Publication | Closed Access
Accurate and robust ego-motion estimation using expectation maximization
17
Citations
21
References
2008
Year
Unknown Venue
Engineering3D Pose EstimationField RoboticsRandom Sample ConsensusLocalizationImage AnalysisMotion CaptureKinematicsRobot LearningOutlier Motion HypothesisExpectation MaximizationMachine VisionRobust Mean MotionStructure From MotionComputer VisionOdometryComputer Stereo VisionEye TrackingMulti-view GeometryMotion Analysis
A novel robust visual-odometry technique, called EM-SE(3) is presented and compared against using the random sample consensus (RANSAC) for ego-motion estimation. In this contribution, stereo-vision is used to generate a number of minimal-set motion hypothesis. By using EM-SE(3), which involves expectation maximization on a local linearization of the rigid-body motion group SE(3), a distinction can be made between inlier and outlier motion hypothesis. At the same time a robust mean motion as well as its associated uncertainty can be computed on the selected inlier motion hypothesis. The data-sets used for evaluation consist of synthetic and large real-world urban scenes, including several independently moving objects. Using these data-sets, it will be shown that EM-SE(3) is both more accurate and more efficient than RANSAC.
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