RCBEVDet: Radar-camera Fusion in Bird's Eye View for 3D Object Detection
- URL: http://arxiv.org/abs/2403.16440v1
- Date: Mon, 25 Mar 2024 06:02:05 GMT
- Title: RCBEVDet: Radar-camera Fusion in Bird's Eye View for 3D Object Detection
- Authors: Zhiwei Lin, Zhe Liu, Zhongyu Xia, Xinhao Wang, Yongtao Wang, Shengxiang Qi, Yang Dong, Nan Dong, Le Zhang, Ce Zhu,
- Abstract summary: Three-dimensional object detection is one of the key tasks in autonomous driving.
relying solely on cameras is difficult to achieve highly accurate and robust 3D object detection.
radar-camera fusion 3D object detection method in the bird's eye view (BEV)
RadarBEVNet consists of a dual-stream radar backbone and a Radar Cross-Section (RC) aware BEV encoder.
- Score: 33.07575082922186
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Three-dimensional object detection is one of the key tasks in autonomous driving. To reduce costs in practice, low-cost multi-view cameras for 3D object detection are proposed to replace the expansive LiDAR sensors. However, relying solely on cameras is difficult to achieve highly accurate and robust 3D object detection. An effective solution to this issue is combining multi-view cameras with the economical millimeter-wave radar sensor to achieve more reliable multi-modal 3D object detection. In this paper, we introduce RCBEVDet, a radar-camera fusion 3D object detection method in the bird's eye view (BEV). Specifically, we first design RadarBEVNet for radar BEV feature extraction. RadarBEVNet consists of a dual-stream radar backbone and a Radar Cross-Section (RCS) aware BEV encoder. In the dual-stream radar backbone, a point-based encoder and a transformer-based encoder are proposed to extract radar features, with an injection and extraction module to facilitate communication between the two encoders. The RCS-aware BEV encoder takes RCS as the object size prior to scattering the point feature in BEV. Besides, we present the Cross-Attention Multi-layer Fusion module to automatically align the multi-modal BEV feature from radar and camera with the deformable attention mechanism, and then fuse the feature with channel and spatial fusion layers. Experimental results show that RCBEVDet achieves new state-of-the-art radar-camera fusion results on nuScenes and view-of-delft (VoD) 3D object detection benchmarks. Furthermore, RCBEVDet achieves better 3D detection results than all real-time camera-only and radar-camera 3D object detectors with a faster inference speed at 21~28 FPS. The source code will be released at https://github.com/VDIGPKU/RCBEVDet.
Related papers
- RCBEVDet++: Toward High-accuracy Radar-Camera Fusion 3D Perception Network [34.45694077040797]
We present a radar-camera fusion 3D object detection framework called BEEVDet.
RadarBEVNet encodes sparse radar points into a dense bird's-eye-view feature.
Our method achieves state-of-the-art radar-camera fusion results in 3D object detection, BEV semantic segmentation, and 3D multi-object tracking tasks.
arXiv Detail & Related papers (2024-09-08T05:14:27Z) - Echoes Beyond Points: Unleashing the Power of Raw Radar Data in
Multi-modality Fusion [74.84019379368807]
We propose a novel method named EchoFusion to skip the existing radar signal processing pipeline.
Specifically, we first generate the Bird's Eye View (BEV) queries and then take corresponding spectrum features from radar to fuse with other sensors.
arXiv Detail & Related papers (2023-07-31T09:53:50Z) - HVDetFusion: A Simple and Robust Camera-Radar Fusion Framework [10.931114142452895]
Current SOTA algorithm combines Camera and Lidar sensors, limited by the high price of Lidar.
HVDetFusion is a multi-modal detection algorithm that supports pure camera data as input for detection, but also can perform fusion input of radar data and camera data.
HVDetFusion achieves the new state-of-the-art 67.4% NDS on the challenging nuScenes test set among all camera-radar 3D object detectors.
arXiv Detail & Related papers (2023-07-21T03:08:28Z) - RCM-Fusion: Radar-Camera Multi-Level Fusion for 3D Object Detection [15.686167262542297]
We propose Radar-Camera Multi-level fusion (RCM-Fusion), which attempts to fuse both modalities at both feature and instance levels.
For feature-level fusion, we propose a Radar Guided BEV which transforms camera features into precise BEV representations.
For instance-level fusion, we propose a Radar Grid Point Refinement module that reduces localization error.
arXiv Detail & Related papers (2023-07-17T07:22:25Z) - Bi-LRFusion: Bi-Directional LiDAR-Radar Fusion for 3D Dynamic Object
Detection [78.59426158981108]
We introduce a bi-directional LiDAR-Radar fusion framework, termed Bi-LRFusion, to tackle the challenges and improve 3D detection for dynamic objects.
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.
arXiv Detail & Related papers (2023-06-02T10:57:41Z) - Multi-Modal 3D Object Detection by Box Matching [109.43430123791684]
We propose a novel Fusion network by Box Matching (FBMNet) for multi-modal 3D detection.
With the learned assignments between 3D and 2D object proposals, the fusion for detection can be effectively performed by combing their ROI features.
arXiv Detail & Related papers (2023-05-12T18:08:51Z) - TransCAR: Transformer-based Camera-And-Radar Fusion for 3D Object
Detection [13.986963122264633]
TransCAR is a Transformer-based Camera-And-Radar fusion solution for 3D object detection.
Our model estimates a bounding box per query using set-to-set Hungarian loss.
arXiv Detail & Related papers (2023-04-30T05:35:03Z) - CramNet: Camera-Radar Fusion with Ray-Constrained Cross-Attention for
Robust 3D Object Detection [12.557361522985898]
We propose a camera-radar matching network CramNet to fuse the sensor readings from camera and radar in a joint 3D space.
Our method supports training with sensor modality dropout, which leads to robust 3D object detection, even when a camera or radar sensor suddenly malfunctions on a vehicle.
arXiv Detail & Related papers (2022-10-17T17:18:47Z) - Fully Convolutional One-Stage 3D Object Detection on LiDAR Range Images [96.66271207089096]
FCOS-LiDAR is a fully convolutional one-stage 3D object detector for LiDAR point clouds of autonomous driving scenes.
We show that an RV-based 3D detector with standard 2D convolutions alone can achieve comparable performance to state-of-the-art BEV-based detectors.
arXiv Detail & Related papers (2022-05-27T05:42:16Z) - RadarNet: Exploiting Radar for Robust Perception of Dynamic Objects [73.80316195652493]
We tackle the problem of exploiting Radar for perception in the context of self-driving cars.
We propose a new solution that exploits both LiDAR and Radar sensors for perception.
Our approach, dubbed RadarNet, features a voxel-based early fusion and an attention-based late fusion.
arXiv Detail & Related papers (2020-07-28T17:15:02Z) - End-to-End Pseudo-LiDAR for Image-Based 3D Object Detection [62.34374949726333]
Pseudo-LiDAR (PL) has led to a drastic reduction in the accuracy gap between methods based on LiDAR sensors and those based on cheap stereo cameras.
PL combines state-of-the-art deep neural networks for 3D depth estimation with those for 3D object detection by converting 2D depth map outputs to 3D point cloud inputs.
We introduce a new framework based on differentiable Change of Representation (CoR) modules that allow the entire PL pipeline to be trained end-to-end.
arXiv Detail & Related papers (2020-04-07T02:18:38Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.