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SGPN: Similarity Group Proposal Network for 3D Point Cloud Instance Segmentation

机译:SGPN:3D点云实例细分的相似性组建议网络

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We introduce Similarity Group Proposal Network (SGPN), a simple and intuitive deep learning framework for 3D object instance segmentation on point clouds. SGPN uses a single network to predict point grouping proposals and a corresponding semantic class for each proposal, from which we can directly extract instance segmentation results. Important to the effectiveness of SGPN is its novel representation of 3D instance segmentation results in the form of a similarity matrix that indicates the similarity between each pair of points in embedded feature space, thus producing an accurate grouping proposal for each point. Experimental results on various 3D scenes show the effectiveness of our method on 3D instance segmentation, and we also evaluate the capability of SGPN to improve 3D object detection and semantic segmentation results. We also demonstrate its flexibility by seamlessly incorporating 2D CNN features into the framework to boost performance.
机译:我们介绍了相似性组提议网络(SGPN),这是一种用于点云上3D对象实例细分的简单直观的深度学习框架。 SGPN使用单个网络来预测点分组建议和每个建议的对应语义类,我们可以从中直接提取实例分割结果。对于SGPN的有效性而言,重要的是它以相似度矩阵的形式新颖地表示3D实例分割结果,该矩阵指示嵌入式特征空间中每对点之间的相似性,从而为每个点提供准确的分组建议。在各种3D场景上的实验结果证明了我们的方法在3D实例分割中的有效性,并且我们还评估了SGPN改善3D对象检测和语义分割结果的能力。我们还通过将2D CNN功能无缝集成到框架中以提高性能来证明其灵活性。

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