Pvafn: Point-Voxel Attention Fusion Network with Multi-Pooling Enhancing for 3d Object Detection

21 Pages Posted: 9 Dec 2024

See all articles by Yidi Li

Yidi Li

Taiyuan University of Technology

Jiahao Wen

Taiyuan University of Technology

Rui Gong

Taiyuan University of Technology

Bin Ren

University of Pisa

Wenhao Li

Peking University

Chen Cheng

Taiyuan University of Technology

Hong Liu

Peking University

Nicu Sebe

University of Trento

Abstract

The integration of point and voxel representations is becoming more common in LiDAR-based 3D object detection. However, this combination often struggles with capturing semantic information effectively. Moreover, relying solely on point features within regions of interest can lead to information loss and limitations in local feature representation. To tackle these challenges, we propose a novel two-stage 3D object detector, called Point-Voxel Attention Fusion Network (PVAFN). PVAFN leverages an attention mechanism to improve multi-modal feature fusion during the feature extraction phase. In the refinement stage, it utilizes a multi-pooling strategy to integrate both multi-scale and region-specific information effectively. The point-voxel attention mechanism adaptively combines point cloud and voxel-based Bird’s-Eye-View (BEV) features, resulting in richer object representations that help to reduce false detections. Additionally, a multi-pooling enhancement module is introduced to boost the model's perception capabilities. This module employs cluster pooling and pyramid pooling techniques to efficiently capture key geometric details and fine-grained shape structures, thereby enhancing the integration of local and global features. Extensive experiments on the KITTI and Waymo datasets demonstrate that the proposed PVAFN achieves competitive performance. The code and models will be available.

Keywords: 3D object detection, point-voxel fusion, attention model, pooling enhancement

Suggested Citation

Li, Yidi and Wen, Jiahao and Gong, Rui and Ren, Bin and Li, Wenhao and Cheng, Chen and Liu, Hong and Sebe, Nicu, Pvafn: Point-Voxel Attention Fusion Network with Multi-Pooling Enhancing for 3d Object Detection. Available at SSRN: https://ssrn.com/abstract=5049131 or http://dx.doi.org/10.2139/ssrn.5049131

Yidi Li (Contact Author)

Taiyuan University of Technology ( email )

No.79 West Yingze Street
Taiyuan
China

Jiahao Wen

Taiyuan University of Technology ( email )

No.79 West Yingze Street
Taiyuan
China

Rui Gong

Taiyuan University of Technology ( email )

No.79 West Yingze Street
Taiyuan
China

Bin Ren

University of Pisa ( email )

Lungarno Pacinotti, 43
Pisa PI, 56126
Italy

Wenhao Li

Peking University ( email )

No. 38 Xueyuan Road
Haidian District
Beijing, 100871
China

Chen Cheng

Taiyuan University of Technology ( email )

No.79 West Yingze Street
Taiyuan
China

Hong Liu

Peking University ( email )

No. 38 Xueyuan Road
Haidian District
Beijing, 100871
China

Nicu Sebe

University of Trento ( email )

Via Giuseppe Verdi 26
Trento, 38152
Italy

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