比传统基于数据关联的方法有了显著提高。
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Multi-target trackers using cubature Kalman filter for Doppler radar tracking in clutter
A major feature of the Gaussian mixture probability hypothesis density (GM-PHD) filter is that it does not require any measurement-to-track association to complete its update step. This, according to the authors, should constitute significant advantage over conventional data-association based methods, especially in presence of high false-alarm rate, frequent miss-detections and targets in close proximity. To test this hypothesis, a multi-target tracking (MTT) problem using Doppler radar is considered, where the performance of GM-PHD algorithm is compared against six data-association based MTT filters in aforementioned adverse tracking conditions. To handle the non-linearity due to Doppler, cubature Kalman filter (CKF) is used in the framework of all MTT algorithms. Detailed mathematical framework of a new non-linear variant of GM-PHD using CKF has been derived using fundamental principles of non-linear Bayesian filtering. It is named as CK-GM-PHD. CK-GM-PHD is formulated using approximated Gaussian mixture assumption and follows track-oriented approach. Cubature integration method is used to numerically compute mean and covariance of components in the Gaussian mixture. Simulation results support the hypothesis by revealing substantial performance improvement of CK-GM-PHD algorithm over conventional data-association based approaches while tested in moderate to heavy clutter rate with lower detection probability and closely spaced target scenarios.
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