Extended Object Tracking With Automotive Radar Using B-Spline Chained Ellipses Model

G. Yao, P. Wang, K. Berntorp, Hassan Mansour, P. Boufounos
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引用次数: 5

Abstract

This paper introduces a B-spline chained ellipses model representation for extended object tracking (EOT) using high-resolution automotive radar measurements. With offline automotive radar training datasets, the proposed model parameters are learned using the expectation-maximization (EM) algorithm. Then the probabilistic multi-hypothesis tracking (PMHT) along with the unscented transform (UT) is proposed to deal with the nonlinear forward-warping coordinate transformation, the measurement-to-ellipsis association, and the state update step. Numerical validation is provided to verify the effectiveness of the proposed EOT framework with automotive radar measurements.
基于b样条链椭圆模型的汽车雷达扩展目标跟踪
介绍了一种基于高分辨率汽车雷达测量的扩展目标跟踪(EOT)的b样条链椭圆模型表示。对于离线汽车雷达训练数据集,使用期望最大化(EM)算法学习所提出的模型参数。然后提出了概率多假设跟踪(PMHT)和无气味变换(UT)来处理非线性前向弯曲坐标变换、测量-椭圆关联和状态更新步骤。通过汽车雷达测量,对所提出的EOT框架进行了数值验证。
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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