A Study on the Hair Line detection Using Feature Points Matching in Hair Beauty Fashion Design

헤어 뷰티 패션 디자인 선별을 위한 특징 점 정합을 이용한 헤어 라인 검출

  • 송선희 (조선대학교 컴퓨터공학과) ;
  • 나상동 (조선대학교 컴퓨터공학과) ;
  • 배용근 (조선대학교 컴퓨터공학과)
  • Published : 2003.10.01

Abstract

In this paper, hair beauty fashion design feature points detection system is proposed. A hair models and hair face is represented as a graph where the nodes are placed at facial feature points labeled by their Gabor features and the edges are describes their spatial relations. An innovative flexible feature matching is proposed to perform features correspondence between hair models and the input image. This matching hair model works like random diffusion process in the image space by employing the locally competitive and globally corporative mechanism. The system works nicely on the face images under complicated background. pose variations and distorted by accessories. We demonstrate the benefits of our approach by its implementation on the face identification system.

본 논문은 헤어 뷰티 패션 디자인(Hair Beauty Fashion Design)을 위한 헤어모델과 헤어 얼굴 특징 점을 검출하여 긴 머리, 짧은 머리, 올림머리 등을 연출하는 헤어 라인 검출을 연구한다. 헤어 얼굴은 Gabor 특징에 의하여 지정된 특징 점의 교점 그래프와 공간적 연결을 나타내는 에지 그래프 헤어 모델로 표현한다. 제안된 탄력적 특징 정합은 헤어 모델과 헤어 입력 영상에 상응하는 특징을 취하여 정합 헤어 모델에서 국부적으로 경쟁적이고, 전체적으로 협력적인 헤어 모델 구조를 제시하며, 또 헤어 영상공간에서 불규칙 확산 처리와 같은 역할도 한다. 복잡한 헤어 얼굴 배경이나 헤어 모델 자세의 변화, 그리고 왜곡된 헤어 얼굴 영상에서도 원활하게 동작하는 헤어(얼굴)설계 식별 시스템을 구성함으로서 헤어 라인응용의 방법 등을 탄력적 특징적 정합으로 검출한다.

Keywords

References

  1. R.Brunelli and T.Poggio. Face recognition: Features versus templates. IEEE Trans. on Pattern Analysis and Machine Intelligence, 15(10):1042-1052, 1993 https://doi.org/10.1109/34.254061
  2. M.Kass, A.P.Witkin, and D.Terzopoulos. Snakes: Active contour models. Int. Jour. of Computer Vision, pages 321-331, 1988
  3. H. Wu, T. Yokoyama, D.Pramadihanto, and M.Yachida. Face and facial feature extraction from color image. Proc. of the Int. Worksh. on Autom. Face-and Gesture Recogn., 1996
  4. M.Lades, J.C.Vorbruggen, J.C. Buhmannm, R. C. von der Malsburg, and W.Konen. Distortion invariant object recognition in the dynamic link architecture. IEEE Trans. on Computers, 42(6):300-311, 1993 https://doi.org/10.1109/12.210173
  5. L.Wiskott, J.M.Fellous, N.Kruger, and C. der Malsburg. Face recognition and gender determination.Proc.of the Int. Work on Autom. Face-and Gesture Recogn., pages 92-97, 1995
  6. J.Daugman. Complete discrete 2-d gabor transform by neural networks for image analysis and compression. IEEE Trans. on Acoust., Speech, Signal Process., 36(7): 1169-1179, 1988 https://doi.org/10.1109/29.1644
  7. J.P.Jones and L.A.Palmer. An evaluation of the two-dimensional gabor filter model of simple receptive fields in cat striate cortex. Jour. of Neurophys., 58(6):1233-1258,1987
  8. J. Heinzmann et al., '3D Facial Pose and Gaze Point Estimation using a Robust Real-Time Tracking Paradigm'. in Proceedings of ICAFGR, pp. 142-147, 1998
  9. T. Rikert et al., 'Gaze Estimation using Morphable Models'. in Proc. of ICAFGR, pp. 436-441, 1998
  10. A. Alial et al., 'Man -Machine Interface through Eyeball Direction of Gaze'. in Proc. of the Southeastern Symposium on System Theory, pp. 478-482, 1997
  11. J. Heinzmann et al., 'Robust Real-Time Face Tracking and Gesture Recognition'. in Proc. of the IJCAI, vol. 2, pp. 1525-1530, 1997
  12. Seika-Tenkai-Tokushuu-Go, ATR Journal, 1996
  13. Matsumoto-Y, et al., 'An Algorithm for Real-Time Stereo vision Implementation of Head Pose and Gaze Direction measurement', in Proc. the ICAFGR 2000. pp.499-504