Skip to main content

AIT powers up traffic AI Box set

Mobility Observation Box allows comparable, meaningful risk-based assessment of data
By Adam Hill April 7, 2022 Read time: 2 mins
The battery-operated system is quick and easy to install and de-install, the organisation says (© AIT)

Researchers from the Austrian Institute of Technology (AIT), in cooperation with Transoft Solutions, have developed a solution for measuring traffic conditions and ‘conflicts’ between vehicles on the road. 

The Mobility Observation Box (MOB), which sits at the roadside, collects video data on the effects of various infrastructural and traffic engineering measures on the risk of collisions and injuries.

It makes it possible to measure the safety of transport infrastructure according to objective criteria. This means, AIT says, that it allows comparable, meaningful risk-based assessment of data.

Machine learning algorithms and artificial intelligence automatically recognise different groups of road users – such as pedestrians, cyclists, cars, trucks or e-scooters – and evaluate how they move, which provides a basis for targeted mitigation measures. 

All road users within a traffic scene can be monitored to a high degree of precision, in a repeatable and unobtrusive way. Each road user is detected, classified, and tracked.

This data is then used to assess and provide metrics on road safety (such as near-collision and speeding incidents), as well as traffic flow conditions (volumes and speeds, for example). A better understanding of the conditions which lead up to a collision helps road authorities to improve infrastructure without relying solely on historical collision data.

MOB can also be used to plan or retrofit road systems to determine cost-effective recommendations for specific traffic safety measures.

The battery-operated system is quick and easy to install and de-install and does not require a supplemental power source. As it is small, traffic is not distracted or influenced by the MOB’s presence, the researchers say.
 

For more information on companies in this article

Related Content

  • Intersection monitoring from video using 3D reconstruction
    March 9, 2016
    Researchers Yuting Yang, Camillo Taylor and Daniel Lee have developed a system to turn surveillance cameras into traffic counters. Traffic information can be collected from existing inexpensive roadside cameras but extracting it often entails manual work or costly commercial software. Against this background the Delaware Valley Regional Planning Commission (DVRPC) was looking for an efficient and user-friendly solution to extract traffic information from videos captured from road intersections.
  • Statistical improvement for short-term travel time predictions
    June 2, 2014
    Researchers at Imperial College in London have developed a generic three-stage short-term travel prediction model that promises to give greater accuracy under both normal and abnormal conditions. As travellers do not like the randomness of non-recurrent traffic congestion and delays, it is particularly useful for network managers to know how the ongoing traffic situation will develop when an atypical event occurs.
  • Machine vision’s transport offerings move on apace
    June 30, 2016
    Colin Sowman considers some of the latest advances in camera technology and transport-related vision technology applications. Vision technology in the transportation sector is moving apace as technical developments on both the hardware and software sides combine to make cameras more multifunctional with a single digital camera now able to cover a multitude of tasks.
  • Commsignia applies V2X to cyclist safety 
    February 21, 2022
    Spoke says partnership will offer an algorithm that puts VRUs on the map