Bi-LRFusion: Bi-Directional LiDAR-Radar Fusion for 3D Dynamic Object Detection

Yingjie Wang, Jiajun Deng, Yao Li, Jinshui Hu, Cong Liu, Yu Zhang, Jianmin Ji, Wanli Ouyang, Yanyong Zhang
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引用次数: 3

Abstract

LiDAR and Radar are two complementary sensing approaches in that LiDAR specializes in capturing an object's 3D shape while Radar provides longer detection ranges as well as velocity hints. Though seemingly natural, how to efficiently combine them for improved feature representation is still unclear. The main challenge arises from that Radar data are extremely sparse and lack height information. Therefore, directly integrating Radar features into LiDAR-centric detection networks is not optimal. In this work, we introduce a bi-directional LiDAR-Radar fusion framework, termed Bi-LRFusion, to tackle the challenges and improve 3D detection for dynamic objects. Technically, Bi-LRFusion involves two steps: first, it enriches Radar's local features by learning important details from the LiDAR branch to alleviate the problems caused by the absence of height information and extreme sparsity; second, it combines LiDAR features with the enhanced Radar features in a unified bird's-eye-view representation. We conduct extensive experiments on nuScenes and ORR datasets, and show that our Bi-LRFusion achieves state-of-the-art performance for detecting dynamic objects. Notably, Radar data in these two datasets have different formats, which demonstrates the generalizability of our method. Codes will be published.
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Bi-LRFusion:用于3D动态目标检测的双向激光雷达与雷达融合
激光雷达和雷达是两种互补的传感方法,激光雷达专门用于捕获物体的3D形状,而雷达提供更长的探测范围以及速度提示。虽然看起来很自然,但如何有效地将它们结合起来以改进特征表示仍然不清楚。主要的挑战来自雷达数据非常稀疏,缺乏高度信息。因此,直接将Radar功能集成到以lidar为中心的检测网络中并不是最佳选择。在这项工作中,我们引入了一个双向激光雷达-雷达融合框架,称为Bi-LRFusion,以解决挑战并改进动态物体的3D检测。从技术上讲,Bi-LRFusion包括两个步骤:首先,它通过从LiDAR分支中学习重要细节来丰富雷达的局部特征,以缓解高度信息缺乏和极端稀疏性带来的问题;其次,它将LiDAR功能与增强的雷达功能结合在一起,以统一的鸟瞰图表示。我们在nuScenes和ORR数据集上进行了广泛的实验,并表明我们的Bi-LRFusion在检测动态物体方面达到了最先进的性能。值得注意的是,这两个数据集中的雷达数据具有不同的格式,这证明了我们的方法的通用性。守则将会公布。
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