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Boosting LiDAR-Based Semantic Labeling by Cross-modal Training Data Generation

机译:通过跨模态培训数据生成提高基于激光的语义标记

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Mobile robots and autonomous vehicles rely on multi-modal sensor setups to perceive and understand their surroundings. Aside from cameras, LiDAR sensors represent a central component of state-of-the-art perception systems. In addition to accurate spatial perception, a comprehensive semantic understanding of the environment is essential for efficient and safe operation. In this paper we present a novel deep neural network architecture called LiLaNet for point-wise, multi-class semantic labeling of semi-dense LiDAR data. The network utilizes virtual image projections of the 3D point clouds for efficient inference. Further, we propose an automated process for large-scale cross-modal training data generation called Autolabeling, in order to boost semantic labeling performance while keeping the manual annotation effort low. The effectiveness of the proposed network architecture as well as the automated data generation process is demonstrated on a manually annotated ground truth dataset. LiLaNet is shown to significantly outperform current state-of-the-art CNN architectures for LiDAR data. Applying our automatically generated large-scale training data yields a boost of up to 14% points compared to networks trained on manually annotated data only.
机译:移动机器人和自主车辆依赖于多模态传感器设置来感知和了解周围环境。除了相机外,LIDAR传感器代表最先进的感知系统的核心组成部分。除了准确的空间感知之外,对环境的综合语义理解对于高效和安全的操作至关重要。在本文中,我们提出了一种名为Lilanet的新型神经网络架构,用于半密度LIDAR数据的Pock-Wise,多级语义标记。该网络利用3D点云的虚拟图像投影以获得有效推断。此外,我们提出了一种用于自动标签的大规模跨模型培训数据生成的自动化过程,以提高语义标记性能,同时保持手动注释效率低。在手动注释的地面真实数据集上演示了所提出的网络架构以及自动数据生成过程的有效性。 LILANET显示为LIDAR数据的最新状态最先进的CNN架构。应用我们的自动生成的大规模培训数据产生高达14%的分数,而不是仅在手动注释的数据上培训的网络。

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