Please use this identifier to cite or link to this item: https://repository.rsif-paset.org/xmlui/handle/123456789/357
Title: Detection of asphalt roads degradation using Deep Learning applied to Unmanned Aerial Vehicle imagery
Authors: Coulibaly, Adama
Ngom, Ibrahima
Dembélé, Jean Marie
Sadio, Ousmane
Tall, Marc Momar
Diagne, Ibrahima
Keywords: Deep Learning , degradation of asphalted roads , detection , drone images , YOLOv8
Issue Date: 25-Jan-2024
Abstract: Asphalt roads deteriorate over time due to wear and tear, weather conditions and the effect of traffic loads. These degradations cause enormous damage to road users and economic losses to countries. In Senegal, the inspection of roads for maintenance purposes is done by field surveys and measurements, which is tedious, slow and expensive. This paper proposes a solution for automatic detection of the degraded state of paved roads using Deep Learning applied to drone imagery. The methodology includes three phases: collection of pavement images by drone, processing (annotation, training and test) of the images by YOLOv8 and localization of degraded areas on GeoTiff results of reconstructed pavements. The model was trained and tested on a dataset with a wide range of pavement images and the results show a precision rate of 86.7%, a recall rate of 78.8% and an F1 score of 82.5%.
Description: Conference proceeding full text: https://doi.org/10.1109/ICNGN59831.2023.10396763
URI: https://repository.rsif-paset.org/xmlui/handle/123456789/357
Appears in Collections:ICTs including Big Data and Artificial Intelligence

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