Unraveling the Impact of Density and Noise on Symbol Recognition in Engineering Drawings
Journal article, 2024

Applied Artificial Intelligence (AI) in engineering is gaining significant traction. AI object detection methods can be applied in the engineering industry to extract information from engineering drawings, offering immense benefits to engineers. A promising application of AI in industrial engineering is symbol recognition applied to engineering drawings. However, these drawings often exhibit areas with a high density of symbols, as well as noise in the form of markups, indicating revisions. These factors could cause symbol misclassification or omission, impacting applications reliant on accurate symbol recognition. This study evaluates the accuracy of a symbol recognition model on engineering drawings called Piping and Instrumen-tation Diagrams (P&IDs) exhibiting varying levels of density and markups causing noise. Despite the assumption that density poses a challenge for accurate symbol recognition in engineering drawings, our study reveals that density has no significant impact on recognition performance when a dense detector is employed. In addition, we quantitatively show that markup-induced noise on engineering drawings negatively influences recognition accuracy. Finally, we provide recommendations regarding the applicability of symbol recognition in engineering applications. The study's findings and recommendations apply to any P&IDs, regardless of the standard used, as they were evaluated on various worldwide projects. Moreover, the research not only contributes to the advancement of symbol recognition on P&IDs, but also can be applied to other types of engineering drawings. Thus, it holds the potential for enhancing symbol recognition in various real-world industrial applications and research.

density

noise

markups

object detection

Artificial Intelligence (AI)

engineering drawings

Engineering

symbol recognition

Piping and Instrumentation Diagrams (P&IDs)

Author

Vasil Shteriyanov

McDermott

Rimman Dzhusupova

McDermott

Jan Bosch

Software Engineering 1

Helena Holmström Olsson

Malmö university

International IEEE Conference proceedings, IS

28324145 (ISSN) 27679802 (eISSN)

2024

Subject Categories

Other Engineering and Technologies not elsewhere specified

Software Engineering

DOI

10.1109/IS61756.2024.10705201

More information

Latest update

11/15/2024