首页> 外文期刊>Journal of the Optical Society of America, A. Optics, image science, and vision >Wavefront reconstruction in phase-shifting interferometry via sparse coding of amplitude and absolute phase
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Wavefront reconstruction in phase-shifting interferometry via sparse coding of amplitude and absolute phase

机译:通过幅度和绝对相位的稀疏编码来进行相移干涉术中的波前重建

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摘要

Phase-shifting interferometry is a coherent optical method that combines high accuracy with high measurement speeds. This technique is therefore desirable in many applications such as the efficient industrial quality inspection process. However, despite its advantageous properties, the inference of the object amplitude and the phase, herein termed wavefront reconstruction, is not a trivial task owing to the Poissonian noise associated with the measurement process and to the 2π phase periodicity of the observation mechanism. In this paper, we formulate the wavefront reconstruction as an inverse problem, where the amplitude and the absolute phase are assumed to admit sparse linear representations in suitable sparsifying transforms (dictionaries). Sparse modeling is a form of regularization of inverse problems which, in the case of the absolute phase, is not available to the conventional wavefront reconstruction techniques, as only interferometric phase modulo-2π is considered therein. The developed sparse modeling of the absolute phase solves two different problems: accuracy of the interferometric (wrapped) phase reconstruction and simultaneous phase unwrapping. Based on this rationale, we introduce the sparse phase and amplitude reconstruction (SPAR) algorithm. SPAR takes into full consideration the Poissonian (photon counting) measurements and uses the data-adaptive block-matching 3D (BM3D) frames as a sparse representation for the amplitude and for the absolute phase. SPAR effectiveness is documented by comparing its performance with that of competitors in a series of experiments.
机译:相移干涉术是一种相干光学方法,将高精度与高测量速度结合在一起。因此,该技术在许多应用中都是理想的,例如有效的工业质量检查过程。然而,尽管具有有利的性质,但是由于与测量过程相关的泊松噪声以及观察机构的2π相位周期性,所以推断物体振幅和相位并不是微不足道的任务,在此称为波前重构。在本文中,我们将波前重建公式化为一个反问题,其中假设振幅和绝对相位在适当的稀疏变换(字典)中接受稀疏线性表示。稀疏建模是反问题正则化的一种形式,在绝对相位的情况下,常规波阵面重建技术无法使用,因为其中仅考虑了2π模的干涉相位。已开发的绝对相位稀疏模型解决了两个不同的问题:干涉(包裹)相位重构的准确性和同时相位展开的准确性。基于此原理,我们介绍了稀疏相位和幅度重建(SPAR)算法。 SPAR充分考虑了泊松(光子计数)测量,并使用数据自适应块匹配3D(BM3D)帧作为幅度和绝对相位的稀疏表示。通过在一系列实验中将SPAR的性能与竞争对手的性能进行比较,可以证明SPAR的有效性。

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