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Gaussian process machine learning-based surface extrapolation method for improvement of the edge effect in surface filtering

机译:高斯工艺机基的曲面外推方法,用于改善表面滤波中的边缘效应

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摘要

Filtering for signal and data is an important technology to reduce and/or remove noise signal for further extraction of desired information. However, it is well known that significant distortions may occur in the boundary areas of the filtered data because there is no sufficient data to be processed. This drawback largely affects the accuracy of topographic measurements and characterizations of precision freeform surfaces, such as freeform optics. To address this issue, a Gaussian process machine learning-based method is presented for extrapolation of the measured surface to an extended measurement area with high accuracy prior to filtering the surface. With the extrapolated data, the edge distortion can be effectively reduced. The effectiveness of this method was evaluated using both simulated and experimental data. Successful implementation of the proposed method not only addresses the issue in surface filtering but also provides a promising solution for numerous applications involving filtering processes. (C) 2019 Elsevier Ltd. All rights reserved.
机译:滤波信号和数据是减少和/或去除噪声信号以进一步提取所需信息的重要技术。然而,众所周知,由于没有足够的数据,可以在滤波数据的边界区域中发生显着的失真。该缺点在很大程度上影响了精密自由形状表面的地形测量和表征的准确性,例如自由形式光学器件。为了解决这个问题,在过滤表面之前,提出了一种基于高斯工艺机器学习的方法,以高精度地提出测量表面到扩展测量区域。利用外推数据,可以有效地减少边缘失真。使用模拟和实验数据评估该方法的有效性。成功实施该方法不仅解决了表面过滤中的问题,而且为涉及过滤过程的许多应用提供了一个有希望的解决方案。 (c)2019年elestvier有限公司保留所有权利。

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