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Classification of 3D shape deviation using feature recognition operating on parameterization control points

机译:使用在参数化控制点上进行的特征识别对3D形状偏差进行分类

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摘要

A numerically efficient expert system for evaluation of 3D shape based on features extracted from the parameterization control points data-set is developed. Reference shapes are stored and periodically compared with current shapes at the level of windowed control-point data grids for the purpose of detection of 3D shape deviation. Classification heuristics for the respective types of deviations which operate on the control point sets rather than the original raw point clouds are developed based on operations of windowing, coordinate transformation, filtering and singular value decomposition (SVD)/ principal component analysis (PCA). The methodology is demonstrated with the cases of detecting and computationally recognizing local impact damage and cavities, narrow gaps or fatigue cracks and wear-based surface deterioration on a wind turbine blade.
机译:开发了一种数字高效的专家系统,用于基于从参数化控制点数据集中提取的特征来评估3D形状。为了检测3D形状偏差,在窗口控制点数据网格级别存储参考形状并将其与当前形状进行定期比较。基于加窗,坐标变换,滤波和奇异值分解(SVD)/主成分分析(PCA)的操作,开发了针对控制点集而不是原始原始点云的相应偏差类型的分类启发法。通过检测和计算识别风力涡轮机叶片上的局部冲击损伤和空腔,狭窄的间隙或疲劳裂纹以及基于磨损的表面劣化的案例,证明了该方法。

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