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논문검색

Using Visual Feature and Geometric Constraints for Robot Localization

초록

영어

This paper presents a novel method to generate an index word for the topological map in robot localization. Previous studies extract only appearance features from an input image to match the visual words of the model images. However, the localization performance is much affected by the miss or false matches. First, we segment a robot navigation environment into the structural planes using 3D depth data. We obtain both the surface normal vectors of the structural planes and visual features in the model image, which are compared with those of an input request image in the voting approach. The experimental results show the voting performance is improved by taking into account the spatial distribution of the features.

목차

Abstract
 1. Introduction
 2. Related Works
 3. Proposed Method
  3.1. Plane Segmetation and Visual Word Generation
  3.2. Matching and Localization
 4. Experiments and Discussion
 5. Conclusion
 Acknowledgements
 References

저자정보

  • Sangyun Lee Department of Imaging Science and Arts, GSAIM, Chung-Ang University,Seoul,Korea
  • InPyo Lee Department of Imaging Science and Arts, GSAIM, Chung-Ang University,Seoul,Korea
  • Changkyung Eem College of ICT Engineering, Chung-Ang University, Seoul, Korea
  • Hyunki Hong School of Integrative Engineering, Chung-Ang University, Seoul, Korea

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