Publication | Closed Access
Effective Background Model-Based RGB-D Dense Visual Odometry in a Dynamic Environment
188
Citations
17
References
2016
Year
Machine VisionImage AnalysisEngineeringOdometryComputer Stereo VisionVision RoboticsField RoboticsBackground ModelDynamic EnvironmentEnergy-based Dense-visual-odometry ApproachMoving Object TrackingStructure From MotionKinematicsMulti-view GeometryComputer VisionRgb-d Sensor
This paper proposes a robust background model-based dense-visual-odometry (BaMVO) algorithm that uses an RGB-D sensor in a dynamic environment. The proposed algorithm estimates the background model represented by the nonparametric model from depth scenes and then estimates the ego-motion of the sensor using the energy-based dense-visual-odometry approach based on the estimated background model in order to consider moving objects. Experimental results demonstrate that the ego-motion is robustly obtained by BaMVO in a dynamic environment.
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