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POINT CLOUD DENOISING METHOD BASED ON DEEP LEARNING FOR AIRCRAFT PART

机译:基于深度学习飞机零件的点云去噪方法

摘要

The present disclosure provides a point cloud denoising method based on deep learning for an aircraft part, in which different degrees of Gaussian noise are added based on a theoretical data model of the aircraft part, a heightmap for each point in the theoretical data model is generated, and a deep learning training set is constructed. A deep learning network is trained based on the constructed deep learning training set, to obtain a deep learning network model. A real aircraft part is scanned via a laser scanner to obtain measured point cloud data. The normal information of the measured point cloud is predicted based on the trained deep learning network model. Based on the predicted normal information, a position of each point in the measured point cloud data is further updated, thereby completing denoising of the measured point cloud data.
机译:本公开提供了一种基于对飞机部分的深度学习的点云去噪方法,其中基于飞机部的理论数据模型添加了不同程度的高斯噪声,生成了理论数据模型中的每个点的高度图 建立了深度学习培训集。 深度学习网络是根据构造的深度学习培训集进行培训,以获得深度学习网络模型。 通过激光扫描仪扫描真正的飞机部件以获得测量的点云数据。 基于训练有素的深度学习网络模型预测测量点云的正常信息。 基于预测的正常信息,进一步更新了测量点云数据中的每个点的位置,从而完成测量点云数据的去噪。

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