Cargando…

A Rail Fastener Tightness Detection Approach Using Multi-source Visual Sensor

At present, the method of two-dimensional image recognition is mainly used to detect the abnormal fastener in the rail-track inspection system. However, the too-tight-or-too-loose fastener condition may cause the clip of the fastener to break or loose due to the high frequency vibration shock, which...

Descripción completa

Detalles Bibliográficos
Autores principales: Han, Qiang, Wang, Shengchun, Fang, Yue, Wang, Le, Du, Xinyu, Li, Hailang, He, QiXin, Feng, Qibo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7085639/
https://www.ncbi.nlm.nih.gov/pubmed/32131489
http://dx.doi.org/10.3390/s20051367
_version_ 1783508978068619264
author Han, Qiang
Wang, Shengchun
Fang, Yue
Wang, Le
Du, Xinyu
Li, Hailang
He, QiXin
Feng, Qibo
author_facet Han, Qiang
Wang, Shengchun
Fang, Yue
Wang, Le
Du, Xinyu
Li, Hailang
He, QiXin
Feng, Qibo
author_sort Han, Qiang
collection PubMed
description At present, the method of two-dimensional image recognition is mainly used to detect the abnormal fastener in the rail-track inspection system. However, the too-tight-or-too-loose fastener condition may cause the clip of the fastener to break or loose due to the high frequency vibration shock, which is difficult to detect from the two-dimensional image. In this practical application background, 3D visual detection technology provides a feasible solution. In this paper, we propose a fundamental multi-source visual data detection method, as well as an accurate and robust fastener location and nut or bolt segmentation algorithm. By combining two-dimensional intensity information and three-dimensional depth information generated by the projection of line structural light, the locating of nut or bolt position and accurate perception of height information can be realized in the dynamic running environment of railway. The experimental results show that the static measurement accuracy in the vertical direction using the structural light vision sensor is 0.1 mm under the laboratory condition, and the dynamic measurement accuracy is 0.5 mm under the dynamic train running environment. We use dynamic template matching algorithm to locate fasteners from 2D intensity map, which achieves 99.4% accuracy, then use the watershed algorithm to segment the nut and bolt from the corresponding depth image of located fastener. Finally, the 3D shape of the nut and bolt is analyzed to determine whether the nut or bolt height meets the local statistical threshold requirements, so as to detect the hidden danger of railway transportation caused by too loose or too tight fasteners.
format Online
Article
Text
id pubmed-7085639
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-70856392020-04-21 A Rail Fastener Tightness Detection Approach Using Multi-source Visual Sensor Han, Qiang Wang, Shengchun Fang, Yue Wang, Le Du, Xinyu Li, Hailang He, QiXin Feng, Qibo Sensors (Basel) Article At present, the method of two-dimensional image recognition is mainly used to detect the abnormal fastener in the rail-track inspection system. However, the too-tight-or-too-loose fastener condition may cause the clip of the fastener to break or loose due to the high frequency vibration shock, which is difficult to detect from the two-dimensional image. In this practical application background, 3D visual detection technology provides a feasible solution. In this paper, we propose a fundamental multi-source visual data detection method, as well as an accurate and robust fastener location and nut or bolt segmentation algorithm. By combining two-dimensional intensity information and three-dimensional depth information generated by the projection of line structural light, the locating of nut or bolt position and accurate perception of height information can be realized in the dynamic running environment of railway. The experimental results show that the static measurement accuracy in the vertical direction using the structural light vision sensor is 0.1 mm under the laboratory condition, and the dynamic measurement accuracy is 0.5 mm under the dynamic train running environment. We use dynamic template matching algorithm to locate fasteners from 2D intensity map, which achieves 99.4% accuracy, then use the watershed algorithm to segment the nut and bolt from the corresponding depth image of located fastener. Finally, the 3D shape of the nut and bolt is analyzed to determine whether the nut or bolt height meets the local statistical threshold requirements, so as to detect the hidden danger of railway transportation caused by too loose or too tight fasteners. MDPI 2020-03-02 /pmc/articles/PMC7085639/ /pubmed/32131489 http://dx.doi.org/10.3390/s20051367 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Han, Qiang
Wang, Shengchun
Fang, Yue
Wang, Le
Du, Xinyu
Li, Hailang
He, QiXin
Feng, Qibo
A Rail Fastener Tightness Detection Approach Using Multi-source Visual Sensor
title A Rail Fastener Tightness Detection Approach Using Multi-source Visual Sensor
title_full A Rail Fastener Tightness Detection Approach Using Multi-source Visual Sensor
title_fullStr A Rail Fastener Tightness Detection Approach Using Multi-source Visual Sensor
title_full_unstemmed A Rail Fastener Tightness Detection Approach Using Multi-source Visual Sensor
title_short A Rail Fastener Tightness Detection Approach Using Multi-source Visual Sensor
title_sort rail fastener tightness detection approach using multi-source visual sensor
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7085639/
https://www.ncbi.nlm.nih.gov/pubmed/32131489
http://dx.doi.org/10.3390/s20051367
work_keys_str_mv AT hanqiang arailfastenertightnessdetectionapproachusingmultisourcevisualsensor
AT wangshengchun arailfastenertightnessdetectionapproachusingmultisourcevisualsensor
AT fangyue arailfastenertightnessdetectionapproachusingmultisourcevisualsensor
AT wangle arailfastenertightnessdetectionapproachusingmultisourcevisualsensor
AT duxinyu arailfastenertightnessdetectionapproachusingmultisourcevisualsensor
AT lihailang arailfastenertightnessdetectionapproachusingmultisourcevisualsensor
AT heqixin arailfastenertightnessdetectionapproachusingmultisourcevisualsensor
AT fengqibo arailfastenertightnessdetectionapproachusingmultisourcevisualsensor
AT hanqiang railfastenertightnessdetectionapproachusingmultisourcevisualsensor
AT wangshengchun railfastenertightnessdetectionapproachusingmultisourcevisualsensor
AT fangyue railfastenertightnessdetectionapproachusingmultisourcevisualsensor
AT wangle railfastenertightnessdetectionapproachusingmultisourcevisualsensor
AT duxinyu railfastenertightnessdetectionapproachusingmultisourcevisualsensor
AT lihailang railfastenertightnessdetectionapproachusingmultisourcevisualsensor
AT heqixin railfastenertightnessdetectionapproachusingmultisourcevisualsensor
AT fengqibo railfastenertightnessdetectionapproachusingmultisourcevisualsensor