Learning Object Detection Technology in Smart Sustainable Urban Transport Systems Cover Image
  • Price 4.50 €

Learning Object Detection Technology in Smart Sustainable Urban Transport Systems
Learning Object Detection Technology in Smart Sustainable Urban Transport Systems

Author(s): Miloš Poliak, Rafał Jurecki, Kathryn Buckner
Subject(s): Social development
Published by: Addleton Academic Publishers
Keywords: autonomous vehicle; routing; navigation; deep learning object detection

Summary/Abstract: Based on an in-depth survey of the literature, the purpose of the paper is to explore autonomous vehicle routing and navigation, mobility simulation and traffic flow prediction tools, and deep learning object detection technology in smart sustainable urban transport systems. We contribute to the literature by indicating that multi-sensor environmental data fusion, environment perception systems, and deep convolutional neural networks are pivotal in connected autonomous vehicles. Throughout April 2022, a quantitative literature review of the Web of Science, Scopus, and ProQuest databases was performed, with search terms including “smart sustainable urban transport systems” + “autonomous vehicle routing and navigation,” “mobility simulation and traffic flow prediction tools,” and “deep learning object detection technology.” As research published between 2021 and 2022 was inspected, only 89 articles satisfied the eligibility criteria. By taking out controversial or ambiguous findings (insufficient/irrelevant data), outcomes unsubstantiated by replication, too general material, or studies with nearly identical titles, we selected 15 mainly empirical sources. Data visualization tools: Dimensions (bibliometric mapping) and VOSviewer (layout algorithms). Reporting quality assessment tool: PRISMA. Methodological quality assessment tools include: AMSTAR, Dedoose, Distiller SR, and SRDR.

  • Issue Year: 14/2022
  • Issue No: 1
  • Page Range: 25-40
  • Page Count: 16
  • Language: English