Title :
Stable vision-aided navigation for large-area augmented reality
Author :
Oskiper, Taragay ; Chiu, Han-Pang ; Zhu, Zhiwei ; Samaresekera, Supun ; Kumar, Rakesh
Abstract :
In this paper, we present a unified approach for a drift-free and jitter-reduced vision-aided navigation system. This approach is based on an error-state Kalman filter algorithm using both relative (local) measurements obtained from image based motion estimation through visual odometry, and global measurements as a result of landmark matching through a pre-built visual landmark database. To improve the accuracy in pose estimation for augmented reality applications, we capture the 3D local reconstruction uncertainty of each landmark point as a covariance matrix and implicity rely more on closer points in the filter. We conduct a number of experiments aimed at evaluating different aspects of our Kalman filter framework, and show our approach can provide highly-accurate and stable pose both indoors and outdoors over large areas. The results demonstrate both the long term stability and the overall accuracy of our algorithm as intended to provide a solution to the camera tracking problem in augmented reality applications.
Keywords :
Kalman filters; augmented reality; computer vision; covariance matrices; motion estimation; pose estimation; 3D local reconstruction uncertainty; camera tracking problem; covariance matrix; drift-free vision-aided navigation system; error-state Kalman filter algorithm; image based motion estimation; jitter-reduced vision-aided navigation system; landmark matching; large-area augmented reality; pose estimation; prebuilt visual landmark database; stable vision-aided navigation; visual odometry; Augmented reality; Cameras; Kalman filters; Mathematical model; Measurement uncertainty; Three dimensional displays; Visualization;
Conference_Titel :
Virtual Reality Conference (VR), 2011 IEEE
Conference_Location :
Singapore
Print_ISBN :
978-1-4577-0039-2
Electronic_ISBN :
1087-8270
DOI :
10.1109/VR.2011.5759438