Parking Network is the leading online platform for Parking Professionals worldwide

What else is on Parking Network?

What is Parking Network?

omniQ’s Q Shield™ AI-Based Machine Vision Safe City System, to Be Deployed in the City of McRae-Helena Georgia

The System Uses Patented Neural Network Algorithms That Imitate Human Brains for Pattern Recognition and Decision-Making

- SALT LAKE CITY
The system uses patented Neural Network algorithms that imitate human brains for pattern recognition and decision-making.

OMNIQ Corp. (NASDAQ: OMQS) (“OMNIQ” or “the Company”), a provider of Artificial Intelligence (AI)-based solutions, today announced that the Company has been selected by the City of McRae Helena, Georgia (GA) to deploy its Q Shield vehicle recognition systems (VRS) technology and its cloud-based citation management platform. This technology identifies any vehicle driving through the city which is on a National Crime Information Center (NCIC) database or the city's local Bureau of Investigations Database and cites violators who drive through the city with outstanding traffic violations as well as other alerts such as unregistered or uninsured vehicles.

Shai Lustgarten, CEO commented “Our AI based Safe City system continues to gain traction and in only a short period of time, has already proved successful to the initial towns deployed with safety results and revenue generation exceeding our expectations. The City of McRea Helena brings our count in GA to 7 and our overall contracted cites to 17. As our pipeline continues to gain momentum and our software outperforms, we are even more confident that our Safe City vertical will have a meaningful impact on our path to profitability. Our goal continues to be focused on improving everyday lives with an unbiased approach while impacting the economic strength of our trusted cites across the country through our unique offering / revenue share model. We look forward to deploying many more systems as awareness among communities across the country consistently grows.

OMNIQ’s AI-based machine vision VRS solution is used for terror prevention including in sensitive areas in the middle east, for crime prevention in the US and South America, for automation of parking and recently penetrated verticals including the vast Quick Service Restaurants (QSR), and Retail sectors providing significant data collection and analysis. The system uses patented Neural Network algorithms that imitate human brains for pattern recognition and decision-making. More than 17,000 OMNIQ AI-based machine vision sensors are installed worldwide, including approximately 7,000 in the U.S. Based on superior accuracy and patented features like identification of make and color combined with superior accuracy based on the sophisticated algorithm and machine learning that largely depends on accumulated data provided by thousands of sensors already deployed.

About omniQomniQ Logo

omniQ provides computerized and machine vision image processing solutions that use patented and proprietary AI technology to deliver data collection, real-time surveillance and monitoring for supply chain management, homeland security, public safety, traffic & parking management and access control applications. The technology and services provided by the Company help clients move people, assets and data safely and securely through airports, warehouses, schools, national borders, and many other applications and environments.

omniQ’s customers include government agencies and leading Fortune 500 companies from several sectors, including manufacturing, retail, distribution, food and beverage, transportation and logistics, healthcare, and oil, gas, and chemicals. Since 2014, annual revenues have grown to more than $50 million from clients in the USA and abroad.

The Company currently addresses several billion-dollar markets, including the Global Safe City market, forecast to grow to $29 billion by 2022, and the Ticketless Safe Parking market, forecast to grow to $5.2 billion by 2023. For more information, visit www.omniq.com.

Comments

There are no comments yet for this item

Join the discussion

You can only add a comment when you are logged in. Click here to login