Title :
Global pose estimation with limited GPS and long range visual odometry
Author :
Rehder, Joern ; Gupta, Kamal ; Nuske, Stephen ; Singh, Sanjiv
Author_Institution :
TUHH, Germany
Abstract :
Here we present an approach to estimate the global pose of a vehicle in the face of two distinct problems; first, when using stereo visual odometry for relative motion estimation, a lack of features at close range causes a bias in the motion estimate. The other challenge is localizing in the global coordinate frame using very infrequent GPS measurements. Solving these problems we demonstrate a method to estimate and correct for the bias in visual odometry and a sensor fusion algorithm capable of exploiting sparse global measurements. Our graph-based state estimation framework is capable of inferring global orientation using a unified representation of local and global measurements and recovers from inaccurate initial estimates of the state, as intermittently available GPS information may delay the observability of the entire state. We also demonstrate a reduction of the complexity of the problem to achieve real-time throughput. In our experiments, we show in an outdoor dataset with distant features where our bias corrected visual odometry solution makes a fivefold improvement in the accuracy of the estimated translation compared to a standard approach. For a traverse of 2km we demonstrate the capabilities of our graph-based state estimation approach to successfully infer global orientation with as few as 6 GPS measurements and with two-fold improvement in mean position error using the corrected visual odometry.
Keywords :
Global Positioning System; distance measurement; motion estimation; observability; pose estimation; real-time systems; sensor fusion; state estimation; stereo image processing; traffic engineering computing; vehicles; 6 GPS measurements; GPS information; bias corrected visual odometry solution; close range features; five-fold improvement; global pose estimation; graph-based state estimation; graph-based state estimation framework; infrequent GPS measurements; long range visual odometry; mean position error; measurements representation; motion estimation; outdoor dataset; real-time throughput; sensor fusion algorithm; sparse global measurements; state observability; stereo visual odometry; translation estimation; two-fold improvement; Cameras; Estimation; Feature extraction; Global Positioning System; Optimization; Vehicles; Visualization;
Conference_Titel :
Robotics and Automation (ICRA), 2012 IEEE International Conference on
Conference_Location :
Saint Paul, MN
Print_ISBN :
978-1-4673-1403-9
Electronic_ISBN :
1050-4729
DOI :
10.1109/ICRA.2012.6225277