Dimensional inspecting system of thin sheet parts based on machine vision
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Dimensional inspecting system of thin sheet parts based on machine vision
Optics and Precision EngineeringVol. 15, Issue 1, Pages: 124-130(2007)
作者机构:
华中科技大学 机械科学与工程学院,湖北 武汉,430074
作者简介:
基金信息:
DOI:
CLC:TP242.6
Received:09 June 2006,
Revised:06 December 2006,
Published Online:30 January 2007,
Published:30 January 2007
稿件说明:
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WU Ji-gang, BIN Hong-zan. Dimensional inspecting system of thin sheet parts based on machine vision[J]. Optics and precision engineering, 2007, 15(1): 124-130.
DOI:
WU Ji-gang, BIN Hong-zan. Dimensional inspecting system of thin sheet parts based on machine vision[J]. Optics and precision engineering, 2007, 15(1): 124-130.DOI:
Dimensional inspecting system of thin sheet parts based on machine vision
taking the thin sheet part of Head Gimbal Assembly (HGA) of the computer hard disk as an object
a line type industrial camera is used to acquire the image of the inspected part by line scanning. The calibration algorithm is proposed based on the property of the line scanning
and a contour vectorization algorithm is developed. The dimensional parameters of inspecting part are gained adopting the contour vectorization algorithm in which the image has been processed by filtering
calibration
binarization
edge detection and thinning. The parametric errors are obtained to evaluate the quality of a thin sheet part comparing the dimensional parameters obtained from scanned image to the dimensional parameters obtained from reading the design DXF file. The experimental results indicate that the precision of contour vectorization can reach to 1 pixel
the inspection accuracy can reach to 1 μm
the average inspection time of every part is 1 s and the inspecting system is feasible.
关键词
Keywords
references
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