Automatic detection of plan symbols in railway equipment engineering using a machine learning approach

D. Stoitchkov, Peer Breier, Martin Slepicka, Cengiz Genc, Felix Harmsen, T. Köhler, S. Vilgertshofer, A. Borrmann
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引用次数: 1

Abstract

Exact data in the form of technical drawings and plans of built assets are a significant requirement for the successful operation and reconstruction of such assets. When the consistency between this data and the real world situation cannot be assured, the data is not reliable and needs to be updated by comparing plans and reality. Depending on the size and number of assets this may involve an enormous amount of manual effort. In the scope of this research , an approach for supporting and automating such a process by utilizing concepts developed in the field of machine learning was developed. This paper focuses on the interpretation of technical drawings in terms of detecting and classifying plan symbols as this is a time intensive and error prone process when done manually. It is described how the capabilities of Convolutional Neural Networks are employed in analyzing images to automatically detect important plan symbols in the ?eld of Train Traffic Control and Supervision Systems and how those networks are trained without the need for a time consuming-manual labeling process.
基于机器学习方法的铁路设备工程平面符号自动检测
以技术图纸和已建资产平面图的形式提供准确的数据是这些资产成功运行和改造的重要要求。当不能保证这些数据与现实情况的一致性时,这些数据就不可靠,需要通过对比计划和现实来更新。根据资产的大小和数量,这可能需要大量的手工工作。在本研究的范围内,通过利用机器学习领域中开发的概念,开发了一种支持和自动化这种过程的方法。本文的重点是在检测和分类平面符号方面的技术图纸的解释,因为这是一个时间密集和容易出错的过程,当手工完成。本文描述了卷积神经网络的功能如何被用于分析图像,以自动检测火车交通控制和监督系统领域的重要计划符号,以及如何在不需要耗时的人工标记过程的情况下训练这些网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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