论文标题
分段线性动力学系统的变异推理和学习
Variational Inference and Learning of Piecewise-linear Dynamical Systems
论文作者
论文摘要
在许多科学和工程领域,对数据的时间行为进行建模至关重要。基线方法假设动态和观察方程式遵循线性高斯模型。但是,有许多现实世界过程无法以单个线性行为为特征。另外,可以考虑一个分段线性模型,该模型与开关机制相结合,在需要几种行为模式时非常适合。然而,由于其计算复杂性随时间呈指数增长,因此开关动态系统非常棘手。在本文中,我们提出了分段线性动力学系统的变异近似。我们提供了两种变异期望最大化算法的推导,一个过滤器和一个更光滑的详细信息。我们表明,模型参数可以分为两个集合:静态和动态参数,并且可以将前参数与线性模式的数量或开关变量的状态数量估计。我们将提出的方法应用于视觉跟踪问题,即头姿势跟踪,我们将算法与几个最先进的跟踪器进行了彻底比较。
Modeling the temporal behavior of data is of primordial importance in many scientific and engineering fields. Baseline methods assume that both the dynamic and observation equations follow linear-Gaussian models. However, there are many real-world processes that cannot be characterized by a single linear behavior. Alternatively, it is possible to consider a piecewise-linear model which, combined with a switching mechanism, is well suited when several modes of behavior are needed. Nevertheless, switching dynamical systems are intractable because of their computational complexity increases exponentially with time. In this paper, we propose a variational approximation of piecewise linear dynamical systems. We provide full details of the derivation of two variational expectation-maximization algorithms, a filter and a smoother. We show that the model parameters can be split into two sets, static and dynamic parameters, and that the former parameters can be estimated off-line together with the number of linear modes, or the number of states of the switching variable. We apply the proposed method to a visual tracking problem, namely head-pose tracking, and we thoroughly compare our algorithm with several state of the art trackers.