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Lidar Panoptic Segmentation and Tracking without Bells and Whistles

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arxiv 2310.12464 v1 pith:4ZFWV4RD submitted 2023-10-19 cs.CV cs.RO

Lidar Panoptic Segmentation and Tracking without Bells and Whistles

classification cs.CV cs.RO
keywords lidarobjectsegmentationnetworkpanoptictrackingannotationscentroids
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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State-of-the-art lidar panoptic segmentation (LPS) methods follow bottom-up segmentation-centric fashion wherein they build upon semantic segmentation networks by utilizing clustering to obtain object instances. In this paper, we re-think this approach and propose a surprisingly simple yet effective detection-centric network for both LPS and tracking. Our network is modular by design and optimized for all aspects of both the panoptic segmentation and tracking task. One of the core components of our network is the object instance detection branch, which we train using point-level (modal) annotations, as available in segmentation-centric datasets. In the absence of amodal (cuboid) annotations, we regress modal centroids and object extent using trajectory-level supervision that provides information about object size, which cannot be inferred from single scans due to occlusions and the sparse nature of the lidar data. We obtain fine-grained instance segments by learning to associate lidar points with detected centroids. We evaluate our method on several 3D/4D LPS benchmarks and observe that our model establishes a new state-of-the-art among open-sourced models, outperforming recent query-based models.

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