Global Localization Based on 3D Planar Surface Segments

10/01/2013
by   Robert Cupec, et al.
0

Global localization of a mobile robot using planar surface segments extracted from depth images is considered. The robot's environment is represented by a topological map consisting of local models, each representing a particular location modeled by a set of planar surface segments. The discussed localization approach segments a depth image acquired by a 3D camera into planar surface segments which are then matched to model surface segments. The robot pose is estimated by the Extended Kalman Filter using surface segment pairs as measurements. The reliability and accuracy of the considered approach are experimentally evaluated using a mobile robot equipped by a Microsoft Kinect sensor.

READ FULL TEXT

page 2

page 5

research
05/13/2020

Using multiple sensors for autonomous mobile robot navigation

This paper presents the use of multi-sensor measurement system to guide ...
research
09/12/2021

A study and design of localization system for mobile robot based on ROS

In recent years, the mobile robot has been the concern of numerous resea...
research
05/06/2021

Mobile Robot Localization Using Fuzzy Neural Network Based Extended Kalman Filter

This paper proposes a novel approach to improve the performance of the e...
research
02/21/2022

Geometry-Aware Planar Embedding of Treelike Structures

The growing complexity of spatial and structural information in 3D data ...
research
11/01/2019

Surface Reconstruction from 3D Line Segments

In man-made environments such as indoor scenes, when point-based 3D reco...
research
06/23/2011

Inferring 3D Articulated Models for Box Packaging Robot

Given a point cloud, we consider inferring kinematic models of 3D articu...
research
03/30/2017

Planecell: Representing the 3D Space with Planes

Reconstruction based on the stereo camera has received considerable atte...

Please sign up or login with your details

Forgot password? Click here to reset