The algorithm for denoising point clouds of annular forgings based on Grassmann manifold and density clustering

Yucun Zhang, 安 王, Tao Kong, Xianbin Fu, Dongqing Fang
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Abstract

In the industrial sector, annular forgings serve as critical load-bearing components in mechanical equipment. During the production process, the precise measurement of the dimensional parameters of annular forgings is of paramount importance to ensure their quality and safety. However, owing to the influence of the measurement environment, the manufacturing process of annular forgings can introduce varying degrees of noise, resulting in inaccurate dimensional measurements. Therefore, researching methods for three-dimensional point cloud data to eliminate noise in annular forging point clouds is of significant importance for improving the accuracy of forging measurements. This paper presents a denoising approach for three-dimensional point cloud data of annular forgings based on Grassmann manifold and density clustering (GDAD). First, within the Grassmann manifold, the core points for density clustering are determined using density parameters. Second, density clustering is performed within the Grassmann manifold, with the Cauchy distance replacing the Euclidean distance to reduce the impact of noise and outliers on the analysis results. Finally, a search tree model was constructed to filter out incorrect point cloud clusters. The fusion of clustering results and the search tree model achieved denoising of point cloud data. Simulation experiments on annular forgings demonstrate that GDAD effectively eliminates edge noise in annular forgings and performs well in denoising point-cloud models with varying levels of noise intensity
基于格拉斯曼流形和密度聚类的环形锻件点云去噪算法
在工业领域,环形锻件是机械设备中的关键承重部件。在生产过程中,精确测量环形锻件的尺寸参数对确保其质量和安全至关重要。然而,由于测量环境的影响,环形锻件在生产过程中会产生不同程度的噪声,导致尺寸测量不准确。因此,研究三维点云数据消除环形锻件点云噪声的方法,对于提高锻件测量精度具有重要意义。本文提出了一种基于格拉斯曼流形和密度聚类(GDAD)的环形锻件三维点云数据去噪方法。首先,在格拉斯曼流形内,利用密度参数确定密度聚类的核心点。其次,在格拉斯曼流形内进行密度聚类,用考奇距离取代欧氏距离,以减少噪声和异常值对分析结果的影响。最后,构建了一个搜索树模型,以过滤掉不正确的点云聚类。聚类结果与搜索树模型的融合实现了点云数据的去噪。环形锻件的仿真实验表明,GDAD 能有效消除环形锻件的边缘噪声,并能很好地对不同噪声强度的点云模型进行去噪处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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