Fig. 1 Preprocessing
Fig. 2 Annotation data using VIA
Fig. 3 Display images and masks
Fig. 4 Example of ideal crack detection (training data set)
Fig. 5 Detection of crack on the roads
Table 1 Accuracy of crack on the roads
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