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Robot Docking Using Mixtures of Gaussians

Matthew M. Williamson, Roderick Murray‐Smith, Volker Hansen

Year
1998
Citations
5

Abstract

This paper applies the Mixture of Gaussians probabilistic model, combined with Expectation Maximization optimization to the task of summarizing three dimensional range data for a mobile robot. This provides a flexible way of dealing with uncertainties in sensor information, and allows the introduction of prior knowledge into low-level perception modules. Problems with the basic approach were solved in several ways: the mixture of Gaussians was reparameterized to reflect the types of objects expected in the scene, and priors on model parameters were included in the optimization process. Both approaches force the optimization to find `interesting' objects, given the sensor and object characteristics. A higher level classifier was used to interpret the results provided by the model, and to reject spurious solutions. 1 Introduction This paper concerns an application of the Mixture of Gaussians (MoG) probabilistic model (Titterington et al., 1985) for a robot docking application. We use th...

Keywords

Computer scienceMixture modelProbabilistic logicSpurious relationshipArtificial intelligenceRobotMaximizationMobile robotExpectation–maximization algorithmPrior probability

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