English

A Point-Based Approach to Efficient LiDAR Multi-Task Perception

Computer Vision and Pattern Recognition 2024-04-22 v1

Abstract

Multi-task networks can potentially improve performance and computational efficiency compared to single-task networks, facilitating online deployment. However, current multi-task architectures in point cloud perception combine multiple task-specific point cloud representations, each requiring a separate feature encoder and making the network structures bulky and slow. We propose PAttFormer, an efficient multi-task architecture for joint semantic segmentation and object detection in point clouds that only relies on a point-based representation. The network builds on transformer-based feature encoders using neighborhood attention and grid-pooling and a query-based detection decoder using a novel 3D deformable-attention detection head design. Unlike other LiDAR-based multi-task architectures, our proposed PAttFormer does not require separate feature encoders for multiple task-specific point cloud representations, resulting in a network that is 3x smaller and 1.4x faster while achieving competitive performance on the nuScenes and KITTI benchmarks for autonomous driving perception. Our extensive evaluations show substantial gains from multi-task learning, improving LiDAR semantic segmentation by +1.7% in mIou and 3D object detection by +1.7% in mAP on the nuScenes benchmark compared to the single-task models.

Keywords

Cite

@article{arxiv.2404.12798,
  title  = {A Point-Based Approach to Efficient LiDAR Multi-Task Perception},
  author = {Christopher Lang and Alexander Braun and Lars Schillingmann and Abhinav Valada},
  journal= {arXiv preprint arXiv:2404.12798},
  year   = {2024}
}

Comments

8 pages, 3 figures, 8 tables

R2 v1 2026-06-28T15:59:42.207Z