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3D Instance Segmentation via Multi-Task Metric Learning

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arxiv 1906.08650 v2 pith:363GGNWG submitted 2019-06-20 cs.CV

3D Instance Segmentation via Multi-Task Metric Learning

classification cs.CV
keywords instancesegmentationgoalinformationlearnbeenfirstlabel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose a novel method for instance label segmentation of dense 3D voxel grids. We target volumetric scene representations, which have been acquired with depth sensors or multi-view stereo methods and which have been processed with semantic 3D reconstruction or scene completion methods. The main task is to learn shape information about individual object instances in order to accurately separate them, including connected and incompletely scanned objects. We solve the 3D instance-labeling problem with a multi-task learning strategy. The first goal is to learn an abstract feature embedding, which groups voxels with the same instance label close to each other while separating clusters with different instance labels from each other. The second goal is to learn instance information by densely estimating directional information of the instance's center of mass for each voxel. This is particularly useful to find instance boundaries in the clustering post-processing step, as well as, for scoring the segmentation quality for the first goal. Both synthetic and real-world experiments demonstrate the viability and merits of our approach. In fact, it achieves state-of-the-art performance on the ScanNet 3D instance segmentation benchmark.

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