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Learning to Optimally Segment Point Clouds

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arxiv 1912.04976 v1 pith:2QB3R3MG submitted 2019-12-10 cs.RO cs.CV

Learning to Optimally Segment Point Clouds

classification cs.RO cs.CV
keywords segmentationcloudspointalgorithmalgorithmscandidatedata-drivenefficient
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We focus on the problem of class-agnostic instance segmentation of LiDAR point clouds. We propose an approach that combines graph-theoretic search with data-driven learning: it searches over a set of candidate segmentations and returns one where individual segments score well according to a data-driven point-based model of "objectness". We prove that if we score a segmentation by the worst objectness among its individual segments, there is an efficient algorithm that finds the optimal worst-case segmentation among an exponentially large number of candidate segmentations. We also present an efficient algorithm for the average-case. For evaluation, we repurpose KITTI 3D detection as a segmentation benchmark and empirically demonstrate that our algorithms significantly outperform past bottom-up segmentation approaches and top-down object-based algorithms on segmenting point clouds.

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