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Towards synthesized training data for semantic segmentation of mobile laser scanning point clouds: Generating level crossings from real and synthetic point cloud samples

机译:对移动激光扫描点云的语义分割的综合培训数据:从真实和合成点云样本产生水平交叉

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This paper presents a method for synthesizing mobile laser scanning point clouds of railroad level crossings that can be used to train neural networks for point cloud segmentation. The method arranges point cloud samples representing individual objects into new scenes using a set of simple placement rules. The point cloud samples can be cropped from real point clouds, created from 3D mesh models, or procedurally generated using mathematical functions. The scenes can consist of one or more types of samples, making it possible to combine real and synthetic data. The findings show that a network trained on scenes generated from real point cloud samples resulted in a better overall F1-score compared to a network that was trained using real scenes. Also, the performance of a network trained on a very small amount of real scenes can be improved by adding fully synthetic scenes to the training data.
机译:本文介绍了一种用于合成铁路级交叉口的移动激光扫描点云的方法,这些交叉路口可用于训练点云分割的神经网络。 该方法将表示单个对象的点云样本设置为使用一组简单的放置规则将表示单个对象的点呈现为新场景。 点云样本可以从真实点云裁剪,从3D网状模型创建,或者使用数学函数生成的程序生成。 场景可以包括一个或多种类型的样本,使得可以组合实际和合成数据。 结果表明,与使用真实场景训练的网络相比,在真实点云样本生成的场景上培训的网络导致了更好的整体F1分数。 此外,通过将完全合成场景添加到训练数据,可以提高对非常少量的真实场景训练的网络的性能。

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