Application of 3D image recovering technology based on radial basic function network to engraving
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Application of 3D image recovering technology based on radial basic function network to engraving
Optics and Precision EngineeringVol. 15, Issue 1, Pages: 117-123(2007)
作者机构:
华侨大学 机电及自动化学院, 福建 泉州 362021
作者简介:
基金信息:
DOI:
CLC:TP391.4
Received:16 April 2006,
Revised:12 November 2006,
Published Online:30 January 2007,
Published:30 January 2007
稿件说明:
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XIE Ming-hong. Application of 3D image recovering technology based on radial basic function network to engraving[J]. Optics and precision engineering, 2007, 15(1): 117-123.
DOI:
XIE Ming-hong. Application of 3D image recovering technology based on radial basic function network to engraving[J]. Optics and precision engineering, 2007, 15(1): 117-123.DOI:
Application of 3D image recovering technology based on radial basic function network to engraving
The purpose of the 3D image recovery technique is that the height of a surface is recovered by shape from shading on single image to generate the curve face of 3D object. This article puts forwards a new method of 3D image recovering based on the Radial Basis Function(RBF) network model. The curve face formula has been constructed
in which the partial derivates of output to two inputs satisfy to the equation of reflection function and the gray value is known. According to the inhibit condition between reflection function and the gray value
adjusting power factor formula and the center and width of the radial basis function to satisfy the equation of reflection function for every point of the curve face constructed
the whole curve face is recovered. This method does not need smooth control and integral control
and can get a continuous solution. The experimental results of different methods on synthesizing for example ball and vase show that the precision of max error by this method is enhanced 1~4 times
and the precision of average error by this method is enhanced 5~12 times
and the recovered curve face has consecution and smoothness. It can also recover the height of each network point in the picture
automatically interpolate any network point. It is shown that this method is suitable for the curved face of the picture for any reflection model
easy to post handle and make tool path from curve face recovered and to be engraved.
关键词
Keywords
references
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