4.7 Article

Artificial Intelligence-Based Surveillance System for Railway Crossing Traffic

Journal

IEEE SENSORS JOURNAL
Volume 21, Issue 14, Pages 15515-15526

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JSEN.2020.3031861

Keywords

Artificial intelligence; image processing; intelligent transportation system; object detection; railway crossing barrier; safety; security; traffic light

Funding

  1. Czech Ministry of Industry and Trade (MPO) [FV40372]
  2. Natural Sciences Research Council of Canada (NSERC) [RGPIN-2020-05363]

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The paper discusses the practical implementation of deep learning methods for safety and security improvement in a specific ITS scenario: railway crossings, introducing the proposed Artificial Intelligence-based Surveillance System for Railway Crossing Traffic (AISS4RCT). The system autonomously detects risky situations in real-time using GPU accelerated image processing techniques and deep neural networks, sending data to a central server for further processing and notification to relevant parties. Additionally, the system architecture emphasizes privacy-by-design and security-by-design best practices to protect personal data and enhance personal privacy.
The application of Artificial Intelligence (AI) based techniques has strong potential to improve safety and efficiency in data-driven Intelligent Transportation Systems (ITS) as well as in the emerging Internet of Vehicles (IoV) services. This paper deals with the practical implementation of deep learning methods for increasing safety and security in a specific ITS scenario: railway crossings. This research work presents our proposed system called Artificial Intelligence-based Surveillance System for Railway Crossing Traffic (AISS4RCT) that is based on a combination of detection and classification methods focusing on various image processing inputs: vehicle presence, pedestrian presence, vehicle trajectory tracking, railway barriers at railway crossings, railway warnings, and light signaling systems. The designed system uses cameras that are suitably positioned to capture an entire crossing area at a given railway crossing. By employing GPU accelerated image processing techniques and deep neural networks, the system autonomously detects risky and dangerous situations at railway crossing in real-time. In addition, camera modules send data to a central server for further processing as well as notification to interested parties (police, emergency services, railway operators). Furthermore, the system architecture employs privacy-by-design and security-by-design best practices in order to secure all communication interfaces, protect personal data, and to increase personal privacy, i.e., pedestrians, drivers. Finally, we present field-based results of detection methods, and using the YOLO tiny model method we achieve average recall 89%. The results indicate that our system is efficient for evaluating the occurrence of objects and situations, and it's practicality for use in railway crossings.

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