Skip to main content

Tattile targets multi-lane free-flow tolling with Smart+

Camera has 'unparalleled levels of performance and accuracy', manufacturer says
August 25, 2023 Read time: 2 mins
Integration of Dual AI Accelerator is a 'game-changer', Tattile says

The realm of ITS is on the cusp of a groundbreaking advancement as Tattile gears up to launch its Smart+ camera. 

Engineered with cutting-edge technology, this revolutionary camera boasts a Dual AI Accelerator that promises to transform challenging multi-lane free-flow (MLFF) tolling applications. At the heart of the Smart+ camera lies its dedicated hardware for AI algorithms. 

Unlike conventional cameras relying on general-purpose processors, Tattile's creation is purpose-built to excel in neural detection and optical character recognition (OCR). By dedicating specific hardware resources to these tasks, the camera can achieve unparalleled levels of performance and accuracy, thus optimising the entire tolling process. 

The integration of Dual AI Accelerator is a game-changer. Designed with two independent channels, the camera can simultaneously process data streams, making it ideal for multi-lane tolling applications. This breakthrough innovation translates to maximum transit detection performance, boasting an impressive accuracy rate of over 99.5%. 

Even in high-traffic scenarios, the Smart+ camera guarantees real-time and reliable detection, ensuring seamless toll collection and reduced congestion. Equally impressive is the camera's neural OCR at frame-rate capability, delivering outstanding plate-reading performance exceeding 98.5%, subject to variations across countries. 

Regardless of the licence plate format or language, the Smart+ camera can rapidly and accurately capture vehicle information. This feature is indispensable for tolling authorities and law enforcement agencies alike, enabling precise tracking of vehicles and streamlined toll management. 

Additionally, the camera's architecture is future-proof, allowing for seamless updates and customisation to accommodate evolving tolling requirements. As technologies and standards evolve, the Smart+ camera can effortlessly adapt, safeguarding investments and prolonging its lifespan in the ever-changing ITS landscape. 

As it hits the market, the Smart+ camera is set to revolutionise the tolling industry and contribute to a smarter, more connected, and sustainable transportation ecosystem.

Content produced in association with Tattile

 

For more information on companies in this article

Related Content

  • Kapsch sets up Gothenburg free-flow
    July 14, 2022
    Existing tolling stations will be fully replaced covering 138 lanes in the Swedish city
  • IR’s invisible benefit for traffic surveillance and enforcement
    June 30, 2016
    Advances in vision technology are enhancing traffic surveillance and enforcement applications. Variable lighting conditions have long been a stumbling block for vision technology applications in the transport sector. With applications such as ANPR, the read-rate may vary between daylight and night and can be adversely affected by glare and low sun. Madrid, Spain-based Lector Vision had these considerations in mind when designing its Traffic Eye ANPR system, which combines off-the-shelf and custom hardware
  • AVT cameras, part of a new generation of ETC
    August 20, 2015
    Allied Vision Technologies (AVT) has supplied Norwegian company Q-Free with its high performance machine vision cameras for use in electronic toll collection (ETC) systems. Q-Free has developed an ETC installation based on a single gantry which relies on the latest machine imaging systems, radio systems and automatic license plate recognition (ALPR) software technologies to collect toll data. This versatile system is designed to do pure video tolling or a combination of video and radio tolling depending
  • Machine vision makes progress in traffic applications
    June 2, 2014
    Machine Vision technology is easing the burden on hard-pressed control room staff and overloaded communications networks.