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Flex-Convolution Million-Scale Point-Cloud Learning Beyond Grid-Worlds

机译:超越网格世界的Flex卷积百万规模点云学习

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Traditional convolution layers are specifically designed to exploit the natural data representation of images - a fixed and regular grid. However, unstructured data like 3D point clouds containing irregular neighborhoods constantly breaks the grid-based data assumption. Therefore applying best-practices and design choices from 2D-image learning methods towards processing point clouds are not readily possible. In this work, we introduce a natural generalization flex-convolution of the conventional convolution layer along with an efficient GPU implementation. We demonstrate competitive performance on rather small benchmark sets using fewer parameters and lower memory consumption and obtain significant improvements on a million-scale real-world dataset. Ours is the first which allows to efficiently process 7 million points concurrently.
机译:传统卷积层经过专门设计,可利用图像的自然数据表示形式-固定和规则的网格。但是,非结构化数据(如包含不规则邻域的3D点云)不断打破基于网格的数据假设。因此,很难从2D图像学习方法向处理点云应用最佳实践和设计选择。在这项工作中,我们介绍了常规卷积层的自然泛化弹性卷积以及有效的GPU实现。我们展示了使用更少的参数和更低的内存消耗在相当小的基准集上的竞争性能,并在百万规模的真实数据集上获得了显着的改进。我们是第一个可以同时有效处理700万个积分的公司。

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