利用互补表示学习特征改进基于激光雷达的顶视图网格地图语义分割

Frank Bieder, Maximilian Link, Simon Romanski, Haohao Hu, C. Stiller
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引用次数: 1

摘要

在本文中,我们介绍了一种新的方法来预测自动驾驶背景下稀疏的、单次激光雷达测量的语义信息。特别是,我们融合了从互补表示中学习到的特征。该方法旨在改进顶视图网格图的语义分割。为了实现这一目标,3D激光雷达点云被投影到两个正交的二维表示中。对于每种表示,开发了定制的深度学习架构来有效地提取语义信息,这些信息由上级深度神经网络融合。这项工作的贡献有三个方面:(1)我们检查了分割网络中的不同阶段进行融合。(2)我们量化了嵌入不同特征的影响。(3)根据调查结果,利用不同表征的各自优势,设计了量身定制的深度神经网络架构。我们的方法是使用SemanticKITTI数据集进行评估的,该数据集提供了超过23000个激光雷达测量值的逐点语义注释。
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Improving Lidar-Based Semantic Segmentation of Top-View Grid Maps by Learning Features in Complementary Representations
In this paper we introduce a novel way to predict semantic information from sparse, single-shot LiDAR measurements in the context of autonomous driving. In particular, we fuse learned features from complementary representations. The approach is aimed specifically at improving the semantic segmentation of top-view grid maps. Towards this goal the 3D LiDAR point cloud is projected onto two orthogonal 2D representations. For each representation a tailored deep learning architecture is developed to effectively extract semantic information which are fused by a superordinate deep neural network. The contribution of this work is threefold: (1) We examine different stages within the segmentation network for fusion. (2) We quantify the impact of embedding different features. (3) We use the findings of this survey to design a tailored deep neural network architecture leveraging respective advantages of different representations. Our method is evaluated using the SemanticKITTI dataset which provides a point-wise semantic annotation of more than 23.000 LiDAR measurements.
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