In this study, we propose a novel extended target tracking algorithm which is capable of representing the extent of dynamic objects as an ellipsoid with a time-varying orientation angle. A diagonal positive semi-definite matrix is defined to model objects' extent within the random matrix framework where the diagonal elements have inverse-Gamma priors. The resulting measurement equation is non-linear in the state variables, and it is not possible to find a closed-form analytical expression for the true posterior because of the absence of conjugacy. We use the variational Bayes technique to perform approximate inference, where the Kullback-Leibler divergence between the true and the approximate posterior is minimized by performing fixed-point iterations. The update equations are easy to implement, and the algorithm can be used in real-time tracking applications. We illustrate the performance of the method in simulations and experiments with real data. The proposed method outperforms the state-of-the-art methods when compared with respect to accuracy and robustness.
翻译:在本研究中,我们提出了一个新的扩展目标跟踪算法,它能够代表动态物体的范围,作为具有时间变化方向角的闪光体。在对角元素具有反伽玛前奏的随机矩阵框架内,对正半确定矩阵定义为物体的模型范围。由此得出的测量方程式在状态变量中是非线性方程式,而且由于缺乏共性,无法为真实的后背体找到封闭式分析表达法。我们使用变形贝斯技术来进行近似推理,通过进行固定点的迭代尽量减少真实和近似后背体之间的差异。更新方程式易于执行,算法可用于实时跟踪应用。我们用真实数据来说明模拟和实验方法的性能。在比较准确性和稳健性时,拟议的方法比近于最新方法。