scholarly journals Investigating Attention Mechanism in 3D Point Cloud Object Detection

Author(s):  
Shi Qiu ◽  
Yunfan Wu ◽  
Saeed Anwar ◽  
Chongyi Li
Author(s):  
Zhiyong Gao ◽  
Jianhong Xiang

Background: While detecting the object directly from the 3D point cloud, the natural 3D patterns and invariance of 3D data are often obscure. Objective: In this work, we aimed at studying the 3D object detection from discrete, disordered and sparse 3D point clouds. Methods: The CNN is composed of the frustum sequence module, 3D instance segmentation module S-NET, 3D point cloud transformation module T-NET, and 3D boundary box estimation module E-NET. The search space of the object is determined by the frustum sequence module. The instance segmentation of the point cloud is performed by the 3D instance segmentation module. The 3D coordinates of the object are confirmed by the transformation module and the 3D bounding box estimation module. Results: Evaluated on KITTI benchmark dataset, our method outperforms the state of the art by remarkable margins while having real-time capability. Conclusion: We achieve real-time 3D object detection by proposing an improved convolutional neural network (CNN) based on image-driven point clouds.


2021 ◽  
Vol 13 (24) ◽  
pp. 5071
Author(s):  
Jing Zhang ◽  
Jiajun Wang ◽  
Da Xu ◽  
Yunsong Li

The use of LiDAR point clouds for accurate three-dimensional perception is crucial for realizing high-level autonomous driving systems. Upon considering the drawbacks of the current point cloud object-detection algorithms, this paper proposes HCNet, an algorithm that combines an attention mechanism with adaptive adjustment, starting from feature fusion and overcoming the sparse and uneven distribution of point clouds. Inspired by the basic idea of an attention mechanism, a feature-fusion structure HC module with height attention and channel attention, weighted in parallel, is proposed to perform feature-fusion on multiple pseudo images. The use of several weighting mechanisms enhances the ability of feature-information expression. Additionally, we designed an adaptively adjusted detection head that also overcomes the sparsity of the point cloud from the perspective of original information fusion. It reduces the interference caused by the uneven distribution of the point cloud from the perspective of adaptive adjustment. The results show that our HCNet has better accuracy than other one-stage-network or even two-stage-network RCNNs under some evaluation detection metrics. Additionally, it has a detection rate of 30FPS. Especially for hard samples, the algorithm in this paper has better detection performance than many existing algorithms.


Author(s):  
Liang Du ◽  
Xiaoqing Ye ◽  
Xiao Tan ◽  
Edward Johns ◽  
Bo Chen ◽  
...  

Author(s):  
Jianwei Guo ◽  
Xuejun Xing ◽  
Weize Quan ◽  
Dong-Ming Yan ◽  
Qingyi Gu ◽  
...  

IEEE Access ◽  
2019 ◽  
Vol 7 ◽  
pp. 120449-120462
Author(s):  
Zhiyu Wang ◽  
Hao Fu ◽  
Li Wang ◽  
Liang Xiao ◽  
Bin Dai

Author(s):  
Qinghao Meng ◽  
Wenguan Wang ◽  
Tianfei Zhou ◽  
Jianbing Shen ◽  
Yunde Jia ◽  
...  

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