Detection of Rail Line Track and Human Beings Near the Track to Avoid Accidents
Journal:
arXiv
Published Date:
Jul 3, 2025
Abstract
This paper presents an approach for rail line detection and the
identification of human beings in proximity to the track, utilizing the YOLOv5
deep learning model to mitigate potential accidents. The technique incorporates
real-time video data to identify railway tracks with impressive accuracy and
recognizes nearby moving objects within a one-meter range, specifically
targeting the identification of humans. This system aims to enhance safety
measures in railway environments by providing real-time alerts for any detected
human presence close to the track. The integration of a functionality to
identify objects at a longer distance further fortifies the preventative
capabilities of the system. With a precise focus on real-time object detection,
this method is poised to deliver significant contributions to the existing
technologies in railway safety. The effectiveness of the proposed method is
demonstrated through a comprehensive evaluation, yielding a remarkable
improvement in accuracy over existing methods. These results underscore the
potential of this approach to revolutionize safety measures in railway
environments, providing a substantial contribution to accident prevention
strategies.