Sun Qi, Fu Shujun
Appl Opt. 2017 Sep 20;56(27):7708-7717. doi: 10.1364/AO.56.007708.
Fringe orientation is an important feature of fringe patterns and has a wide range of applications such as guiding fringe pattern filtering, phase unwrapping, and abstraction. Estimating fringe orientation is a basic task for subsequent processing of fringe patterns. However, various noise, singular and obscure points, and orientation data degeneration lead to inaccurate calculations of fringe orientation. Thus, to deepen the understanding of orientation estimation and to better guide orientation estimation in fringe pattern processing, some advanced gradient-field-based orientation estimation methods are compared and analyzed. At the same time, following the ideas of smoothing regularization and computing of bigger gradient fields, a regularized singular-value decomposition (RSVD) technique is proposed for fringe orientation estimation. To compare the performance of these gradient-field-based methods, quantitative results and visual effect maps of orientation estimation are given on simulated and real fringe patterns that demonstrate that the RSVD produces the best estimation results at a cost of relatively less time.
条纹方向是条纹图案的一个重要特征,具有广泛的应用,如引导条纹图案滤波、相位展开和提取。估计条纹方向是条纹图案后续处理的一项基本任务。然而,各种噪声、奇异点和模糊点以及方向数据退化会导致条纹方向的计算不准确。因此,为了加深对方向估计的理解并更好地指导条纹图案处理中的方向估计,对一些先进的基于梯度场的方向估计方法进行了比较和分析。同时,遵循平滑正则化和更大梯度场计算的思路,提出了一种用于条纹方向估计的正则化奇异值分解(RSVD)技术。为了比较这些基于梯度场的方法的性能,在模拟和真实条纹图案上给出了方向估计的定量结果和视觉效果图,结果表明RSVD以相对较少的时间成本产生了最佳估计结果。