Technology

Understanding The Opportunities for AI-Cameras and LiDARs for Smart Road Infrastructure

Published by Jessica Weisman-Pitts

Posted on March 25, 2022

4 min read

· Last updated: February 8, 2026

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AI-enhanced traffic camera monitoring smart road infrastructure - Global Banking & Finance Review
This image illustrates AI-enhanced traffic cameras and LiDAR technology integrated into smart road infrastructure, showcasing advancements in road safety and traffic management as discussed in the article.
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As the Consumer Electronics Show (CES) in January sparked a new wave of autonomous vehicles (AVs) coming to the automotive market in the next few years, much focus as of late has been on the technology of these vehicles themselves. However, the technology embedded in road infrastructure is also beginning to see more conversation between […]

DUBAI. UNITED ARAB EMIRATES, 20 June 2017. DERQ Co-Founder and CEO Dr Georges Aoude who’s start-up has raised $1Million in Middle East Investment. (Photo: Antonie Robertson) Journalist: Nick Webster. Section: National.

As the Consumer Electronics Show (CES) in January sparked a new wave of autonomous vehicles (AVs) coming to the automotive market in the next few years, much focus as of late has been on the technology of these vehicles themselves. However, the technology embedded in road infrastructure is also beginning to see more conversation between service providers and municipalities.

With advancements in artificial intelligence (AI) and 5G network connectivity, smart-road infrastructure technology offers the promise of being added to many different roads, bridges, and other transit systems across the U.S. in hopes of improving real-time traffic analytics and tackling the most challenging road safety and traffic management problems. One technology at the center of this discussion is on the present-day use of AI-enhanced cameras and tomorrow’s promise of LiDAR technology.

Artificial Intelligence Will Enhance Camera Sensing Performance

Today there are hundreds of thousands of traffic cameras deployed in the U.S. alone, and even millions more when CCTV cameras are considered. They are mainly used for road monitoring and basic traffic management applications (e.g., loop emulation). However, bringing the latest advancements of AI to these assets can immediately improve basic application performance and unlock more advanced software applications and use-cases.

AI and Machine Learning deliver superior sensing performance over traditional computer vision techniques found in legacy cameras. They enable more robust, flexible, and accurate detection, tracking and classification of all road users with algorithms that can automatically adapt to various lighting and weather conditions. In addition, they allow for predictive capabilities to better model road user movements and behaviors, and improve road safety. Agencies can immediately benefit from AI-enhanced cameras with applications such as road conflict detection and analysis, pedestrian crossing prediction and infrastructure sensing for AV deployments.

LiDAR Technology Cannot Fully Replace Cameras

LiDARs can provide complementary and sometimes overlapping value with cameras, however there are still several safety critical edge cases where LiDAR’s technology does not perform well (e.g., heavy rain and snow, granular classification), and where cameras have been proven to handle better. Moreover, today’s LiDARs technology remains expensive to deploy at scale due to its high unit price and limited field of view. As an example, it would take multiple LiDARs at a hefty investment to be deployed in a single intersection, where just one 360-degree AI-camera can be a more cost-effective solution.

For many budget-focused communities, AI-cameras remain the proven technology of choice today. Over time, as the cost of LiDAR technology moderates, communities should evaluate augmenting their infrastructure with such sensors.

Eventually, Sensor Fusion Will Drive Strong Results

When the cost of LiDAR technology eventually sees an anticipated reduction it will be viewed as a strong and viable addition to the AI-enhanced cameras that are being installed today. Similar to autonomous vehicles, sensor fusion would be the go-to approach for smart infrastructure solutions and would allow to maximize the benefits of both technologies.

See table below.

Relative Performance Comparison of Cameras vs. Lidars Today

Feature Legacy Camera AI-powered Camera 1 Lidar AI-powered Camera and Lidar Fusion Challenging lighting (low light, glare) Low Medium High High Adverse weather conditions (snow, rain, fog) Low High Medium High Localization Low Medium High High Classification Low High Medium High Affordability High Medium Low2 Low2

  1. Assumes presence of IR or good low-light sensor

  2. Expected to improve with time

The use of a cost-effective and performing AI-powered camera today, combined with the great potential of LiDAR in the coming years could help communities and municipalities achieve a win-win scenario today and tomorrow.

At the end of the day, the goal is clear in improving overall traffic flow and diminishing vehicle crashes and fatalities, but the technology and implementation strategy has to be right in doing so. The technology monitoring our roads needs to change too, thus calling for the consideration of AI-powered cameras today with the promise of LiDAR tomorrow.

About the Author:

Dr. Georges Aoude is the co-founder of Derq, an MIT spinoff powering the future of connected and autonomous roads, making cities smarter and safer for all road users, and enabling the deployment of autonomous vehicles at scale. Derq provides cities and fleets with an award-winning and patented smart infrastructure Platform powered by AI that helps them tackle the most challenging road safety and traffic management problems.

Frequently Asked Questions

What is artificial intelligence?
Artificial intelligence (AI) refers to the simulation of human intelligence processes by machines, particularly computer systems, enabling them to perform tasks such as learning, reasoning, and problem-solving.
What is LiDAR?
LiDAR, or Light Detection and Ranging, is a remote sensing method that uses light in the form of a pulsed laser to measure distances to the Earth, creating precise, three-dimensional information about the shape of the Earth and its surface characteristics.
What is sensor fusion?
Sensor fusion is the process of integrating data from multiple sensors to produce more accurate, reliable, and comprehensive information than could be obtained from any single sensor alone.
What is predictive analytics?
Predictive analytics involves using statistical algorithms and machine learning techniques to identify the likelihood of future outcomes based on historical data.

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