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3D-PSRNet: Part Segmented 3D Point Cloud Reconstruction from a Single Image

机译:3D-PSRNET:部分分段3D点云重建从单个图像

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摘要

We propose a mechanism to reconstruct part annotated 3D point clouds of objects given just a single input image. We demonstrate that jointly training for both reconstruction and segmentation leads to improved performance in both the tasks, when compared to training for each task individually. The key idea is to propagate information from each task so as to aid the other during the training procedure. Towards this end, we introduce a location-aware segmentation loss in the training regime. We empirically show the effectiveness of the proposed loss in generating more faithful part reconstructions while also improving segmentation accuracy. We thoroughly evaluate the proposed approach on different object categories from the ShapeNet dataset to obtain improved results in reconstruction as well as segmentation. Codes are available at https://github.com/val-iisc/3d-psrnet.
机译:我们提出了一种在仅为单个输入图像中重建部分注释的对象的零件被注释的3D点云的机制。我们展示了与单独任务的培训相比,重建和分割的共同培训导致两种任务中的性能提高。关键的想法是传播来自每个任务的信息,以便在培训过程中帮助另一个。为此,我们在培训制度中引入了一个位置感知分割损失。我们经验展现了拟议损失在产生更忠实的部分重建时的有效性,同时还提高了分割准确性。我们彻底评估了ShapEnet​​ DataSet的不同对象类别上的提出方法,以获得改进的重建结果以及分段。代码在https://github.com/val-iisc/3d-psrnet上获得。

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