Design of a Robust System Architecture for Tracking Vehicle on Highway Based on Monocular Camera

Sensors (Basel). 2022 Apr 27;22(9):3359. doi: 10.3390/s22093359.

Abstract

Multi-Target tracking is a central aspect of modeling the environment of autonomous vehicles. A mono camera is a necessary component in the autonomous driving system. One of the biggest advantages of the mono camera is it can give out the type of vehicle and cameras are the only sensors able to interpret 2D information such as road signs or lane markings. Besides this, it has the advantage of estimating the lateral velocity of the moving object. The mono camera is now being used by companies all over the world to build autonomous vehicles. In the expressway scenario, the forward-looking camera can generate a raw picture to extract information from and finally achieve tracking multiple vehicles at the same time. A multi-object tracking system, which is composed of a convolution neural network module, depth estimation module, kinematic state estimation module, data association module, and track management module, is needed. This paper applies the YOLO detection algorithm combined with the depth estimation algorithm, Extend Kalman Filter, and Nearest Neighbor algorithm with a gating trick to build the tracking system. Finally, the tracking system is tested on the vehicle equipped with a forward mono camera, and the results show that the lateral and longitudinal position and velocity can satisfy the need for Adaptive Cruise Control (ACC), Navigation On Pilot (NOP), Auto Emergency Braking (AEB), and other applications.

Keywords: Extended Kalman Filter; Navigation On Pilot; YOLO; mono camera; multi-target tracking.

MeSH terms

  • Algorithms
  • Automobile Driving*
  • Neural Networks, Computer

Grants and funding

This work was funded by the Perspective Study Funding of Nanchang Automotive Institute of Intelligence and New Energy, Tongji University (TPD-TC202110-13).