A Deep Learning based Process Model for Crack Detection in Pavement Structures
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Authors
Rababaah, Aaron
Issue Date
2022-03-22
Type
Conference Papers funded by AUK
Language
Keywords
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Abstract
This paper presents an investigation of the effectiveness of a Machine Deep Learning (DL) model using Convolution Neural Networks (CNN) in detecting cracks in asphalt pavement. Pavement cracks have been studied for decades using traditional Machine Learning (ML) methods such as neural networks, genetic algorithms, fuzzy logic, etc. In this work, we present a DL model based on CNN to study the effectiveness of modern machine vision methods on an old problem of pavement crack detection. We provide our methodology in developing the proposed model and the validation process in this paper. A dataset consisting of 500 sample images was used to test the model and our experiments showed that the proposed model is effective with a mean accuracy of 96% and a standard deviation of. 025. Future work is recommended to be on crack type classification after the successful detection process.
Description
Citation
Rababaah, A. (23-25MAR, 2022). A Deep Learning based Process Model for Crack Detection in PavementStructures. In 2022 9th International Conference on Computing for Sustainable GlobalDevelopment (INDIACom); IEEE Conference ID: 51348, (pp. 1-6). doi:10.23919/INDIACom54597.2022.9763286
Publisher
IEEE Conference