Incremental Multimodal Surface Mapping via Self-Organizing Gaussian Mixture Models

09/19/2023
by   Kshitij Goel, et al.
0

This letter describes an incremental multimodal surface mapping methodology, which represents the environment as a continuous probabilistic model. This model enables high-resolution reconstruction while simultaneously compressing spatial and intensity point cloud data. The strategy employed in this work utilizes Gaussian mixture models (GMMs) to represent the environment. While prior GMM-based mapping works have developed methodologies to determine the number of mixture components using information-theoretic techniques, these approaches either operate on individual sensor observations, making them unsuitable for incremental mapping, or are not real-time viable, especially for applications where high-fidelity modeling is required. To bridge this gap, this letter introduces a spatial hash map for rapid GMM submap extraction combined with an approach to determine relevant and redundant data in a point cloud. These contributions increase computational speed by an order of magnitude compared to state-of-the-art incremental GMM-based mapping. In addition, the proposed approach yields a superior tradeoff in map accuracy and size when compared to state-of-the-art mapping methodologies (both GMM- and not GMM-based). Evaluations are conducted using both simulated and real-world data. The software is released open-source to benefit the robotics community.

READ FULL TEXT

page 1

page 4

page 6

research
01/31/2023

Probabilistic Point Cloud Modeling via Self-Organizing Gaussian Mixture Models

This letter presents a continuous probabilistic modeling methodology for...
research
06/30/2023

GIRA: Gaussian Mixture Models for Inference and Robot Autonomy

Large-scale deployments of robot teams are challenged by the need to sha...
research
03/31/2020

Autonomous Cave Surveying with an Aerial Robot

This paper presents a method for cave surveying in complete darkness wit...
research
10/11/2019

Robust Incremental State Estimation through Covariance Adaptation

Recent advances in the fields of robotics and automation have spurred si...
research
03/18/2018

DUGMA: Dynamic Uncertainty-Based Gaussian Mixture Alignment

Registering accurately point clouds from a cheap low-resolution sensor i...
research
06/06/2023

GMMap: Memory-Efficient Continuous Occupancy Map Using Gaussian Mixture Model

Energy consumption of memory accesses dominates the compute energy in en...
research
11/02/2020

Fast Reinforcement Learning with Incremental Gaussian Mixture Models

This work presents a novel algorithm that integrates a data-efficient fu...

Please sign up or login with your details

Forgot password? Click here to reset