Using Data Augmentation for automated recognition of façade anomalies
DOI:
https://doi.org/10.46421/entac.v20i1.5843Keywords:
Automated inspection., Visual assets., Unbalanced base., Machine learningAbstract
In recent years, there has been an increase in the use of Artificial Intelligence (AI) for automated image analysis. However, there are some limitations regarding small data sets. Aiming to minimize this limitation, this study evaluates using Data Augmentation (DA) techniques to create new automated image recognition models. The research strategy used was an experimental simulation based on (i) refinement of the database of images of concrete facades, (ii) development of a DA code to expand the database, (iii) training and testing images using web platforms with pre-trained networks; and (iv) analysis of results through performance indicators. The results indicated that the “Model with contrast method,” using ResNet and AlexNet algorithms, achieved 67.3% precision and 94.6% Recall.
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