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Applied Optics

Applied Optics

APPLICATIONS-CENTERED RESEARCH IN OPTICS

  • Editor: Joseph N. Mait
  • Vol. 50, Iss. 19 — Jul. 1, 2011
  • pp: 3246–3253

Measurement of shaft diameters by machine vision

Guang Wei and Qingchang Tan  »View Author Affiliations


Applied Optics, Vol. 50, Issue 19, pp. 3246-3253 (2011)
http://dx.doi.org/10.1364/AO.50.003246


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Abstract

A machine vision method for accurately measuring the diameters of cylindrical shafts is presented. Perspective projection and the geometrical features of cylindrical shafts are modeled in order to enable accurate measurement of shaft diameters. Some of the model parameters are determined using a shaft of known diameter. The camera model itself includes radial and tangential distortions terms. Experiments were used to measure the accuracy of the proposed method and the effect of the position of the camera relative to the shaft, as well as other factors.

© 2011 Optical Society of America

OCIS Codes
(100.2000) Image processing : Digital image processing
(120.1880) Instrumentation, measurement, and metrology : Detection
(150.3040) Machine vision : Industrial inspection

ToC Category:
Image Processing

History
Original Manuscript: January 18, 2011
Revised Manuscript: April 12, 2011
Manuscript Accepted: May 4, 2011
Published: June 24, 2011

Citation
Guang Wei and Qingchang Tan, "Measurement of shaft diameters by machine vision," Appl. Opt. 50, 3246-3253 (2011)
http://www.opticsinfobase.org/ao/abstract.cfm?URI=ao-50-19-3246


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