Incremental Non-Gaussian Inference for SLAM Using Normalizing Flows

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 nor...

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Bibliographic Details
Main Authors: Huang, Qiangqiang, Pu, Can, Khosoussi, Kasra, Rosen, David M., Fourie, Dehann, How, Jonathan P., Leonard, John J.
Format: Article
Language:English
Published: Institute of Electrical and Electronics Engineers (IEEE) 2024
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Online Access:https://hdl.handle.net/1721.1/153746
Description
Summary: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).