Symmetric Star-convex Shape Tracking With Wishart Filter

Hosam Alqaderi, F. Govaers, W. Koch
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Abstract

In stochastic estimation problems, we aim to estimate an unknown state of interest given a set of measurements received from noisy sensory devices, such as radar, Light Detection and Ranging (LiDAR), etc. A common model of the measurements’ random error is white Gaussian noise. This noise model is usually used to derive an estimator of the unknown state; accordingly, the state is described as a random variable with a Gaussian density. In some applications, the unknown state is known to take only positive values, e.g. estimating size or dimension. In such a case the classical approaches based on Gaussian densities might fail, i.e., produce a negative value. In this work, a recursive Bayesian filter is proposed based on modelling the unknown state as Wishart distributed random matrix. This model ensures that the probability densities of the random variables are restricted to positive real values, even though the measurement’s noise is still modeled as white Gaussian noise. The feasibility of the proposed Bayesian Wishart filter is demonstrated within the framework of Extended Target Tracking (ETT). A target contour measurement model of a symmetric star-convex shape is presented and integrated in the proposed filter to track the target’s extent.
采用Wishart滤波器的对称星凸形状跟踪
在随机估计问题中,我们的目标是给定一组从噪声传感设备(如雷达、光探测和测距(LiDAR)等)接收的测量值来估计未知状态。测量随机误差的一个常见模型是高斯白噪声。该噪声模型通常用于导出未知状态的估计量;因此,状态被描述为具有高斯密度的随机变量。在某些应用中,已知未知状态仅取正值,例如估计尺寸或尺寸。在这种情况下,基于高斯密度的经典方法可能会失败,即产生负值。本文提出了一种将未知状态建模为Wishart分布随机矩阵的递归贝叶斯滤波器。该模型确保随机变量的概率密度被限制为正实值,即使测量噪声仍然被建模为高斯白噪声。在扩展目标跟踪(ETT)框架下,验证了所提贝叶斯Wishart滤波器的可行性。提出了一种对称星凸形状的目标轮廓测量模型,并将其集成到该滤波器中进行目标范围跟踪。
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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