Skip to main content

Iteris enhances SmartCycle cycle detection

Iteris has released a third generation SmartCycle cycle detection and differentiation algorithm for its Vantage video detection platform. SmartCycle provides the unique capability of distinguishing cycles from other vehicles across all lanes of traffic. When a cycle is detected at an intersection, the system extends the green light for that phase, ensuring the cyclist is able to safely cross the intersection. This new generation enhances the accuracy and capabilities of the system to detect and diff
May 7, 2015 Read time: 2 mins
73 Iteris has released a third generation SmartCycle cycle detection and differentiation algorithm for its Vantage video detection platform.

SmartCycle provides the unique capability of distinguishing cycles from other vehicles across all lanes of traffic. When a cycle is detected at an intersection, the system extends the green light for that phase, ensuring the cyclist is able to safely cross the intersection.

This new generation enhances the accuracy and capabilities of the system to detect and differentiate cycles in unique situations such as bike boxes, lane splitting and other real-world and innovative configurations that are becoming more popular throughout the country. In addition to a more accurate and flexible detection algorithm, the system also provides enhancements in handling multiple approaching bicycles and improved bike counting accuracy.

“SmartCycle has been very successful and was the first in the industry to combine both vehicle and bicycle differentiation into a single detection system,” said Todd Kreter, senior vice president and general manager, Roadway Sensors at Iteris. “As we continue to improve and enhance our algorithms, the need for bicycle differentiation should continue to be at the forefront, ensuring proper detection of this growing mode of transportation on the roadways.”

SmartCycle is included in new installations of Iteris' Vantage video vehicle detection technology.

For more information on companies in this article

Related Content

  • Eco-Counter highlights Citix-3D at Intertraffic
    March 19, 2018
    French company Eco-Counter is highlighting several new products, including the Citix-3D, Zelt inductive loops, and Eco-Display Compact. The Eco-Counter is a wide-range counter capable of automatically counting and differentiating pedestrians, cyclists and vehicles simultaneously. The company says the technology used is the result of five years of R&D, in partnership with a top European Research Lab (CEA), and 15+ years of industry-leading expertise. It is protected by six international patents.
  • Econolite installs Autoscope Vision in Anaheim
    June 6, 2018
    Econolite has announced here at ITS America Detroit that the company has installed Autoscope Vision at more than 40 intersections in the city of Anaheim, California, overcoming unique challenges for a detection solution to help drive the city’s leading-edge ITS programme. The approaches in Anaheim are often five lanes wide, or even wider in some cases, creating a detection challenge that many standard types of detectors simply cannot meet. As a result, in the past, the city has had to rely on multiple de
  • The path to safer roads: America can learn from Europe’s example, says Verra Mobility
    May 1, 2024
    Many US states are establishing road safety programmes that will inspire others. TJ Tiedje, vice president commercial at Verra Mobility, explains why this is important
  • New ANPR solutions overcome variables
    May 18, 2018
    The sheer range of variables makes it difficult to find a single algorithm to ensure a 100% standard of ANPR. David Crawford investigates new processing technology. Automatic number plate recognition (ANPR), using optical character recognition and image-processing to identify vehicles, plays key roles in traffic monitoring and law enforcement, access and parking control, electronic toll collection, vehicle security and crime deterrence. Overall, system performance is well rated, with high levels of