Home /Research /SPBA-Net point cloud object detection with sparse attention and box aligning
PERCEPTION

SPBA-Net point cloud object detection with sparse attention and box aligning

Haojie Sha, Qingrui Gao, Hao Zeng, Kai Li, Wang Li, Xuande Zhang, Xiaohui Wang

Year
2024
Citations
3
Access
Open access

Abstract

Object detection in point clouds is essential for various applications, including autonomous navigation, household robots, and augmented/virtual reality. However, during voxelization and Bird's Eye View transformation, local point cloud data often remains sparse due to non-target areas and noise points, posing a significant challenge for feature extraction. In this paper, we propose a novel mechanism named Keypoint Guided Sparse Attention (KGSA) to enhance the semantic information of point clouds by calculating Euclidean distances between selected keypoints and others. Additionally, we introduce Instance-wise Box Aligning, a method for expanding predicted boxes and clustering the points within them to achieve precise alignment between predicted bounding boxes and ground-truth targets. Experimental results demonstrate the superiority of our proposed SPBA-Net in 3D object detection on point clouds compared to other state-of-the-art methods.The datasets used and/or analysed during the current study available from the corresponding author on reasonable request.

Keywords

Point cloudComputer scienceMinimum bounding boxArtificial intelligenceObject (grammar)Cluster analysisTransformation (genetics)Point (geometry)Computer visionBounding overwatch

Related papers

Browse all PERCEPTION papers