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Noise-Robust Processing of Phase Dislocations using Combined Unwrapping and Sparse Inpainting with Dictionary Learning

机译:结合解缠和稀疏修补与词典学习相错位的噪声鲁棒处理

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The problem of phase unwrapping from a noisy and also incomplete wrapped phase map arises in many optics and image processing applications. In this work, we propose a noise-robust approach for processing regional phase dislocations. Our approach combines phase unwrapping and sparse-based inpainting with dictionary learning to recover the continuous phase map. The method is validated both using numerically simulated data with strong additive white Gaussian noise and phase dislocations; and experimental data from fringe projection profilometry. Comparisons with other phase inpainting method referred to as PULSI+INTERP, show the suitability of the proposed method for phase restoration even in extremely noisy phases. The error given by the proposed method on the highest level of noise (RMSE=0.0269 Rad) remains the smallest compared to the error given by PULSI+INTERP for noise-free data (RMSE=0.0332 Rad).
机译:在许多光学和图像处理应用中出现了从嘈杂的相位解缠以及不完整的包裹相位图的问题。在这项工作中,我们提出了一种噪声稳健的方法来处理区域相错位。我们的方法将相位展开和基于稀疏的修补与字典学习相结合,以恢复连续相位图。使用具有强加性高斯白高斯噪声和相位错位的数值模拟数据验证了该方法的有效性。和来自条纹投影轮廓仪的实验数据。与其他称为PULSI + INTERP的相位修复方法的比较表明,即使在嘈杂的相位下,该方法也适用于相位修复。与PULSI + INTERP给出的无噪声数据的误差(RMSE = 0.0332 Rad)相比,所提出的方法在最高噪声水平(RMSE = 0.0269 Rad)上给出的误差仍然最小。

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