-
Notifications
You must be signed in to change notification settings - Fork 17
Commit
This commit does not belong to any branch on this repository, and may belong to a fork outside of the repository.
- Loading branch information
Showing
2 changed files
with
25 additions
and
0 deletions.
There are no files selected for viewing
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
Original file line number | Diff line number | Diff line change |
---|---|---|
@@ -0,0 +1,25 @@ | ||
--- | ||
layout: post | ||
title: "MAC-VO: Metrics-aware Covariance for Learning-based Stereo Visual Odometry" | ||
date: 2024-10-11 12:00:01 | ||
categories: research | ||
description: "MAC-VO: Metrics-aware Covariance for Learning-based Stereo Visual Odometry" | ||
author: "Yuheng Qiu" | ||
published: true | ||
redirect: "https://mac-vo.github.io/" | ||
|
||
show_sidebar: false | ||
# slim_content_width: true | ||
permalink: /airimu/ | ||
image: /img/posts/2024-10-11-macvo/macvo.jpg | ||
datatable: true | ||
title_image: None | ||
hero_image: /img/posts/2024-10-11-macvo/macvo.jpg | ||
hero_height: is-large | ||
remove_hero_title: true | ||
menubar_toc: true | ||
|
||
tags: Learning, Perception, SLAM | ||
--- | ||
|
||
We propose the MAC-VO, a novel learning-based stereo VO that leverages the learned metrics-aware matching uncertainty for dual purposes: selecting keypoint and weighing the residual in pose graph optimization. Compared to traditional geometric methods prioritizing texture-affluent features like edges, our keypoint selector employs the learned uncertainty to filter out the low-quality features based on global inconsistency. In contrast to the learning-based algorithms that model the scale-agnostic diagonal weight matrix for covariance, we design a metrics-aware covariance model to capture the spatial error during keypoint registration and the correlations between different axes. Integrating this covariance model into pose graph optimization enhances the robustness and reliability of pose estimation, particularly in challenging environments with varying illumination, feature density, and motion patterns. On public benchmark datasets, MAC-VO outperforms existing VO algorithms and even some SLAM algorithms in challenging environments. The covariance map also provides valuable information about the reliability of the estimated poses, which can benefit decision-making for autonomous systems. |
Loading
Sorry, something went wrong. Reload?
Sorry, we cannot display this file.
Sorry, this file is invalid so it cannot be displayed.