Abstract

Existing 3D indoor mapping of RGB-D data are prominently point-based and feature-based methods. In most cases iterative closest point (ICP) and its variants are generally used for pairwise registration process. Considering that the ICP algorithm requires an relatively accurate initial transformation and high overlap a weighted closed-form solution for RGB-D data registration is proposed. In this solution, we weighted and normalized the 3D points based on the theoretical random errors and the dual-number quaternions are used to represent the 3D rigid body motion. Basically, dual-number quaternions provide a closed-form solution by minimizing a cost function. The most important advantage of the closed-form solution is that it provides the optimal transformation in one-step, it does not need to calculate good initial estimates and expressively decreases the demand for computer resources in contrast to the iterative method. Basically, first our method exploits RGB information. We employed a scale invariant feature transformation (SIFT) for extracting, detecting, and matching features. It is able to detect and describe local features that are invariant to scaling and rotation. To detect and filter outliers, we used random sample consensus (RANSAC) algorithm, jointly with an statistical dispersion called interquartile range (IQR). After, a new RGB-D loop-closure solution is implemented based on the volumetric information between pair of point clouds and the dispersion of the random errors. The loop-closure consists to recognize when the sensor revisits some region. Finally, a globally consistent map is created to minimize the registration errors via a graph-based optimization. The effectiveness of the proposed method is demonstrated with a Kinect dataset. The experimental results show that the proposed method can properly map the indoor environment with an absolute accuracy around 1.5% of the travel of a trajectory.

Highlights

  • RGB-D cameras have received considerable attention of robotic, vision and photogrammetric researches and new challenges for 3D mapping of indoor environment have been developed

  • When iterative methods are used for pairwise registration, it requires an relatively accurate initial transformation and a high overlap between consecutive point clouds

  • We investigate how to weight and normalize the 3D points based on the theoretical random xyz errors into a closed-form solution for pairwise registration

Read more

Summary

INTRODUCTION

RGB-D cameras have received considerable attention of robotic, vision and photogrammetric researches and new challenges for 3D mapping of indoor environment have been developed. Such sensors can provide a colored 3D point cloud, quite useful for on line maps and their advantages compared with laser scanning and ToF cameras are the lightweight, low cost, faster and highly flexible and it does not need expertize human interaction. Algorithm developed by Lowe (2004) known as scale-invariant feature transform (SIFT), is often used Their associated depth values are used for a pairwise registration. Considering that the ICP algorithm requires an relatively accurate initial transformation and high overlap a weighted closed-form solution for RGB-D data registration is proposed.

RELATED WORK
WEIGTHED CLOSED-FORM SOLUTION
Pairwise registration
EXPERIMENTS
Findings
CONCLUSIONS
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call