Sparse Point Cloud Registration Network with Semantic Supervision in Wilderness Scenes

Zhichao Zhang, Feng Lu, Youchun Xu, Jinsheng Chen, Yulin Ma
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Abstract

The registration of laser point clouds in complex conditions in wilderness scenes is an important aspect in the research field of autonomous vehicle navigation. It serves as the foundation for solving problems such as environment reconstruction, map construction, navigation and positioning, and pose estimation during the motion process of autonomous vehicles using laser radar sensors. Due to the sparse structured features, uneven point cloud density, and high noise levels in wilderness scenes, achieving reliable and accurate point cloud registration is challenging. In this paper, we propose a semantic-supervised sparse point cloud registration network (S3PCRNet) aiming to achieve effective registration of laser point clouds in wilderness large-scale scenes. Firstly, a local feature aggregation module is designed to extract the local structural features of the point cloud. Then, based on rotation position encoding, a randomly grouped self-attention mechanism is proposed to obtain the global features of the point cloud through learning. A semantic information weight matrix is calculated to filter out negligible points. Subsequently, a semantic fusion feature module is utilised to find reliable correspondences between point clouds. Finally, the proposed method is trained and evaluated on both the RELLIS-3D dataset and a self-made Off-road-3D dataset.
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荒野场景中具有语义监督功能的稀疏点云注册网络
在野外场景的复杂条件下进行激光点云注册是自动驾驶车辆导航研究领域的一个重要方面。它是利用激光雷达传感器解决自动驾驶车辆运动过程中环境重建、地图构建、导航定位和姿态估计等问题的基础。由于荒野场景中的结构特征稀疏、点云密度不均匀、噪声水平高,实现可靠、准确的点云注册具有挑战性。本文提出了一种语义监督稀疏点云注册网络(S3PCRNet),旨在实现荒野大尺度场景中激光点云的有效注册。首先,我们设计了一个局部特征聚合模块来提取点云的局部结构特征。然后,在旋转位置编码的基础上,提出一种随机分组的自注意机制,通过学习获得点云的全局特征。计算语义信息权重矩阵,过滤掉可忽略的点。随后,利用语义融合特征模块找到点云之间的可靠对应关系。最后,在 RELLIS-3D 数据集和自制的 Off-road-3D 数据集上对所提出的方法进行了训练和评估。
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