Sparse Embedded Convolution Based Dual Feature Aggregation 3D Object Detection Network
The algorithm design of compatible detection speed and accuracy based on LiDAR point clouds is a challenging issue in various practical applications of 3D object detection, including the field of autonomous driving. This paper designs a single-stage object detection algorithm that is lightweight and...
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Veröffentlicht in: | Neural processing letters 2024-02, Vol.56 (1), p.29, Article 29 |
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Sprache: | eng |
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Zusammenfassung: | The algorithm design of compatible detection speed and accuracy based on LiDAR point clouds is a challenging issue in various practical applications of 3D object detection, including the field of autonomous driving. This paper designs a single-stage object detection algorithm that is lightweight and compatible with detection speed and accuracy for the above issue. To achieve these objectives, we propose a framework for a 3D object detection algorithm using a single-stage detection network as the backbone network. Firstly, we design a dual feature extraction module to reduce the occurrence of vehicle miss and error detection problems. Then, we use a multi-scale feature fusion scheme to fuse feature information with different scales. Furthermore, we design a data enhancement scheme suitable for this network architecture. Experimental results in the KITTI dataset show that the proposed method achieves improvement ratios of 38.5% for the detection speed and 2.88%
∼
13.65% in terms of the average precision of vehicle detection compared to the existing algorithm based on single-stage object detection (SECOND). |
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ISSN: | 1573-773X 1370-4621 1573-773X |
DOI: | 10.1007/s11063-024-11506-2 |