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Development of Auto Tracking System for Baseball Pitching

투구된 공의 실시간 위치 자동추적 시스템 개발

  • Published : 2007.03.31

Abstract

The effort identifying positioning information of the moving object in real time has been a issue not only in sport biomechanics but also other academic areas. In order to solve this issue, this study tried to track the movement of a pitched ball that might provide an easier prediction because of a clear focus and simple movement of the object. Machine learning has been leading the research of extracting information from continuous images such as object tracking. Though the rule-based methods in artificial intelligence prevailed for decades, it has evolved into the methods of statistical approach that finds the maximum a posterior location in the image. The development of machine learning, accompanied by the development of recording technology and computational power of computer, made it possible to extract the trajectory of pitched baseball from recorded images. We present a method of baseball tracking, based on object tracking methods in machine learning. We introduce three state-of-the-art researches regarding the object tracking and show how we can combine these researches to yield a novel engine that finds trajectory from continuous pitching images. The first research is about mean shift method which finds the mode of a supposed continuous distribution from a set of data. The second research is about the research that explains how we can find the mode and object region effectively when we are given the previous image's location of object and the region. The third is about the research of representing data into features that we can deal with. From those features, we can establish a distribution to generate a set of data for mean shift. In this paper, we combine three works to track baseball's location in the continuous image frames. From the information of locations from two sets of images, we can reconstruct the real 3-D trajectory of pitched ball. We show how this works in real pitching images.

Keywords

References

  1. 김종택, 신인식, 전태원 (1988). 3차원 영상분석법의 실용화 방법 및 컴퓨터 프로그램 패키지 개발. 서울대학교 체육연구소.
  2. 신보삼 (1986). 走跳投運動의 生體力學的 硏究, 서울대학교 박사학위논문.
  3. 신인식, 권영후 (1987). 3차원 영상 분석법의 비교 연구. 서울대학교 체육연구소 논집. 8(1), pp. 33-44.
  4. 신인식, 이기청, 정철수, 김관호 (2000). 윈도우용 비디오 3차원 영상분석 프로그램 개발. 한국체육학회지. 39(3) pp. 622-634.
  5. 진성태, 성낙준, 권영후 (1987). DLT를 이용한 3차원 영상분석법의 실용화 방안. 제 1회 생체역학 국제 세미나 초록, pp. 77-95.
  6. Abdel-Aziz, Y. I., & Karara, H. M. (1971). Direct linear transformation from comparator coordinates into object space coordinates in close-range photogrammetry. Proceedings of the symposium on close range photogrammetry, Jan. 26-29. 1971 Falls Church, Va: American society of Photogrammetry.
  7. Bradski, G.R., & Clara, S. (1998) Computer vision face tracking for use in a perceptual user interface, Intel Technology Journal.
  8. Comaniciu, D., Ramesh, V., & Meer, P. (2003) Kernel-based object tracking, IEEE transactions on pattern analysis and machine intelligence, Vol. 25, No. 5, pp 564-577. https://doi.org/10.1109/TPAMI.2003.1195991
  9. Comaniciu, D., Meer, P. (2002) Mean shift: a robust approach toward feature space analysis, IEEE transactions on pattern analysis and machine intelligence, Vol. 24, No. 5, pp 603-619. https://doi.org/10.1109/34.1000236
  10. Duda, R.O, Hart, P.E., & Stork, D.G. (2000) Pattern classification, Wiley-interscience.
  11. Mitchell, T.M. (1997) Machine learning, The McGraw-Hill companies, Inc.
  12. Raetch, G. (2004) A brief introduction into machine learning, 21st Chaos communication congress lectures and workshops, Germany.
  13. Walton, J. S. (1981). Close-Range Cine-Photogrammetry; A Generalized Technique for Quantifying Gross Human Motion. Ph. D. Dissertation, The Pennsylvania State University.
  14. Younes, L. (2005) Introduction to machine learning, Statistical (machine) learning lecture notes. (http://cis.jhu.edu/~younes/LectureNotes/machineLearning.pdf)