Trained Model for the Semantic Segmentation of Concrete Cracks (Conglomerate)
This contains a trained DeeplabV3+ model for the semantic
segmentation of concrete cracks. The models all were trained using image sizes
of 512x512. The classes for this model are: [background, and crack]. This model was trained using the conglomerate
concrete crack dataset (DOI: 10.7294/16625056). The model was able to correctly
identify approximately 70% of the ground truth labeled cracks in the test set. More
details of the training, the results, the dataset, and the code may be
referenced in the journal article. The repository of the training and testing
code may be accessed using the GitHub repository referenced in the journal
article.
If you are using the model in your work, please include both the journal article and the model citation.
Funding
National Science Foundation Grant No. IIS-1840044
History
Publisher
University Libraries, Virginia TechLanguage
- English (US)