Self-supervision
ALSO: Automotive Lidar Self-supervision by Occupancy estimation
We propose a new self-supervised method for pre-training the backbone of deep perception models operating on point clouds. The core idea is to train the model on a pretext task which is the reconstruction of the surface on which the 3D points are sampled, and to use the underlying latent vectors as input to the perception head. The intuition is that if the network is able to reconstruct the scene surface, given only sparse input points, then it probably also captures some fragments of semantic information, that can be used to boost an actual perception task.
Alexandre Boulch
,
Corentin Sautier
,
Björn Michele
,
Gilles Puy
,
Renaud Marlet
Cite
DOI
ArXiv
Project page
Code
Cite
×