Semi-supervised 3D object detection based on frustum transformation and RGB voxel grid

被引:0
作者
Wang, Yan [1 ]
Yuan, Tiantian [1 ]
Hu, Bin [1 ,2 ]
Li, Yao [2 ]
机构
[1] Technical College for the Deaf, Tianjin University of Technology, Tianjin
[2] School of Microelectronics, Tianjin University, Tianjin
来源
Hongwai yu Jiguang Gongcheng/Infrared and Laser Engineering | 2024年 / 53卷 / 08期
关键词
3D object detection; frustum transformation; KITTI dataset; RGB voxel feature; semi-supervised learning;
D O I
10.3788/IRLA20240206
中图分类号
学科分类号
摘要
Objective In the field of autonomous driving, high-precision object detection is crucial for ensuring safety and efficiency. A common approach is to use voxel-based methods, which are susceptible to the quantization grid size. Smaller grid sizes make the algorithm more computationally intensive, while larger grid sizes increase quantization loss, leading to the loss of precise position information and fine details. Successive convolution and down-sampling operations can further weaken the precise localization signals in the point cloud. To improve the orientation perception and accuracy of object detection, we propose a frustum transform-based method that uses RGB images to extract features and fuses them with distance information from LiDAR. This approach optimizes the strategy for extracting orientation features from the 3D point cloud. To reduce the model's dependence on annotated data, we also design a semi-supervised learning architecture that employs an adaptive pseudo-labeling method, thereby further reducing the false alarm rate of the group voting-based method. Methods We propose a LiDAR-RGB fusion network based on the frustum transform (Fig.1). Specifically, texture information is extracted from the RGB image by a deep network and fused with distance information from the LiDAR to maintain the integrity of the 3D spatial features (Fig.2). Subsequently, the weights of the voxel spatial features are optimized using the channel attention module (Fig.3). Finally, a semi-supervised learning architecture (Fig.4) is employed to reduce the false alarm rate by utilizing the spatial feature fusion module (Fig.5) and the group-based voting module. The comparative learning module is used to improve the reliability of the detection. Results and Discussions The proposed method was evaluated on the KITTI dataset (Tab.1). Our method achieved 56.30% accuracy in pedestrian detection and 75.88% accuracy in vehicle detection, with a detection rate of 21 FPS. In the ablation study of the LRFN (LiDAR-RGB Fusion Network) model (Tab.2), the RVFM (RGB Voxel Feature Module) improved the accuracy in recognizing occluded objects (Fig.6-7). The channel attention module was analyzed in comparison with other fusion modules (Tab.3, Fig.8). In the semi-supervised learning experiments, the teacher model of this study was compared with the 3DIoUMatch model (Tab.4), and the results validated the effectiveness of our teacher model. In the ablation study (Tab.5), the baseline was improved by 8.61% using the full model. These results show a significant improvement over existing methods, highlighting the detection performance of the RVFM and the teacher model. Conclusions In this study, we propose a 3D object detection technique based on frustum transform and semi-supervised learning architecture. This method maps 2D image features to 3D space, generates homogeneous RGB image voxel features using LiDAR depth distribution information, adaptively selects the voxel space, and optimizes the fusion feature characterization capability through the Channel Attention Module. Finally, targets are detected using the 3D Region Suggesting Network Module. In the ablation experiments (Tab.2), the detection accuracy of the baseline model improved when using the RGB image feature module. The RVFM effectively solved the orientation and proximity problems in visual sample analysis (Fig.6-7). Additionally, the SFF (Spatial Feature Fusion) and GBV (Group-based Voting) modules were proposed to reduce the false alarm rate, and the comparative learning module was introduced to improve the consistency of output results from different views of the student model. The experimental results (Tab.1) show that the LRFN-S (LiDAR-RGB Fusion Network-SLL) method proposed in this paper achieved significant performance, with 75.88% and 56.30% accuracy on the KITTI dataset for automobile and pedestrian detection benchmarks, respectively. © 2024 Chinese Society of Astronautics. All rights reserved.
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相关论文
共 20 条
[1]  
LI Weipeng, YANG Xiaogang, LI Chuanxiang, Et al., An improved semi-supervised transfer learning method for infrared object detection neural network, Infrared and Laser Engineering, 50, 3, (2021)
[2]  
ZHOU Y, TUZEL O., VoxelNet: End-to-end learning for point cloud based 3d object detection, Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pp. 4490-4499, (2018)
[3]  
CHEN X, MA H, WAN J, Et al., Multi-view 3D object detection network for autonomous driving, Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pp. 1907-1915, (2017)
[4]  
QI C R, LIU W, WU C, Et al., Frustum pointnets for 3d object detection from RGB-D data, Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pp. 918-927, (2018)
[5]  
WANG H, CONG Y, LITANY O, Et al., 3DIoUMatch: Leveraging iou prediction for semi-supervised 3d object detection, Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, pp. 14615-14624, (2021)
[6]  
SHI S, GUO C, JIANG L, Et al., PV-RCNN: Point-voxel feature set abstraction for 3D object detection, Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, pp. 10529-10538, (2020)
[7]  
ZHAO Yiqiang, ARXIDIN Akbar, CHEN Rui, Et al., 3D point cloud object detection method in view of voxel based on graph convolution network, Infrared and Laser Engineering, 50, 10, (2021)
[8]  
CHEN Chunyi, WU Xinyi, HU Xiaojuan, Et al., Image super-resolution reconstruction with multi-scale attention fusion, Chinese Optics, 16, 5, pp. 1034-1044, (2023)
[9]  
LIU Tianci, SHI Zelin, LIU Yunpeng, Et al., Geometry deep network image-set recognition method based on Grassmann manifolds, Infrared and Laser Engineering, 47, 7, (2018)
[10]  
LIANG T, XIE H, YU K, Et al., BEVFusion: A simple and robust lidar-camera fusion framework, Advances in Neural Information Processing Systems, 35, pp. 10421-10434, (2022)