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首页> 外文期刊>Intelligent and Converged Networks >PointGAT: Graph attention networks for 3D object detection
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PointGAT: Graph attention networks for 3D object detection

机译:PointGAT:用于 3D 物体检测的图形注意力网络

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摘要

3D object detection is a critical technology in many applications, and among the various detection methods, pointcloud-based methods have been the most popular research topic in recent years. Since Graph Neural Network (GNN) is considered to be effective in dealing with pointclouds, in this work, we combined it with the attention mechanism and proposed a 3D object detection method named PointGAT. Our proposed PointGAT outperforms previous approaches on the KITTI test dataset. Experiments in real campus scenarios also demonstrate the potential of our method for further applications.
机译:3 d对象检测是一个关键技术许多应用程序和各种检测方法、pointcloud-based方法在最近最热门的研究课题年。被认为是有效的在处理pointclouds,在这项工作中,我们结合注意机制,提出了一个3 d对象名为PointGAT检测方法。PointGAT优于先前的方法上KITTI测试数据集。场景也展示我们的潜力为进一步的应用方法。

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