外文翻译---通过广义条纹投影轮廓分析模型来选择最优滤波偏估计
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1、PDF外文:http:/ 附录 A 外文翻译 -原文部分 Optimal Filtering based Shift Estimation for Fringe Pattern Profilometry by Generalized Analysis Model Abstract-This paper presents a new algorithm for fringe pattern parofilometry by utilizing generalized analysis model, called optimal filtering based shift
2、estimation (OFSE) method, which provides much lower complexity compared with traditional methods. Meanwhile, as OFSE is derived based on the generalized analysis model, the reconstruction results will not be influenced by the nonlinearity of fringe pattern projection and acquisition system. The effi
3、ciency of the proposed OFSE method is confirmed by simulation results, which show that the accuracy of three-dimensional reconstruction using digital fringe pattern profilemetry technique can be much improved and the computational complexity can be significantly reduced. 1.INTRODUCTION Fringe patter
4、n profilometry (FPP) is one of the most popular non-contact approaches to measuring three-dimensional object surfaces. With FPP, a Ronchi grating or sinusoidal grating is projected onto a three-dimensional diffuse surface, the height distribution of which deforms the projected fringe patterns and mo
5、dulates them in phase domain. Hence by retrieving the phase difference between the original and deformed fringe patterns, three-dimensional profilometry can be achieved. In order to obtain phase maps from original and deformed fringe patterns, research contributed various analysis methods, inc
6、luding Fourier Transform Profilometry (FTP)1,2, Phase Shifting Profilometry (PSP)7, Spatial Phase Detection(SPD)10, Phase Locked Loop(PLL)11 and other analysis methods12,13. In recent years, because of the simplicity and controllability, digital projectors have been widely used to yield fringe patte
7、rns for implementing FPP 14-17. However, when generating fringe patterns by using digital projectors, nonlinear distortions are unavoidably introduced and result in visible measurement errors 16,17, which has been theoretically analyzed by Hu et al.17.In order to eliminate the reconstruction errors
8、caused by nonlinear distortions, Guo et al.16 proposed a gamma correction based method to recover the distorted fringes. However, with this method, the precondition is that the projection system strictly matches the gamma distortion model. Moreover, as gamma coefficient varies with projection system
9、s, the correction coefficient has to be estimated for different systems or whenever the system condition changes.Hu et al. introduced a generalized analysis model, which revealed the essential relationship between the projected and the deformed fringe patterns. This model does not depend on the nonl
10、inear characteristics of projection systems17. Based on the mathematical model, Gradient-based Shift Estimation(GSE) algorithm17 and inverse function analysis(IFA) method18 have been presented to reconstruct accurate profiles from nonlinearly distorted fringe patterns. However, with IFA algorithm, t
11、he performance of IFA highly depends on the degree of the polynomial selected for curve fitting and in order to achieve high accuracy, higher degree polynomials has to be used, which accordingly leads to higher computational complexity. On the other hand, with GSE method, the height distribution of
12、the surface is calculated point-by-point, but not to simultaneously reconstruct the whole object profile. The height distribution of each point on the object surface has to be individually and independently measured, which results in substantial computation if the captured image has got relatively h
13、igh resolution. In addition, although GSE has a very strong ability to obtain precise surfaces without prior-knowledge of projection system, for some points of the surface, it needs very small learning rates and accordingly many times of iterations to achieve desired accuracy. In order to reduce com
14、putational complexity, in this paper ,we present a novel shift estimation approach to fringe pattern profilometry based on the design of optimal filters ,called optimal filtering based shift estimation(OFSE) algorithm. The proposed OFSE converts the original shift estimation problem into a new probl
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