The Sensor Dilemma in Intelligent Transportation Systems: Evaluating Radar, Lidar and Camera: Preprint

Research output: Contribution to conferencePaper

Abstract

Intelligent transportation systems (ITS) are at the forefront in advancing the way we interact with and perceive the transportation network. This revolution is fueled by the significant advancement in sensor perception technologies such as radar, lidar, and video imaging, which are the most popular modalities for ITS. Real-time perception data from these sensors allow intelligent infrastructure-side decision-making to improve the energy, efficiency, and safety at traffic intersections. As traffic departments across the United States transition from traditional loop detectors and emulators and embrace newer technologies, they are often left with a dilemma in choosing a sensor technology for infrastructure-based perception that is reliable, inexpensive, and easy to set up and that has robust performance in varying weather conditions. However, choosing a sensor that checks all these boxes is not straightforward, as every sensor type has unique benefits and drawbacks. Radar is excellent at detecting long-range vehicles and weather resistance but lacks high resolution. Lidar is expensive and weather-sensitive, while cameras provide rich visual data at a low cost but are constrained by lighting and visibility. This study examines radar, lidar, and camera sensor capabilities to ascertain whether any of these qualifies as the "best" sensor for ITS perception. While no single sensor can meet all the demands of ITS, a hybrid approach combining multiple sensor modalities like radar, lidar, and cameras offers the most robust solution for enhancing the safety and efficiency of ITS. Through this evaluation, we hope to draw attention to the necessity of the National Renewable Energy Laboratory's infrastructure perception and control framework, which presents a multisensor track data fusion engine to assimilate multiple data streams in order to provide robust and reliable perception.
Original languageAmerican English
Number of pages15
StatePublished - 2025
EventASCE International Conference on Transportation & Development (ICTD 2025) - Glendale, Arizona
Duration: 8 Jun 202511 Jun 2025

Conference

ConferenceASCE International Conference on Transportation & Development (ICTD 2025)
CityGlendale, Arizona
Period8/06/2511/06/25

Bibliographical note

See NREL/CP-5400-96152 for paper as published in proceedings

NLR Publication Number

  • NREL/CP-5400-91797

Keywords

  • camera
  • cooperative perception
  • digital twin
  • intelligent transportation system
  • lidar
  • radar
  • vulnerable road user

Fingerprint

Dive into the research topics of 'The Sensor Dilemma in Intelligent Transportation Systems: Evaluating Radar, Lidar and Camera: Preprint'. Together they form a unique fingerprint.

Cite this