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MVX-Net: Multimodal VoxelNet for 3D Object Detection

机译:MVX-Net:用于3D对象检测的多模态VoxelNet

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摘要

Many recent works on 3D object detection have focused on designing neural network architectures that can consume point cloud data. While these approaches demonstrate encouraging performance, they are typically based on a single modality and are unable to leverage information from other modalities, such as a camera. Although a few approaches fuse data from different modalities, these methods either use a complicated pipeline to process the modalities sequentially, or perform late-fusion and are unable to learn interaction between different modalities at early stages. In this work, we present PointFusion and VoxelFusion: two simple yet effective early-fusion approaches to combine the RGB and point cloud modalities, by leveraging the recently introduced VoxelNet architecture. Evaluation on the KITTI dataset demonstrates significant improvements in performance over approaches which only use point cloud data. Furthermore, the proposed method provides results competitive with the state-of-the-art multimodal algorithms, achieving top-2 ranking in five of the six birds eye view and 3D detection categories on the KITTI benchmark, by using a simple single stage network.
机译:最近有关3D对象检测的许多工作都集中在设计可以消耗点云数据的神经网络体系结构上。尽管这些方法显示出令人鼓舞的性能,但它们通常基于单个模式,并且无法利用来自其他模式(例如相机)的信息。尽管一些方法融合了来自不同模态的数据,但是这些方法要么使用复杂的流水线顺序处理模态,要么执行后期融合,并且无法在早期学习不同模态之间的交互。在这项工作中,我们介绍了PointFusion和VoxelFusion:这两种简单而有效的早期融合方法,可以利用最近引入的VoxelNet架构来结合RGB和点云形式。对KITTI数据集的评估表明,与仅使用点云数据的方法相比,其性能有了显着提高。此外,所提出的方法提供了与最新的多峰算法竞争的结果,通过使用简单的单级网络,在KITTI基准的6个鸟瞰图和3D检测类别中,有5个排名前2位。

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