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Using EM to Learn 3D Models of Indoor Environments with Mobile Robots

Yufeng Liu, Rosemary Emery, Deepayan Chakrabarti, Wolfram Burgard, Sebastian Thrun

发表年份
2001
引用次数
146

摘要

This paper describes an algorithm for generating compact 3D models of indoor environments with mobile robots. Our algorithm employs the expectation maximization algorithm to fit a lowcomplexity planar model to 3D data collected by range finders and a panoramic camera. The complexity of the model is determined during model fitting, by incrementally adding and removing surfaces. In a final post-processing step, measurements are converted into polygons and projected onto the surface model where possible. Empirical results obtained with a mobile robot illustrate that high-resolution models can be acquired in reasonable time. 1.

关键词

Mobile robotComputer scienceRobotRange (aeronautics)PlanarMaximizationComputer visionArtificial intelligenceExpectation–maximization algorithmAlgorithm

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