结构光三维重建中的背景强度去除

Raul Vargas, J. Pineda, A. Marrugo, L. Romero
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引用次数: 2

摘要

在傅里叶变换轮廓术中,执行滤波过程以将所需信息(一阶谱)与其他不需要的贡献(如背景分量(零阶谱))分离开来。但是,如果零阶光谱和高阶光谱分量干扰基谱,则会降低三维重建精度。本文测试了最近提出的两种去除背景强度的方法,以提高傅里叶变换轮廓术的重建精度。第一种方法是基于两次分段希尔伯特变换。第二种方法是基于二维经验模态分解,但分解是通过形态学操作进行的。在这项工作中,我们提出了一种新的贡献,即这两种方法的顺序组合,用于去除背景强度和其他接近一阶谱的不需要的频率,从而获得物体的三维地形。实验结果表明了该方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Background intensity removal in structured light three-dimensional reconstruction
In Fourier Transform Profilometry, a filtering procedure is performed to separate the desired information (first order spectrum) from other unwanted contributions such as the background component (zero-order spectrum). However, if the zero-order spectrum and the high order spectra component interfere the fundamental spectra, the 3D reconstruction precision decreases. In this paper, we test two recently proposed methods for removing the background intensity so as to improve Fourier Transform Profilometry reconstruction precision. The first method is based on the twice piece-wise Hilbert transform. The second is based on Bidimensional Empirical Mode Decomposition, but the decomposition is carried out by morphological operations In this work, we present as a novel contribution, the sequential combination of these two methods for removing the background intensity and other unwanted frequencies close to the first order spectrum, thus obtaining the 3D topography of the object. Encouraging experimental results show the advantage of the proposed method.
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