Skip to main content

Mobileye and Delphi partner on SAE Level 4/5 automated driving solution

Computer vision systems specialist Mobileye and Delphi Automotive, which specialises in automated driving software, are to collaborate to develop a complete SAE Level 4/5 automated driving solution. The solution will be based on key technologies from each company, including Mobileye's EyeQ 4/5 system on a chip (SoC) with sensor signal processing, fusion, world view generation and Road Experience Management (REM) system, which will be used for real time mapping and vehicle localisation. Delphi will inc
August 23, 2016 Read time: 2 mins
Computer vision systems specialist 4279 Mobileye and 7207 Delphi Automotive, which specialises in automated driving software, are to collaborate to develop a complete SAE Level 4/5 automated driving solution.

The solution will be based on key technologies from each company, including Mobileye's EyeQ 4/5 system on a chip (SoC) with sensor signal processing, fusion, world view generation and Road Experience Management (REM) system, which will be used for real time mapping and vehicle localisation.

Delphi will incorporate automated driving software algorithms from its Ottomatika acquisition, which include the path and motion planning features, and Delphi's Multi-Domain Controller (MDC) with the full camera, radar and LiDAR suite.

In addition, teams from both companies will develop the next generation of sensor fusion technology as well as the next generation human-like ‘driving policy’.  This module combines Ottomatika's driving behaviour modelling with Mobileye's deep reinforcement learning in order to yield driving capabilities necessary for negotiating with other human drivers and pedestrians in complex urban scenes.

For more information on companies in this article

Related Content

  • Adopting universal technology platforms for tolling
    July 16, 2012
    Dave Marples of Technolution argues that the continuing development of tolling-specific onboard equipment is leading us up a blind alley. We should, he says, be looking to realise universal platforms with universal application. The near-future automobile contains information systems of a sophistication to rival a jet airliner of only a few years ago, yet is 'piloted' by a considerably less well-trained individual of highly variable mental and physical capacity, and operated in a hostile, unpredictable and p
  • Siemens’ Stratos offers scalable solution
    May 31, 2013
    Developed using the latest cloud-based technology, Siemens says its Stratos system delivers scalable real-time traffic management, information and control, from basic monitoring to strategic control of complex urban traffic environments. Proven traffic management systems have been integrated to create Stratos and provide streamlined, seamless user interaction with access anywhere on smart mobile devices as well as traditional control rooms. Siemens says Stratos is the complete solution for car parking, VMS,
  • ADN’s Bled SaaS option eases driver stress
    July 23, 2019
    ADN Mobile Solutions has developed a technology-plus-training tool for bus operators which it says will reduce driver stress, cut emissions and improve the bottom line Public transit is at the heart of future urban mobility. The focus here is, quite rightly, on improving the experience for riders – but there is someone else in the chain who might be overlooked, despite being vital to the success of any operation: the driver. Bus drivers, for example, have a difficult job, combating congestion and the
  • Visteon cockpit concept learns the driver's habit
    May 20, 2013
    A cockpit concept that offers advice on a different route when there are delays on the usual road, or adjusts the cabin temperature based on the driver’s preferences and the outside temperature, has been developed by US automotive supplier Visteon. Habit offers these solutions and others by incorporating artificial intelligence (AI) to deliver an enhanced driving experience. Visteon's Human Bayesian Intelligence Technology (Habit) system employs machine learning algorithms that are cognisant of the specific