Railways – Rail Track Surface Fault & Defect Detection Based on Deep Learning

Authors

  • Adki Nishanth Student, Department of Information Technology, University College of Engineering, Science & Technology Jawaharlal Nehru Technological University, India
  • Venkata rami reddy G Professor, Department of Information Technology, University College of Engineering, Science & Technology, Jawaharlal Nehru Technological University, India

DOI:

https://doi.org/10.5281/zenodo.8267254

Keywords:

Deep-learning, computer-vision, rail-tracks, surface faults, defects, R-CNN, proposed methodology

Abstract

The contemporary exigency for efficient and meticulous rail-track maintenance within the expansive realm of railway infrastructure necessitates the relentless pursuit of innovative approaches. This research, a harmonious symphony of cutting-edge deep-learning and sophisticated computer-vision, is poised to deliver unprecedented prowess in the detection of hitherto undetected surface faults and defects on rail tracks. Leveraging the transformative capabilities of Region-based Convolution-Neural-Networks (R-CNN), the proposed methodology strives to elucidate heretofore ambiguous cues that herald potential vulnerabilities. The resultant amalgamation of technology and technique promises to redefine the epochal paradigm of rail track maintenance.

Published

20-08-2023

How to Cite

Adki Nishanth, & Venkata rami reddy G. (2023). Railways – Rail Track Surface Fault & Defect Detection Based on Deep Learning. Journal of Scientific Research and Technology, 1(5), 51–57. https://doi.org/10.5281/zenodo.8267254