DocumentCode
79859
Title
Calibration of an IMU-Camera Cluster Using Planar Mirror Reflection and Its Observability Analysis
Author
Panahandeh, G. ; Jansson, M. ; Handel, P.
Author_Institution
Dept. of Signal ProcessingACCESS Linnaeus Centre, KTH (R. Inst. of Technol.), Stockholm, Sweden
Volume
64
Issue
1
fYear
2015
fDate
Jan. 2015
Firstpage
75
Lastpage
88
Abstract
This paper describes a novel and a low-cost calibration approach to estimate the relative transformation between an inertial measurement unit (IMU) and a camera, which are rigidly mounted together. The calibration is performed by fusing the measurements from the IMU-camera rig moving in front of a planar mirror. To construct the visual observations, we select a set of key features (KFs) attached to the visual inertial rig where the 3-D positions of the KFs are unknown. During calibration, the system is navigating in front of the planar mirror, while the vision sensor observes the reflections of the KFs in the mirror, and the inertial sensor measures the system´s linear accelerations and rotational velocities over time. Our first contribution in this paper is studying the observability properties of IMU-camera calibration parameters. For this visual inertial calibration problem, we derive its time-varying nonlinear state-space model and study its observability properties using the Lie derivative rank condition test. We show that the calibration parameters and the 3-D position of the KFs are observable. As our second contribution, we propose an approach for estimating the calibration parameters along with the 3-D position of the KFs and the dynamics of the analyzed system. The estimation problem is then solved in the unscented Kalman filter framework. We illustrate the findings of our theoretical analysis using both simulations and experiments. The achieved performance indicates that our proposed method can conveniently be used in consumer products like visual inertial-based applications in smartphones for localization, 3-D reconstruction, and surveillance applications.
Keywords
Kalman filters; calibration; cameras; inertial navigation; mirrors; nonlinear filters; 3-D positions; IMU-camera cluster; Lie derivative rank condition test; calibration; inertial measurement unit; key features; linear accelerations; observability analysis; planar mirror reflection; rotational velocities; time-varying nonlinear state-space model; unscented Kalman filter framework; vision sensor; visual inertial rig; visual observations; Calibration; Cameras; Mathematical model; Mirrors; Observability; Vectors; Visualization; Calibration; observability analysis; visual inertial navigation; visual inertial navigation.;
fLanguage
English
Journal_Title
Instrumentation and Measurement, IEEE Transactions on
Publisher
ieee
ISSN
0018-9456
Type
jour
DOI
10.1109/TIM.2014.2329388
Filename
6848793
Link To Document