Title: Temporally Scalable Visual SLAM using a Reduced Pose Graph
Authors: Hordur Johannsson, Michael Kaess, Maurice Fallon, and John J. Leonard
Abstract:
In this paper, we demonstrate a system for temporally scalable visual SLAM using a reduced pose graph representation. Unlike previous visual SLAM approaches that maintain static keyframes, our approach uses new measurements to continually improve the map, yet achieves efficiency by avoiding adding  redundant  frames  and  not  using  marginalization  to reduce the graph. To evaluate our approach, we present results using an online binocular visual SLAM system that uses place recognition  for  both  robustness  and  multi-session  operation. Additionally, to enable large-scale indoor mapping, our system automatically  detects  elevator  rides  based  on  accelerometer data. We demonstrate long-term mapping in a large multi-floor building, using approximately nine hours of data collected over the  course  of  six  months.  Our  results  illustrate  the  capability of  our  visual  SLAM  system  to  map  a  large  are  over  extended period of time.
IEEE International Conference on Robotics and Automation (ICRA), 2013
Link:
LocalLink
http://people.csail.mit.edu/kaess/pub/Johannsson13icra.pdf 
Reference Link:
Another paper with the same title: 
In RSS Workshop on Long-term Operation of Autonomous Robotic Systems in Changing Environments, 2012. 
http://people.csail.mit.edu/kaess/pub/Johannsson12rssw.pdf 
No comments:
Post a Comment
Note: Only a member of this blog may post a comment.