View Invariant Loop Closure with Oriented Semantic Landmarks

2020 IEEE International Conference on Robotics and Automation (ICRA)(2020)

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摘要
Recent work on semantic simultaneous localization and mapping (SLAM) have shown the utility of natural objects as landmarks for improving localization accuracy and robustness. In this paper we present a monocular semantic SLAM system that uses object identity and inter-object geometry for view-invariant loop detection and drift correction. Our system's ability to recognize an area of the scene even under large changes in viewing direction allows it to surpass the mapping accuracy of ORB-SLAM, which uses only local appearance-based features that are not robust to large viewpoint changes. Experiments on real indoor scenes show that our method achieves mean drift reduction of 70% when compared directly to ORB-SLAM. Additionally, we propose a method for object orientation estimation, where we leverage the tracked pose of a moving camera under the SLAM setting to overcome ambiguities caused by …
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关键词
view-invariant loop closure,oriented semantic landmarks,simultaneous localization and mapping,monocular semantic SLAM system,object identity,inter-object geometry,view-invariant loop detection,ORB-SLAM,local appearance-based features,indoor scenes,object orientation estimation,geometrical detailed semantic maps,object translation,object scale
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