TY - JOUR
T1 - Outdoor 3D Object Detection Method Based on Multi-Direction Features Fusion
AU - Lei, Jiaming
AU - Yu, Hui
AU - Xia, Yu
AU - Guo, Jielong
AU - Wei, Xian
N1 - Publisher Copyright:
© 2023, Editorial Office of Computer Engineering. All rights reserved.
PY - 2023/11/15
Y1 - 2023/11/15
N2 - The 3D object detection method is one of the significant technologies in the environmental perception of autonomous driving. However, most existing 3D object detection methods have the problem of inaccurate position recognition and large orientation deviation. To address these issues, a 3D object detection method based on multi-direction features fusion is proposed. First, to perform data encoding for a point cloud scenario, modeling distance and angle and transforming into pseudo image. Second, a multi-direction feature-fusion backbone is proposed for features extraction and fusion. Finally, based on the fused features, a center-based detector regresses and predicts potential objects. Distance-angle modeling can supply the relationship between points and enrich features. The multi-direction feature-fusion backbone enhances the ability of features extraction and improves the accuracy of position and orientation estimation. The experimental results show that the mean Average Precision(mAP)of this method on the KITTI and nuScenes datasets was 64.28% and 50.17%, respectively, which is an improvement of 0.36 and 1.30 percentage points, respectively, compared to those of the suboptimal method. In addition, the best Average Orientation Similarity(AOS)and mean Average Orientation Error(mAOE)were achieved in the orientation prediction accuracy comparison experiments. The generalization experimental results verified that the proposed multi-direction feature-fusion backbone network can improve network detection ability and significantly reduce the number of parameters, thereby improving the application performance of the detection method.
AB - The 3D object detection method is one of the significant technologies in the environmental perception of autonomous driving. However, most existing 3D object detection methods have the problem of inaccurate position recognition and large orientation deviation. To address these issues, a 3D object detection method based on multi-direction features fusion is proposed. First, to perform data encoding for a point cloud scenario, modeling distance and angle and transforming into pseudo image. Second, a multi-direction feature-fusion backbone is proposed for features extraction and fusion. Finally, based on the fused features, a center-based detector regresses and predicts potential objects. Distance-angle modeling can supply the relationship between points and enrich features. The multi-direction feature-fusion backbone enhances the ability of features extraction and improves the accuracy of position and orientation estimation. The experimental results show that the mean Average Precision(mAP)of this method on the KITTI and nuScenes datasets was 64.28% and 50.17%, respectively, which is an improvement of 0.36 and 1.30 percentage points, respectively, compared to those of the suboptimal method. In addition, the best Average Orientation Similarity(AOS)and mean Average Orientation Error(mAOE)were achieved in the orientation prediction accuracy comparison experiments. The generalization experimental results verified that the proposed multi-direction feature-fusion backbone network can improve network detection ability and significantly reduce the number of parameters, thereby improving the application performance of the detection method.
KW - 3D object detection
KW - autonomous driving
KW - lidar
KW - machine vision
KW - point cloud
UR - https://www.scopus.com/pages/publications/85185968874
U2 - 10.19678/j.issn.1000-3428.0066214
DO - 10.19678/j.issn.1000-3428.0066214
M3 - 文章
AN - SCOPUS:85185968874
SN - 1000-3428
VL - 49
SP - 238
EP - 246
JO - Jisuanji Gongcheng/Computer Engineering
JF - Jisuanji Gongcheng/Computer Engineering
IS - 11
ER -