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다중센서 융합 상이 지도를 통한 다중센서 기반 3차원 복원 결과 개선 KCI 등재

Refinements of Multi-sensor based 3D Reconstruction using a Multi-sensor Fusion Disparity Map

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로봇학회논문지 (The Journal of Korea Robotics Society)
한국로봇학회 (Korea Robotics Society)
초록

This paper describes an algorithm that improves 3D reconstruction result using a multi-sensor fusion disparity map. We can project LRF (Laser Range Finder) 3D points onto image pixel coordinates using extrinsic calibration matrixes of a camera-LRF ( ) and a camera calibration matrix ( ). The LRF disparity map can be generated by interpolating projected LRF points. In the stereo reconstruction, we can compensate invalid points caused by repeated pattern and textureless region using the LRF disparity map. The result disparity map of compensation process is the multi-sensor fusion disparity map. We can refine the multi-sensor 3D reconstruction based on stereo vision and LRF using the multi-sensor fusion disparity map. The refinement algorithm of multi-sensor based 3D reconstruction is specified in four subsections dealing with virtual LRF stereo image generation, LRF disparity map generation, multi-sensor fusion disparity map generation, and 3D reconstruction process. It has been tested by synchronized stereo image pair and LRF 3D scan data.

저자
  • 김시종 | Kim Si Jong
  • 안광호 | An Kwang Ho
  • 성창훈 | Sung Chang Hun
  • 정명진 | Chung Myung Jin