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Incremental Non-Gaussian Inference for SLAM Using Normalizing Flows

Authors :
Huang, Qiangqiang
Pu, Can
Khosoussi, Kasra
Rosen, David M.
Fourie, Dehann
How, Jonathan P.
Leonard, John J.
Huang, Qiangqiang
Pu, Can
Khosoussi, Kasra
Rosen, David M.
Fourie, Dehann
How, Jonathan P.
Leonard, John J.
Source :
arxiv
Publication Year :
2024

Abstract

This paper presents normalizing flows for incremental smoothing and mapping (NF-iSAM), a novel algorithm for inferring the full posterior distribution in SLAM problems with nonlinear measurement models and non-Gaussian factors. NF-iSAM exploits the expressive power of neural networks, and trains normalizing flows to model and sample the full posterior. By leveraging the Bayes tree, NF-iSAM enables efficient incremental updates similar to iSAM2, albeit in the more challenging non-Gaussian setting. We demonstrate the advantages of NF-iSAM over state-of-the-art point and distribution estimation algorithms using range-only SLAM problems with data association ambiguity. NF-iSAM presents superior accuracy in describing the posterior beliefs of continuous variables (e.g., position) and discrete variables (e.g., data association).

Details

Database :
OAIster
Journal :
arxiv
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1434011987
Document Type :
Electronic Resource