신경망을 이용한 렌즈의 왜곡모델 구성 및 카메라 보정

Camera Calibration And Lens of Distortion Model Constitution for Using Artificial Neural Networks

  • 김민석 (명지대학교 정보제어공학과) ;
  • 남창우 (명지대학교 정보제어공학과) ;
  • 우동민 (명지대학교 정보제어공학과)
  • Kim, Min-Suk (Dept. of Information & Control Eng. Hyong-Ji UNIV) ;
  • Nam, Chang-Woo (Dept. of Information & Control Eng. Hyong-Ji UNIV) ;
  • Woo, Dong-Min (Dept. of Information & Control Eng. Hyong-Ji UNIV)
  • 발행 : 1999.07.19

초록

The objective of camera calibration is to determine the internal optical characteristics of camera and 3D position and orientation of camera with respect to the real world. Calibration procedure applicable to general purpose cameras and lenses. The general method to revise the accuracy rate of calibration is using mathematical distortion of lens. The effective og calibration show big difference in proportion to distortion of camera lens. In this paper, we propose the method which calibration distortion model by using neural network. The neural network model implicity contains all the distortion model. We can predict the high accuracy of calibration method proposed in this paper. Neural network can set properly the distortion model which has difficulty to estimate exactly in general method. The performance of the proposed neural network approach is compared with the well-known Tsai's two stage method in terms of calibration errors. The results show that the proposed approach gives much more stable and acceptabke calibration error over Tsai's two stage method regardless of camera resolution and camera angle.

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