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Convergence of the robust Gaussian regression filter applied to sanded wood surfaces

机译:应用于磨砂木材表面的鲁棒高斯回归滤波器的收敛性

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摘要

The quality of a sanded wood surface is represented by its roughness, which can be separated from the originally measured data by a procedure of filtering. Past experience has shown that the robust Gaussian regression filter (RGRF) is suitable for wood surfaces because it does not introduce distortions into the roughness profiles. The filter works iteratively until a user-defined convergence condition is met. The iterations stop when the difference between two consecutive profile median values becomes smaller than a given tolerance. This paper examines the convergence of RGRF when applied to wood surfaces sanded with various grit sizes in order to establish the tolerance value, which leads to convergence with the minimum number of iterations. This study was based on monitoring the variation of roughness parameters with the number of iterations for a range of tolerance values. A tolerance of 0.01 μm was found acceptable for filtering sanded wood surfaces.
机译:砂纸表面的质量由其粗糙度表示,可以通过过滤程序将其与原始测量数据分开。过去的经验表明,健壮的高斯回归滤波器(RGRF)适用于木材表面,因为它不会在粗糙度轮廓中引入失真。过滤器会反复工作,直到满足用户定义的收敛条件为止。当两个连续的轮廓中值之间的差变得小于给定的公差时,迭代将停止。本文研究了将RGRF应用于铺有各种粒度的木材表面的RGRF的收敛性,以确定公差值,从而以最小的迭代次数实现收敛。这项研究基于监视粗糙度参数的变化以及一系列公差值的迭代次数。发现过滤砂木表面的公差为0.01μm。

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  • 来源
    《Wood Science and Technology》 |2014年第6期|1139-1154|共16页
  • 作者单位

    Department of Wood Processing and Wood Products Design, Faculty of Wood Engineering, Transilvania University of Brasov, B-dul Eroilor nr. 29, 500036 Brasov, Romania;

    Trada Technology, Chiltern House, Stocking Lane, Hughenden Valley, High Wycombe, Buckinghamshire HP14 4ND, UK;

    Ecole Superieure du Bois, L'UNAM Universite, Rue Christian Pauc, BP 10605, 44306 Nantes Cedex 3, France;

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