• Title/Summary/Keyword: Gray-level Run Lengths

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Extraordinary State Classification of Grinding Wheel Surface Based on Gray-level Run Lengths (명암도 작용 길이에 따른 연삭 숫돌면의 이상 현상 분류)

  • 유은이;김광래
    • Transactions of the Korean Society of Machine Tool Engineers
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    • v.13 no.3
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    • pp.24-29
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    • 2004
  • The grinding process plays a key role which decides the quality of a product finally. But the grinding process is very irregular, so it is very difficult to analyse the process accurately. Therefore it is very important in the aspect of precision and automation to reduce the idle time and to decide the proper dressing time by watching. In this study, we choose the method which can be observed directly by using of computer vision and then apply pattern classification technique to the method of measuring the wheel surface. Pattern classification technique is proper to analyse complicated surface image. We observe the change of the wheel surface by using of the gray level run lengths which are representative in this technique.

Ultrasonic image diagnosis using pattern recognition (패턴인식을 이용한 초음파 화상의 진단)

  • Choi, K.C.;Kim, S.I.;Lee, D.S.
    • Proceedings of the KOSOMBE Conference
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    • v.1991 no.11
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    • pp.57-60
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    • 1991
  • A new approach to texture classification for ultrasound liver diagnosis using run difference matrix was developed. The run difference matrix consists of the gray level difference along with distance. From this run difference matrix, we defined several parameters such as LDE, LDEL, NUF, SMO, SMG, SHP etc. and three vectors namely DOD, DGD and DAD. Each parameter value calculated in fatty cirrhotic, chronic hepatitic and normal liver mage was plotted in two dimensional plane. We compared our results with run length method. There are several advantages of run difference matrix method over the run lengths. 1) It is more sensitive to small difference of gray level distribution. 2) The parameters provide more statistically significant value. Images were classified with the extracted parameters to each diseases using neural networks. In preliminary clinical exprements, this approach showed satisfying results.

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Extraordinary State Discrimination of Grinding Wheel Surface Using Pattern Classification (패턴 분류법을 이용한 연삭 숫돌면의 이상상태 판별)

  • 유은이
    • Proceedings of the Korean Society of Machine Tool Engineers Conference
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    • 2000.04a
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    • pp.447-452
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    • 2000
  • The grinding plays a key role which decide the quality of a product finally. But the grinding process is very irregular, so it is very difficult to analyse the process accurately. Therefore it is very important in the aspect of precision and automation to reduce the idle time and to decide the proper dressing time by visualizing. In this study, we choose the direct method of observation by making use of computer vision, and apply pattern classification technique to the method of measuring the wheel surface. Pattern classification technique is proper to analyse complex surface image. We observe the change of the wheel surface by making use of the gray level run lengths which are representative prince in this technique.

  • PDF