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Road markings play a crucial role in road safety by guiding traffic and ensuring visibility. As markings deteriorate over time, their effectiveness diminishes, necessitating timely maintenance. This paper studies two methods to classify road-marking damage from recorded images, in accordance with the Dutch CROW guidelines. The first is a model based approach, which first uses a regression model to estimate the marking damage, and then applies the thresholds in the CROW guidelines to classify the damage class. In contrast, a data-driven approach is used, classifying directly the damage class with a YOLOv8 classifier. The data-driven approach achieves an F1-score of 0.97 for the binary-classification task and 0.75 for the multiclass classification task. Compared to other international studies, this is a competitive result.

Organisatie
Gepubliceerd inBNAIC/BeNeLearn 2025 : The 37th Benelux Conference on Artificial Intelligence and the 34th Belgian Dutch Conference on Machine Learning Namur, Belgium, BEL
Datum2025-11-20
Type
TaalEngels

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