Publication | Closed Access
Practice makes perfect? Managing and leveraging visual experiences for lifelong navigation
120
Citations
14
References
2012
Year
Unknown Venue
EngineeringPose Estimation SystemVisual InterfaceField RoboticsLocalizationSocial SciencesVisual DesignImage AnalysisVirtual RealityLifelong NavigationRobot LearningRobotics PerceptionVisual ModelingCartographyMachine VisionVision RoboticsDesignUser ExperienceComputer SciencePose EstimationComputer VisionArchitectural DesignSpatial ComputingOdometryEye TrackingScene AppearanceScene UnderstandingHuman-computer InteractionSpatial CognitionVisual ExperiencesRoboticsScene Modeling
This paper is about long-term navigation in environments whose appearance changes over time - suddenly or gradually. We describe, implement and validate an approach which allows us to incrementally learn a model whose complexity varies naturally in accordance with variation of scene appearance. It allows us to leverage the state of the art in pose estimation to build over many runs, a world model of sufficient richness to allow simple localisation despite a large variation in conditions. As our robot repeatedly traverses its workspace, it accumulates distinct visual experiences that in concert, implicitly represent the scene variation - each experience captures a visual mode. When operating in a previously visited area, we continually try to localise in these previous experiences while simultaneously running an independent vision based pose estimation system. Failure to localise in a sufficient number of prior experiences indicates an insufficient model of the workspace and instigates the laying down of the live image sequence as a new distinct experience. In this way, over time we can capture the typical time varying appearance of an environment and the number of experiences required tends to a constant. Although we focus on vision as a primary sensor throughout, the ideas we present here are equally applicable to other sensor modalities. We demonstrate our approach working on a road vehicle operating over a three month period at different times of day, in different weather and lighting conditions. In all, we process over 136,000 frames captured from 37km of driving.
| Year | Citations | |
|---|---|---|
Page 1
Page 1