Automotive Engineering ›› 2024, Vol. 46 ›› Issue (6): 1015-1024.doi: 10.19562/j.chinasae.qcgc.2024.06.008
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Lisheng Jin1,2,3,Hongyu Zhang1,Baicang Guo1,3()
Received:
2023-11-23
Revised:
2024-01-02
Online:
2024-06-25
Published:
2024-06-19
Contact:
Baicang Guo
E-mail:guobaicang@ysu.edu.cn
Lisheng Jin,Hongyu Zhang,Baicang Guo. Semi Solid-State LiDAR Object Detection Algorithm Enhanced by Feature Stability Enhancement[J].Automotive Engineering, 2024, 46(6): 1015-1024.
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算法 | 年份 | 3D Car (IoU=0.7) | 3D Ped(IoU=0.5) | 3D Cyc (IoU=0.5) | ||||||
---|---|---|---|---|---|---|---|---|---|---|
Easy | Mod | Hard | Easy | Mod | Hard | Easy | Mod | Hard | ||
VoxelNet[ | 2018 | 77.47 | 65.11 | 57.73 | 39.48 | 33.69 | 31.5 | 61.22 | 48.36 | 44.37 |
SECOND[ | 2018 | 84.65 | 75.96 | 68.71 | 45.31 | 35.52 | 33.14 | 75.83 | 60.82 | 53.67 |
PointPillars[ | 2019 | 82.58 | 74.31 | 68.99 | 51.45 | 41.92 | 38.89 | 77.10 | 58.65 | 51.92 |
Point-GNN[ | 2020 | 88.33 | 79.47 | 72.29 | 51.92 | 43.77 | 40.10 | 78.60 | 63.48 | 57.08 |
PointRCNN[ | 2020 | 86.96 | 75.64 | 70.70 | 51.92 | 43.77 | 40.10 | 78.60 | 63.48 | 57.08 |
TANet[ | 2020 | 84.39 | 75.94 | 68.82 | 53.72 | 44.34 | 40.49 | 75.70 | 59.44 | 52.53 |
Part-A2[ | 2020 | 87.81 | 78.49 | 73.51 | 53.10 | 43.35 | 40.06 | 79.17 | 63.52 | 56.93 |
IA-SSD[ | 2022 | 88.87 | 80.32 | 75.10 | 49.01 | 41.20 | 38.03 | 80.78 | 66.01 | 58.12 |
Ours | 89.82 | 81.49 | 75.78 | 50.88 | 42.67 | 39.82 | 81.21 | 66.51 | 58.43 |
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