TY - GEN
T1 - AUTOMATIC DETECTION OF PLAN SYMBOLS IN RAILWAY EQUIPMENT ENGINEERING USING A MACHINE LEARNING APPROACH
AU - Stoitchkov, Deian
AU - Breier, Peer
AU - Slepicka, Martin
AU - Genc, Cengiz
AU - Harmsen, Felix
AU - Köhler, Tobias
AU - Vilgertshofer, Simon
AU - Borrmann, André
N1 - Publisher Copyright:
© European Council on Computing in Construction (EC3).
PY - 2019
Y1 - 2019
N2 - 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 field of Train Traffic Control and Supervision Systems and how those networks are trained without the need for a time consuming-manual labeling process.
AB - 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 field of Train Traffic Control and Supervision Systems and how those networks are trained without the need for a time consuming-manual labeling process.
UR - http://www.scopus.com/inward/record.url?scp=85147137534&partnerID=8YFLogxK
U2 - 10.35490/EC3.2019.167
DO - 10.35490/EC3.2019.167
M3 - Conference contribution
AN - SCOPUS:85147137534
SN - 9781910963371
T3 - Proceedings of the European Conference on Computing in Construction
SP - 92
EP - 99
BT - Proceedings of the 2019 European Conference on Computing in Construction
A2 - O'Donnell, James
A2 - Chassiakos, Athanasios
A2 - Rovas, Dimitrios
A2 - Hall, Daniel
PB - European Council on Computing in Construction (EC3)
T2 - European Conference on Computing in Construction, EC3 2019
Y2 - 10 July 2019 through 12 July 2019
ER -