Diffuser:用于语义场景分割的多视图2d到3d标签扩散

R. Mascaro, L. Teixeira, M. Chli
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引用次数: 14

摘要

语义三维场景理解是计算机视觉和机器人技术中的一个基本问题。尽管深度学习最近取得了一些进展,但其在多领域3D语义分割中的应用通常受到缺乏足够广泛的注释3D数据集的影响。相反,2D神经网络受益于现有的大量训练数据,可以应用于更广泛的环境,有时甚至不需要再训练。在本文中,我们提出了“扩散用户”,这是一种新颖而高效的多视图融合框架,它利用场景的多个图像视图的2D语义分割来产生一致且精细的3D分割。我们将3D分割任务描述为图上的换向标签扩散问题,其中使用多视图和3D几何属性将语义标签从2D图像空间传播到3D地图。在室内和室外具有挑战性的数据集上进行的实验证明了我们的方法的多功能性,以及它对全局3D场景标记和单个RGB-D帧分割的有效性。此外,与几种最先进的多视图方法中采用的概率融合方法相比,我们显示了3D分割精度的显着提高,并且计算开销很小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diffuser: Multi-View 2D-to-3D Label Diffusion for Semantic Scene Segmentation
Semantic 3D scene understanding is a fundamental problem in computer vision and robotics. Despite recent advances in deep learning, its application to multi-domain 3D semantic segmentation typically suffers from the lack of extensive enough annotated 3D datasets. On the contrary, 2D neural networks benefit from existing large amounts of training data and can be applied to a wider variety of environments, sometimes even without need for retraining. In this paper, we present ‘Diffuser’, a novel and efficient multi-view fusion framework that leverages 2D semantic segmentation of multiple image views of a scene to produce a consistent and refined 3D segmentation. We formulate the 3D segmentation task as a transductive label diffusion problem on a graph, where multi-view and 3D geometric properties are used to propagate semantic labels from the 2D image space to the 3D map. Experiments conducted on indoor and outdoor challenging datasets demonstrate the versatility of our approach, as well as its effectiveness for both global 3D scene labeling and single RGB-D frame segmentation. Furthermore, we show a significant increase in 3D segmentation accuracy compared to probabilistic fusion methods employed in several state-of-the-art multi-view approaches, with little computational overhead.
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