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Stochastic Motion Planning as Gaussian Variational Inference: Theory and Algorithms

29 August 2023
Hongzhe Yu
Yongxin Chen
ArXiv (abs)PDFHTMLGithub (21★)
Main:18 Pages
17 Figures
Bibliography:2 Pages
4 Tables
Abstract

We present a novel formulation for motion planning under uncertainties based on variational inference where the optimal motion plan is modeled as a posterior distribution. We propose a Gaussian variational inference-based framework, termed Gaussian Variational Inference Motion Planning (GVI-MP), to approximate this posterior by a Gaussian distribution over the trajectories. We show that the GVI-MP framework is dual to a special class of stochastic control problems and brings robustness into the decision-making in motion planning. We develop two algorithms to numerically solve this variational inference and the equivalent control formulations for motion planning. The first algorithm uses a natural gradient paradigm to iteratively update a Gaussian proposal distribution on the sparse motion planning factor graph. We propose a second algorithm, the Proximal Covariance Steering Motion Planner (PCS-MP), to solve the same inference problem in its stochastic control form with an additional terminal constraint. We leverage a proximal gradient paradigm where, at each iteration, we quadratically approximate nonlinear state costs and solve a linear covariance steering problem in closed form. The efficacy of the proposed algorithms is demonstrated through extensive experiments on various robot models. An implementation is provided in https://github.com/hzyu17/VIMP.

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@article{yu2025_2308.14985,
  title={ Stochastic Motion Planning as Gaussian Variational Inference: Theory and Algorithms },
  author={ Hongzhe Yu and Yongxin Chen },
  journal={arXiv preprint arXiv:2308.14985},
  year={ 2025 }
}
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