Project to Adapt
Domain Adaptation for Depth Completion from Noisy and Sparse Sensor Data
Article Ecrit par: Busam, Benjamin ; Mikolajczyk, Krystian ; Lopez-Rodriguez, Adrian ;
Résumé: Depth completion aims to predict a dense depth map from a sparse depth input. The acquisition of dense ground-truth annotations for depth completion settings can be difficult and, at the same time, a significant domain gap between real LiDAR measurements and synthetic data has prevented from successful training of models in virtual settings. We propose a domain adaptation approach for sparse-to-dense depth completion that is trained from synthetic data, without annotations in the real domain or additional sensors. Our approach simulates the real sensor noise in an RGB + LiDAR set-up, and consists of three modules: simulating the real LiDAR input in the synthetic domain via projections, filtering the real noisy LiDAR for supervision and adapting the synthetic RGB image using a CycleGAN approach. We extensively evaluate these modules in the KITTI depth completion benchmark.
Langue:
Anglais
Thème
Informatique
Mots clés:
Sensor fusion
Domain adaptation
Lidar
Depth completion