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A COMPARISON OF SURFACELET-BASED METHODS FOR RECOGNIZING LINEAR GEOMETRIC FEATURES IN MATERIAL MICROSTRUCTURE

机译:基于表面小波的材料微观结构中线性几何特征识别方法的比较

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Integration of material information and mechanical properties with geometry enables many product development activities, including design, analysis, and manufacturing. To integrate material information into CAD systems, geometric features of material microstructure must be recognized and represented, which is the focus of this paper. Linear microstructure features, such as fibers or grain boundaries, can be found computationally from microstructure images using surfacelet based methods, which include the Radon or Radon-like transform followed by a wavelet transform. By finding peaks in the transform results, linear features can be recognized and characterized by length, orientation, and position. The challenge is that often a feature will be imprecisely represented in the transformed parameter space. In this paper, we investigate several variations of the surfacelet based feature recognition methods, including masks, clustering methods, and whether to recognize features in the Radon or wavelet transform. These variations will be investigated to identify their strengths and limitations on a metal alloy and reinforced polymer microstructures.
机译:将材料信息和机械性能与几何形状集成在一起,可以进行许多产品开发活动,包括设计,分析和制造。要将材料信息集成到CAD系统中,必须识别和表示材料微观结构的几何特征,这是本文的重点。线性微结构特征(例如纤维或晶界)可以使用基于表面波的方法从微结构图像中计算得出,这些方法包括Radon或类Radon变换,然后是小波变换。通过在变换结果中找到峰值,可以识别线性特征并通过长度,方向和位置进行表征。挑战在于,经常会在转换后的参数空间中不精确地表示特征。在本文中,我们研究了基于表面波的特征识别方法的几种变体,包括蒙版,聚类方法以及是否在Radon或小波变换中识别特征。将研究这些变化,以确定它们在金属合金和增强聚合物微结构上的强度和局限性。

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