| Title: | Enhanced precision in axle configuration inference for bridge weigh-in-motion systems using computer vision and deep learning |
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| Authors: | ID Šoberl, Domen (Author) ID Kalin, Jan (Author) ID Anžlin, Andrej (Author) ID Kreslin, Maja (Author) ID Čopič Pucihar, Klen (Author) ID Kljun, Matjaž (Author) ID Hekič, Doron (Author) ID Žnidarič, Aleš (Author) |
| Files: | RAZ_Soberl_Domen_2025.pdf (2,01 MB) MD5: 2308C46C30F8F3E31252B28111E45D0E
https://onlinelibrary.wiley.com/doi/10.1111/mice.70144
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| Language: | English |
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| Work type: | Article |
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| Typology: | 1.01 - Original Scientific Article |
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| Organization: | FAMNIT - Faculty of Mathematics, Science and Information Technologies
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| Abstract: | Heavy goods vehicles (HGVs) have a significant impact on road and bridge infrastructure, with overloaded vehicles accelerating structural deterioration and increasing safety risks. Bridge weigh-in-motion (B-WIM) systems estimate gross vehicle weight (GVW) using strain measurements, but inaccuracies in axle configuration recognition can reduce reliability. This study presents a low-cost computer vision (CV) extension for existing B-WIM installations that verifies strain-inferred axle configurations using traffic camera images and flags GVW estimates as reliable or unreliable. Experiments on a data set of over 30,000 HGV records show that by combining convolutional neural networks with strain-based heuristics, GVW reliability can improve from 96.7% to 99.89%, effectively excluding nearly all erroneous measurements. The approach operates without interrupting ongoing B-WIM operations and can be applied retrospectively to historical data. Limitations include the inability to detect raised axles (RAs), which the method excludes as unreliable. This method provides a practical, high-precision enhancement for structural health monitoring of bridges. |
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| Keywords: | B-WIM, computer vision, deep learning |
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| Publication version: | Version of Record |
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| Publication date: | 16.11.2025 |
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| Year of publishing: | 2025 |
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| Number of pages: | str. 6201-6216 |
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| Numbering: | Vol. 40, iss. 30 |
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| PID: | 20.500.12556/RUP-22478  |
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| UDC: | 004.8 |
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| ISSN on article: | 1467-8667 |
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| DOI: | 10.1111/mice.70144  |
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| COBISS.SI-ID: | 257515523  |
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| Publication date in RUP: | 16.01.2026 |
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| Views: | 121 |
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| Downloads: | 4 |
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