Machine Vision Approach for Automating Vegetation Detection on Railway Tracks

Author:

Yella Siril1,Nyberg Roger G.,Payvar Barsam1,Dougherty Mark1,Gupta Narendra K.2

Affiliation:

1. 1Department of Computer Engineering, Dalarna University, 781 70 Borlange, Sweden

2. 2School of Engineering and Built Environment, Edinburgh Napier University, EH10 5DT Edinburgh, UK

Abstract

AbstractThe presence of vegetation on railway tracks (amongst other issues) threatens track safety and longevity. However, vegetation inspections in Sweden (and elsewhere in the world) are currently being carried out manually. Manually inspecting vegetation is very slow and time consuming. Maintaining an even quality standard is also very difficult. A machine vision-based approach is therefore proposed to emulate the visual abilities of the human inspector. Work aimed at detecting vegetation on railway tracks has been split into two main phases. The first phase is aimed at detecting vegetation on the tracks using appropriate image analysis techniques. The second phase is aimed at detecting the rails in the image to determine the cover of vegetation that is present between the rails as opposed to vegetation present outside the rails. Results achieved in the current work indicate that the machine vision approach has performed reasonably well in detecting the presence/absence of vegetation on railway tracks when compared with a human operator.

Publisher

Walter de Gruyter GmbH

Subject

Artificial Intelligence,Information Systems,Software

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1. Remote Sensing and Machine Learning for Safer Railways: A Review;Applied Sciences;2024-04-24

2. Vegetation Detection in UAV Imagery for Railway Monitoring;Proceedings of the 7th International Conference on Vehicle Technology and Intelligent Transport Systems;2021

3. Assessing the Quality and Reliability of Visual Estimates in Determining Plant Cover on Railway Embankments;Web Information Systems Engineering – WISE 2016;2016

4. Reliability of Manual Assessments in Determining the Types of Vegetation on Railway Tracks;Lecture Notes in Computer Science;2015

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