LiDAR-BEV Semantic Segmentation

Dense Top-View Semantic Segmentation with LiDAR Point Clouds 

Accurate semantic scene understanding of the surrounding environment is a challenge for autonomous driving systems. Recent LiDAR-based semantic segmentation methods mainly focus on predicting point-wise semantic classes, which cannot be directly used before the further densification process. In this paper, we propose a cylindrical convolution network for dense semantic understanding in the top-view LiDAR data representation. 3D LiDAR point clouds are divided into cylindrical partitions before feeding to the network, where semantic segmentation is conducted in the cylindrical representation. Then a cylinder-to-BEV transformation module is introduced to obtain sparse semantic feature maps in the top view. In the end, we propose a modified encoder-decoder network to get the dense semantic estimations. Experimental results on the SemanticKITTI and nuScenes-LidarSeg datasets show that our method outperforms the state-of-the-art methods by a large margin.