SimpleFusion:通过融合RGB图像和点云来检测3D物体

Yongchang Zhang, Yue Guo, Hanbing Niu, Bo Zhang, Yun Cao, Wenhao He
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摘要

通过融合图像和点云实现鲁棒的3D目标检测仍然具有挑战性。在本文中,我们提出了一种新的3D目标检测器(SimpleFusion),它可以实现简单高效的多传感器融合。我们的主要动机是从单一模态中提取特征,并将它们融合到一个统一的空间中。具体来说,我们在相机流中构建了一个新的视觉3D物体检测器,该检测器利用点云监督进行更准确的深度预测;在激光雷达流中,我们引入了一种鲁棒的3D目标检测器,该检测器利用多视图和多尺度特征来克服点云的稀疏性。最后,我们提出了一个动态融合模块,专注于更自信的特征,实现基于动态权重的精确三维目标检测。我们的方法已经在nuScenes数据集上进行了评估,实验结果表明,它的性能明显优于其他最先进的方法。
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SimpleFusion: 3D Object Detection by Fusing RGB Images and Point Clouds
Achieving robust 3D object detection by fusing images and point clouds remains challenging. In this paper, we propose a novel 3D object detector (SimpleFusion) that enables simple and efficient multi-sensor fusion. Our main motivation is to boost feature extraction from a single modality and fuse them into a unified space. Specifically, we build a new visual 3D object detector in the camera stream that leverages point cloud supervision for more accurate depth prediction; in the lidar stream, we introduce a robust 3D object detector that utilizes multi-view and multi-scale features to overcome the sparsity of point clouds. Finally, we propose a dynamic fusion module to focus on more confident features and achieve accurate 3D object detection based on dynamic weights. Our method has been evaluated on the nuScenes dataset, and the experimental results indicate that it outperforms other state-of-the-art methods by a significant margin.
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