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The Graph SLAM Algorithm with Applications to Large-Scale Mapping of Urban Structures
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- Sebastian Thrun
- Stanford AI Lab, Stanford University,
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- Michael Montemerlo
- Stanford AI Lab, Stanford University,
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Description
<jats:p> This article presents GraphSLAM, a unifying algorithm for the offline SLAM problem. GraphSLAM is closely related to a recent sequence of research papers on applying optimization techniques to SLAM problems. It transforms the SLAM posterior into a graphical network, representing the log-likelihood of the data. It then reduces this graph using variable elimination techniques, arriving at a lower-dimensional problems that is then solved using conventional optimization techniques. As a result, GraphSLAM can generate maps with 108 or more features. The paper discusses a greedy algorithm for data association, and presents results for SLAM in urban environments with occasional GPS measurements. </jats:p>
Journal
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- The International Journal of Robotics Research
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The International Journal of Robotics Research 25 (5-6), 403-429, 2006-05
SAGE Publications
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Details 詳細情報について
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- CRID
- 1363388845826366848
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- ISSN
- 17413176
- 02783649
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- Data Source
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- Crossref