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Torch-Points3D: A Modular Multi-Task Framework for Reproducible Deep Learning on 3D Point Clouds

机译:Torch-PointS3D:用于3D点云层可重复的深度学习的模块化多任务框架

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We introduce Torch-Points3D, an open-source framework designed to facilitate the use of deep networks on 3D data. Its modular design, efficient implementation, and user-friendly interfaces make it a relevant tool for research and productization alike. Beyond multiple quality-of-life features, our goal is to standardize a higher level of transparency and reproducibility in 3D deep learning research, and to lower its barrier to entry. In this paper, we present the design principles of Torch-Points3D, as well as extensive benchmarks of multiple stateof- the-art algorithms and inference schemes across several datasets and tasks. The modularity of Torch-Points3D allows us to design fair and rigorous experimental protocols in which all methods are evaluated in the same conditions. The Torch-Points3D repository: https://github. com/nicolas-chaulet/torch-points3d.
机译:我们介绍了Torch-PointS3D,这是一个旨在促进在3D数据上使用深网络的开源框架。它的模块化设计,高效实现和用户友好的接口使其成为研究和生产化的相关工具。超出了多种生活质量特征,我们的目标是在3D深度学习研究中标准化更高水平的透明度和再现性,并降低其进入障碍。在本文中,我们介绍了TORCH-POINTS3D的设计原理,以及多个数据集和任务的多个状态 - 最新算法和推理方案的广泛基准。火炬点3d的模块化允许我们设计公平和严格的实验方案,其中所有方法在相同的条件下评估。 Torch-PointS3D存储库:https:// github。 COM / NICOLAS-CHAULET / TORCH-POINTS3D。

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