高维数据隐空间学习卡尔曼滤波

Itay Buchnik, Damiano Steger, Guy Revach, Ruud J. G. van Sloun, T. Routtenberg, Nir Shlezinger
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引用次数: 1

摘要

卡尔曼滤波(KF)是一种被广泛用于跟踪动态系统的算法,它可以被状态空间模型忠实地捕获。全面描述SS模型的需要限制了其在复杂设置下的适用性,例如,当基于视觉或图形数据进行跟踪时。这一挑战可以通过将测量映射到符合某些假设的闭形式SS模型的潜在特征,并在潜在空间中应用KF来解决。然而,这种近似的SS模型的有效性可能构成一个限制因素。在这项工作中,我们通过联合学习KF和潜在空间映射来解决与高维测量跟踪相关的挑战。我们提出的方法结合了一个学习编码器,同时使用最近提出的数据驱动的卡尔曼网络在潜在空间中进行跟踪,并且两个模块都从数据中进行联合调优。我们的实证结果表明,通过学习最便于跟踪的代理潜在表示,所提出的方法比基于模型和数据驱动的技术都实现了更高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learned Kalman Filtering in Latent Space with High-Dimensional Data
The Kalman filter (KF) is a widely-used algorithm for tracking dynamical systems that can be faithfully captured by state space (SS) models. The need to fully describe an SS model limits its applicability under complex settings, e.g., when tracking based on visual or graphical data. This challenge can be treated by mapping the measurements into latent features obeying some postulated closed-form SS model, and applying the KF in the latent space. However, the validity of this approximated SS model may constitute a limiting factor. In this work we tackle the challenges associated with tracking from high-dimensional measurements by jointly learning the KF along with the latent space mapping. Our proposed approach combines a learned encoder while tracking in the latent space using the recently proposed data-driven Kalman-Net, and having both modules jointly tuned from data. Our empirical results demonstrate that the proposed approach achieves improved performance over both model-based and data-driven techniques, by learning a surrogate latent representation that most facilitates tracking.
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