Benutzer: Gast  Login
Dokumenttyp:
Verschiedenes
Autor(en):
Gasperini, S.; Mahani, M.-A. N.; Marcos-Ramiro, A.; Navab, N.; Tombari, F.
Titel:
Panoster: End-to-end Panoptic Segmentation of LiDAR Point Clouds
Abstract:
Panoptic segmentation has recently unified semantic and instance segmentation, previously addressed separately, thus taking a step further towards creating more comprehensive and efficient perception systems. In this paper, we present Panoster, a novel proposal-free panoptic segmentation method for point clouds. Unlike previous approaches relying on several steps to group pixels or points into objects, Panoster proposes a simplified framework incorporating a learning-based clustering solution to...     »
Stichworte:
ICRA,Deep Learning,Clustering,Autonomous Driving,Panoptic Segmentation,LiDAR,point cloud
Jahr:
2020
Sprache:
de
 BibTeX