SmogNet:用于无人驾驶车辆的点云烟雾分割网络

Hanbo Tang, Tao Wu, B. Dai
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引用次数: 5

摘要

激光雷达是无人驾驶车辆中常用的关键传感器。当无人驾驶汽车在实际道路环境中运行时,烟雾是车载激光雷达的一个麻烦。这导致基于激光雷达的场景理解能力显著降低。因此,快速准确地识别道路场景中存在的雾霾至关重要。提出了一种针对无人驾驶车辆的细粒度点云雾霾分割网络(SmogNet)。采用基于注意力的有效图卷积核逐层提取特征。SmogNet的关键是我们专门设计了两个手动特征来描述点云中烟雾的几何特征。我们在模拟烟雾的真实道路场景中对SmogNet进行了评估。该方法优于竞争方法,可有效推广。我们在SmogNet的训练中使用了Focal Loss,有效地改善了由于样本类别不平衡而引起的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SmogNet: A Point Cloud Smog Segmentation Network for Unmanned Vehicles
LiDAR is a key sensor commonly used in unmanned vehicles. Smog is a trouble for vehicle-mounted LiDAR when unmanned vehicles operates in actual road environments. It leads to a significant reduction in the ability of LiDAR-based scene understanding for them. Thus, it is essential to recognize the smog existing in the road scene quickly and accurately. This paper proposes a fine-grained point cloud smog segmentation network (SmogNet) for unmanned vehicles. We adopt an effective graph convolution kernel based on attention to extract features layer by layer. The key of SmogNet is two manual features we design specially to characterize the geometric features of smog in point cloud. We evaluate SmogNet in challenging real road scenes with simulated smog. It performs better than competitive methods and it can be effectively generalized. We use the Focal Loss during the training of the SmogNet and improve the problems caused by the imbalance of sample categories effectively.
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