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首页> 外文期刊>Journal of visual communication & image representation >Efficient graph attentional network for 3D object detection from Frustum-based LiDAR point clouds
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Efficient graph attentional network for 3D object detection from Frustum-based LiDAR point clouds

机译:基于视锥体的LiDAR点云3D目标检测的高效图注意力网络

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LiDAR-based 3D object detection is important for autonomous driving scene perception, but point clouds produced by LiDAR are irregular and unstructured in nature, and cannot be adopted by the conventional Convolutional Neural Networks (CNN). Recently, Graph Convolutional Networks (GCN) has been proved as an ideal way to handle non-Euclidean structure data, as well as for point cloud processing. However, GCN involves massive computation for searching adjacent nodes, and the heavy computational cost limits its applications in processing large-scale LiDAR point cloud in autonomous driving. In this work, we adopt a frustum-based point cloud-image fusion scheme to reduce the amount of LiDAR point clouds, thus making the GCN-based large-scale LiDAR point clouds feature learning feasible. On this basis, we propose an efficient graph attentional network to accomplish the goal of 3D object detection in autonomous driving, which can learn features from raw LiDAR point cloud directly without any conversions. We evaluate the model on the public KITTI benchmark dataset, the 3D detection mAP is 63.72 on KITTI Cars, Pedestrian and Cyclists, and the inference speed achieves 7.9 fps on a single GPU, which is faster than other methods of the same type.
机译:基于激光雷达的3D目标检测对于自动驾驶场景感知具有重要意义,但激光雷达产生的点云本质上是不规则和非结构化的,无法被传统的卷积神经网络(CNN)所采用。最近,图卷积网络(GCN)已被证明是处理非欧几里得结构数据以及点云处理的理想方法。然而,GCN涉及搜索相邻节点的海量计算,沉重的计算成本限制了其在自动驾驶中处理大规模LiDAR点云的应用。在这项工作中,我们采用基于视锥体的点云-图像融合方案来减少LiDAR点云的数量,从而使基于GCN的大规模LiDAR点云特征学习成为可能。在此基础上,我们提出了一种高效的图注意力网络,以实现自动驾驶中3D目标检测的目标,该网络可以直接从原始LiDAR点云中学习特征,而无需任何转换。我们在公开的 KITTI 基准数据集上评估了该模型,在 KITTI 汽车、行人和骑自行车者的 3D 检测 mAP 为 63.72%,推理速度在单个 GPU 上达到 7.9 fps,比其他同类型方法更快。

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