F-3DNet: Extracting inner order of point cloud for 3D object detection in autonomous driving

被引:0
作者
Fenglei Xu
Haokai Zhao
Yifei Wu
Chongben Tao
机构
[1] Suzhou University of Science and Technology,
来源
Multimedia Tools and Applications | 2024年 / 83卷
关键词
3D object detection; Point cloud; Inner context;
D O I
暂无
中图分类号
学科分类号
摘要
3D object detection has aroused widespread concerns, in which point cloud research is the most popular one.Point clouds are always deemed as irregular and disordered, however implicit order actually exists due to laser arrangement and sequential scanning. Therefore, the authors improve 3D detection accuracy by exploring point cloud inner order, which contains context information but neglected before. In this paper, the authors propose a novel method termed Frustum 3DNet for 3D object detection from point clouds. Following inner order, rearranged feature matrix is constructed, and a pseudo panorama is generated from LiDAR data. Given 2D region proposals on the pseudo image, the authors extend them to 3D space and obtain frustum regions of interest. For each frustum, generate a sequence of small frustums by slicing over distance. To further cooperate with context information, a novel local context feature extraction module is introduced. The extracted context features are concatenated with frustum features afterwards. The feature map is fed to a fully convolutional network , followed by a classifier and a regressor. Refinement and Fusion with RGB input are attached for outcome improvement. Ablation studies verify the efficacy of context extraction component and the corresponding model architecture in this paper. The authors present experiments on KITTI and Nuscenes datasets and F-3DNet outperforms existing methods at the time of submission.
引用
收藏
页码:8499 / 8516
页数:17
相关论文
共 65 条
  • [1] Asvadi A(2018)Multimodal vehicle detection: fusing 3d-lidar and color camera data Pattern Recognition Letters 115 20-29
  • [2] Garrote L(2021)Point-cloud based 3d object detection and classification methods for self-driving applications: A survey and taxonomy Information Fusion 68 161-191
  • [3] Premebida C(2021)Deep multi-scale and multi-modal fusion for 3d object detection Pattern Recognition Letters 151 236-242
  • [4] Peixoto PJ(2012)The classification of the applicable machine learning methods in robot manipulators International Journal of Machine Learning and Computing 2 560-571
  • [5] Nunes U(2020)Voxel-fpn: Multi-scale voxel feature aggregation for 3d object detection from lidar point clouds Sensors 20 704-720
  • [6] Fernandes D(2018)Dynamic affinity graph construction for spectral clustering using multiple features IEEE transactions on neural networks and learning systems 29 6323-6332
  • [7] Silva A(2018)Rank-constrained spectral clustering with flexible embedding IEEE transactions on neural networks and learning systems 29 6073-6082
  • [8] Névoa R(2021)A survey of 3d object detection Multimedia Tools and Applications 80 29617-29641
  • [9] Simoes C(2017)Adaptive unsupervised feature selection with structure regularization IEEE transactions on neural networks and learning systems 29 944-956
  • [10] Gonzalez D(2021)A ga based hierarchical feature selection approach for handwritten word recognition Neural Computing and Applications 32 2533-2552