ALGORITHM FOR THE EXTRACTION OF SELECTED RAIL TRACK BALLAST DEGRADATION USING MACHINE VISION

IF 0.5 Q4 TRANSPORTATION SCIENCE & TECHNOLOGY
P. Lesiak, P. Bojarczak, Aleksander Sokołowski
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引用次数: 0

Abstract

A number of physical methods are used to survey railway track ballast to assess its degradation as a function of deposition. Simulation tests on track models are also conducted. These testing methods, which are generally labour-intensive and expensive, provide an accurate understanding of the extent of ballast degradation. However, the impact of inadequate maintenance can be observed, even on the surface. Therefore, it seems natural in this case to use image registration. State-of-the-art machine vision systems of track geometry cars provide the means to do this. Obtained ballast images provide a baseline for evaluating its level in relation to sleepers. However, no information is available on other signs of track degradation, such as overgrown vegetation (weeds) or the so-called local muddy areas, which are generally a consequence of poor drainage and a lack of subgrade insulation. These degradations are observed to generate distinctive colour images that are superimposed on the overall image of the ballast surface. They differ in colour and shape. Hence, the authors used this phenomenon to develop an algorithm for the extraction of ballast degradation images based on RGB imaging. Surface descriptors have also been offered to assess these degradations. Extensive measurement material from the railway lines was used to conduct survey experiments based on the examples. The results clearly demonstrate the high success rate of the applied method.
基于机器视觉的轨道道碴劣化提取算法
许多物理方法被用于测量铁路轨道道碴,以评估其作为沉积函数的退化。还对轨道模型进行了仿真试验。这些测试方法通常是劳动密集型和昂贵的,可以准确地了解镇流器退化的程度。然而,即使在表面上,也可以观察到维护不足的影响。因此,在这种情况下,使用图像配准似乎是自然的。轨道几何车辆的最先进的机器视觉系统提供了实现这一点的手段。所获得的道碴图像提供了用于评估其相对于枕木的水平的基线。然而,没有关于轨道退化的其他迹象的信息,例如杂草丛生或所谓的当地泥泞地区,这通常是排水不良和缺乏路基隔热的结果。观察这些退化以产生叠加在压载表面的整体图像上的独特的彩色图像。它们的颜色和形状各不相同。因此,作者利用这一现象开发了一种基于RGB成像的镇流器退化图像提取算法。还提供了表面描述符来评估这些降解情况。根据实例,使用了来自铁路线的大量测量材料进行测量实验。结果清楚地表明了所应用的方法的高成功率。
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来源期刊
Transport Problems
Transport Problems TRANSPORTATION SCIENCE & TECHNOLOGY-
CiteScore
1.90
自引率
14.30%
发文量
55
审稿时长
48 weeks
期刊介绍: Journal Transport Problems is a peer-reviewed open-access scientific journal, owned by Silesian University of Technology and has more than 10 years of experience. The editorial staff includes mainly employees of the Faculty of Transport. Editorial Board performs the functions of current work related to the publication of the next issues of the journal. The International Programming Council coordinates the long-term editorial policy the journal. The Council consists of leading scientists of the world, who deal with the problems of transport. This Journal is a source of information and research results in the transportation and communications science: transport research, transport technology, transport economics, transport logistics, transport law.
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