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Simulation-to-Reality domain adaptation for offline 3D object annotation on pointclouds with correlation alignment

Authors :
Zhang, Weishuang
Kiran, B Ravi
Gauthier, Thomas
Mazouz, Yanis
Steger, Theo
Publication Year :
2022

Abstract

Annotating objects with 3D bounding boxes in LiDAR pointclouds is a costly human driven process in an autonomous driving perception system. In this paper, we present a method to semi-automatically annotate real-world pointclouds collected by deployment vehicles using simulated data. We train a 3D object detector model on labeled simulated data from CARLA jointly with real world pointclouds from our target vehicle. The supervised object detection loss is augmented with a CORAL loss term to reduce the distance between labeled simulated and unlabeled real pointcloud feature representations. The goal here is to learn representations that are invariant to simulated (labeled) and real-world (unlabeled) target domains. We also provide an updated survey on domain adaptation methods for pointclouds.<br />Comment: Accepted at IMPROVE 2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2202.02666
Document Type :
Working Paper