Ultra-layered perception with brain-inspired information processing for vehicle collision avoidance (ULTRACEPT)

Basic data for this project

Type of projectEU-project hosted outside University of Münster
Duration at the University of Münster01/12/2018 - 30/09/2024

Description

Autonomous vehicles, although in its early stage, have demonstrated huge potential in shaping future life styles to many of us. However, to be accepted by ordinary users, autonomous vehicles have a critical issue to solve – this is trustworthy collision detection. No one likes an autonomous car that is doomed to a collision accident once every few years or months. In the real world, collision does happen at every second - more than 1.3 million people are killed by road accidents every single year. The current approaches for vehicle collision detection such as vehicle to vehicle communication, radar, laser based Lidar and GPS are far from acceptable in terms of reliability, cost, energy consumption and size. For example, radar is too sensitive to metallic material, Lidar is too expensive and it does not work well on absorbing/reflective surfaces, GPS based methods are difficult in cities with high buildings, vehicle to vehicle communication cannot detect pedestrians or any objects unconnected, segmentation based vision methods are too computing power thirsty to be miniaturized, and normal vision sensors cannot cope with fog, rain and dim environment at night. To save people’s lives and to make autonomous vehicles safer to serve human society, a new type of trustworthy, robust, low cost, and low energy consumption vehicle collision detection and avoidance systems are badly needed.This consortium proposes an innovative solution with brain-inspired multiple layered and multiple modalities information processing for trustworthy vehicle collision detection. It takes the advantages of low cost spatial-temporal and parallel computing capacity of bio-inspired visual neural systems and multiple modalities data inputs in extracting potential collision cues at complex weather and lighting conditions.

KeywordsInformatik; autonomes Fahren
Funding identifier778062
Funder / funding scheme
  • EC H2020 - Marie Skłodowska-Curie Actions - Research and Innovation Staff Exchange (MSCA RISE)

Project management at the University of Münster

Jiang, Xiaoyi
Professur für Praktische Informatik (Prof. Jiang)

Applicants from the University of Münster

Jiang, Xiaoyi
Professur für Praktische Informatik (Prof. Jiang)

Project partners outside the University of Münster

  • Chinese Academy of Sciences (CAS)China
  • Universität HamburgGermany
  • Tsinghua UniversityChina
  • UNIVERSITY OF LINCOLNUnited Kingdom
  • University of GuizhouChina
  • Universiti Putra Malaysia (UPM)Malaysia
  • Tokyo University of Agriculture and TechnologyJapan
  • Universidad de Buenos AiresArgentina
  • Huazhong University of Science and TechnologyChina
  • Northwestern Polytechnical UniversityChina
  • Xi'an Jiaotong UniversityChina
  • Lingnan University CollegeChina
  • Newcastle University (UNCL)United Kingdom
  • VisoMorphic Technology LtdUnited Kingdom
  • Dino Robotics GmbHGermany

Coordinating organisations outside the University of Münster

  • UNIVERSITY OF LINCOLNUnited Kingdom