Vehicles (Mar 2024)

A Curb-Detection Network with a Tri-Plane BEV Encoder Module for Autonomous Delivery Vehicles

  • Lu Zhang,
  • Jinzhu Wang,
  • Xichan Zhu,
  • Zhixiong Ma

DOI
https://doi.org/10.3390/vehicles6010024
Journal volume & issue
Vol. 6, no. 1
pp. 539 – 552

Abstract

Read online

Curb detection tasks play a crucial role in the perception of the autonomous driving environment for logistics vehicles. With the popularity of multi-modal sensors under the BEV (Bird’s Eye View) paradigm, curb detection tasks are increasingly being integrated into multi-task perception networks, achieving robust detection results. This paper modifies and integrates the tri-plane spatial feature representation method of the EG3D network from the field of 3D reconstruction into a BEV-based multi-modal sensor detection network, including LiDAR, pinhole cameras, and fisheye cameras. The system collects a total of 24,350 frames of data under real road conditions for experimentation, proving the effectiveness of the proposed method.

Keywords