Effective Utilisation of Multiple Open-Source Datasets to Improve Generalisation Performance of Point Cloud Segmentation Models

Matthew Howe, Boris Repasky, Timothy Payne
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Abstract

Utilising a single point cloud segmentation model can be desirable in situations where point cloud source, quality, and content is unknown. In these situations the segmentation model must be able to handle these variations with predictable and consistent results. Although deep learning can segment point clouds accurately it often suffers with generalisation, adapting poorly to data which is different than the data it was trained on. To address this issue, we propose to utilise multiple available open source fully annotated datasets to train and test models that are better able to generalise. The open-source datasets we utilise are DublinCity, DALES, ISPRS, Swiss3DCities, SensatUrban, SUM, and H3D [5], [11], [10], [1], [3], [2], [6]. In this paper we discuss the combination of these datasets into a simple training set and challenging test set which evaluates multiple aspects of the generalisation task. We show that a naive combination and training produces improved results as expected. We also show that an improved sampling strategy which decreases sampling variations increases the generalisation performance substantially on top of this. Experiments to find the contributing factor of which variables give this performance boost found that none individually boost performance and rather it is the consistency of samples the model is evaluated on which yields this improvement.
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有效利用多个开源数据集提高点云分割模型的泛化性能
在点云来源、质量和内容未知的情况下,利用单点云分割模型是可取的。在这些情况下,分割模型必须能够以可预测和一致的结果处理这些变化。虽然深度学习可以准确地分割点云,但它经常受到泛化的影响,对与训练数据不同的数据适应能力差。为了解决这个问题,我们建议利用多个可用的开源完全注释数据集来训练和测试能够更好地泛化的模型。我们使用的开源数据集是DublinCity、DALES、ISPRS、Swiss3DCities、SensatUrban、SUM和H3D[5]、[11]、[10]、[1]、[3]、[2]、[6]。在本文中,我们讨论了将这些数据集组合成一个简单的训练集和具有挑战性的测试集,以评估泛化任务的多个方面。我们证明了一个朴素的组合和训练产生了预期的改进结果。我们还表明,改进的采样策略减少了采样变化,在此基础上大大提高了泛化性能。通过实验发现,没有一个变量可以单独提高性能,而是评估模型的样本的一致性产生了这种改进。
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