Online Incremental Non-Gaussian Inference for SLAM Using Normalizing Flows

10/02/2021
by   Qiangqiang Huang, et al.
7

This paper presents a novel non-Gaussian inference algorithm, Normalizing Flow iSAM (NF-iSAM), for solving SLAM problems with non-Gaussian factors and/or nonlinear measurement models. NF-iSAM exploits the expressive power of neural networks to model normalizing flows that can accurately approximate the joint posterior of highly nonlinear and non-Gaussian factor graphs. By leveraging the Bayes tree, NF-iSAM is able to exploit the sparsity structure of SLAM, thus enabling efficient incremental updates similar to iSAM2, although in the more challenging non-Gaussian setting. We demonstrate the performance of NF-iSAM and compare it against state-of-the-art algorithms such as iSAM2 (Gaussian) and mm-iSAM (non-Gaussian) in synthetic and real range-only SLAM datasets with data association ambiguity.

READ FULL TEXT

page 14

page 15

research
05/11/2021

NF-iSAM: Incremental Smoothing and Mapping via Normalizing Flows

This paper presents a novel non-Gaussian inference algorithm, Normalizin...
research
09/22/2021

On Reference Solutions to Non-Gaussian SLAM Factor Graphs

Many real-world applications of simultaneous localization and mapping (S...
research
03/24/2023

GAPSLAM: Blending Gaussian Approximation and Particle Filters for Real-Time Non-Gaussian SLAM

Inferring the posterior distribution in SLAM is critical for evaluating ...
research
09/28/2022

Robust Incremental Smoothing and Mapping (riSAM)

This paper presents a method for robust optimization for online incremen...
research
09/13/2021

Incremental Abstraction in Distributed Probabilistic SLAM Graphs

Scene graphs represent the key components of a scene in a compact and se...
research
05/19/2019

Characterizing SLAM Benchmarks and Methods for the Robust Perception Age

The diversity of SLAM benchmarks affords extensive testing of SLAM algor...

Please sign up or login with your details

Forgot password? Click here to reset