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Bayesian Heuristics for Robust Spatial Perception

Bayesian Heuristics for Robust Spatial Perception

来源:Arxiv_logoArxiv
英文摘要

Spatial perception is a key task in several machine intelligence applications such as robotics and computer vision. In general, it involves the nonlinear estimation of hidden variables that represent the system's state. However, in the presence of measurement outliers, the standard nonlinear least squared formulation results in poor estimates. Several methods have been considered in the literature to improve the reliability of the estimation process. Most methods are based on heuristics since guaranteed global robust estimation is not generally practical due to high computational costs. Recently general purpose robust estimation heuristics have been proposed that leverage existing non-minimal solvers available for the outlier-free formulations without the need for an initial guess. In this work, we propose three Bayesian heuristics that have similar structures. We evaluate these heuristics in practical scenarios to demonstrate their merits in different applications including 3D point cloud registration, mesh registration and pose graph optimization. The general computational advantages our proposals offer make them attractive candidates for spatial perception tasks.

Momin Uppal、Muhammad Tahir、Aamir Hussain Chughtai

计算技术、计算机技术自动化技术、自动化技术设备遥感技术

Momin Uppal,Muhammad Tahir,Aamir Hussain Chughtai.Bayesian Heuristics for Robust Spatial Perception[EB/OL].(2022-12-01)[2025-08-23].https://arxiv.org/abs/2212.00344.点此复制

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