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기계시각에 의한 풋고추 자동 선별시스템 개발

Development of Automatic Sorting System for Green pepper Using Machine Vision

  • Cho, N.H. (National Institute of Agricultural Engineering) ;
  • Chang, D.I. (Division of Bioresources Engineering, Chungnam National University) ;
  • Lee, S.H. (Life & Technology Co.) ;
  • Hwang, H. (Dept. of Bio-Mechatronics Engineering, Life Science & Technology, Sungkyunkwan Suwon University) ;
  • Lee, Y.H. (National Institute of Agricultural Engineering) ;
  • Park, J.R. (National Institute of Agricultural Engineering)
  • 발행 : 2006.12.25

초록

Production of green pepper has been increased due to customer's preference and a projected ten-year boom in the industry in Korea. This study was carried out to develop an automatic grading and sorting system for green pepper using machine vision. The system consisted of a feeding mechanism, segregation section, an image inspection chamber, image processing section, system control section, grading section, and discharging section. Green peppers were separated and transported using a bowl feeder with a vibrator and a belt conveyor, respectively. Images were taken using color CCD cameras and a color frame grabber. An on-line grading algorithm was developed using Visual C/C++. The green peppers could be graded into four classes by activating air nozzles located at the discharging section. Length and curvature of each green pepper were measured while removing a stem of it. The first derivative of thickness profile was used to remove a stem area of segmented image of the pepper. While pepper is moving at 0.45 m/s, the accuracy of grading sorting for large, medium and small pepper are 86.0%, 81.3% and 90.6% respectively. Sorting performance was 121 kg/hour, and about five times better than manual sorting. The developed system was also economically feasible to grade and sort green peppers showing the cost about 40% lower than that of manual operations.

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참고문헌

  1. Hwang, H. and C. H. Lee. 1994. Automatic recognition of the front/back sides and stalk states for mushrooms (Lentinus Edodes L.). The Journal of the KSAM 19(2):24-137. (In Korean)
  2. Kuhn E. D., J. T. Ambrose and C. R. Unrath. 1982. A measurement technique for 'Delicious' apple shape. Hostscience 17(5):785-787
  3. Lee, S. H. 2000. Machine vision system for on-line extraction and quantification of appearance quality factors of apple. Ph. D dissertation, Seoul National Univ
  4. Nakano, K. and K. Takizawa. 1997. Studies on sorting systems for fruits and vegetables. part 2. Development of whole image data collecting system and detection of injured apples. J. Soc. Agr. Structures Jap. 28(1): 13-20
  5. Noh, S. H., K. H. Ryu and Y. W. Kim. 1990. Measurement of geometrical characteristics of fruit by image processing system. The Journal of the KSAM 15(1):23-31. (In Korean)
  6. Noh, S. H., J. W. Lee and I. G. Hwang. 1995. Fruit grading algorithms of multi-purpose fruit grader suing black & white image processing system. Journal of the Korean society for agricultural machinery 20(1):95-103. (In Korean)
  7. Yang, G. M, K. H. Choi., N. H. Cho and J. R. Park. 2005. Development of an automatic sweet potato sorting system using image processing. Journal of the Korean society for Biosystems Eng. 30(3): 172-178. (In Korea) https://doi.org/10.5307/JBE.2005.30.3.172
  8. 이현동, 윤홍선, 이원옥, 정 훈, 김우일. 2003. 신선채소의 품질 계량화 연구. 농업공학시험 연구보고서. pp.449-462