Domain Adaptation in LiDAR Semantic Segmentation via Alternating Skip Connections and Hybrid Learning (2201.05585v2)
Abstract: In this paper we address the challenging problem of domain adaptation in LiDAR semantic segmentation. We consider the setting where we have a fully-labeled data set from source domain and a target domain with a few labeled and many unlabeled examples. We propose a domain adaption framework that mitigates the issue of domain shift and produces appealing performance on the target domain. To this end, we develop a GAN-based image-to-image translation engine that has generators with alternating connections, and couple it with a state-of-the-art LiDAR semantic segmentation network. Our framework is hybrid in nature in the sense that our model learning is composed of self-supervision, semi-supervision and unsupervised learning. Extensive experiments on benchmark LiDAR semantic segmentation data sets demonstrate that our method achieves superior performance in comparison to strong baselines and prior arts.
- Eduardo R. Corral-Soto (6 papers)
- Mrigank Rochan (20 papers)
- Yannis Y. He (2 papers)
- Shubhra Aich (15 papers)
- Yang Liu (2253 papers)
- Liu Bingbing (8 papers)