Efficient pavement crack detection and classification

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Author
Cubero-Fernández, Antonio
Rodríguez Lozano, Francisco J.
Villatoro, Rafael
Olivares Bueno, Joaquín
Palomares Muñoz, José M.
Publisher
SpringerDate
2017Subject
Road safetyRoad maintenance
Crack detection
Pavement crack
Automatic detection
Heuristic classifier
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Each year, millions of dollars are invested on road maintenance and reparation all over the world. In order to minimize costs, one of the main aspects is the early detection of those flaws. Different types of cracks require different types of repairs; therefore, not only a crack detection is required but a crack type classification. Also, the earlier the crack is detected, the cheaper the reparation is. Once the images are captured, several processes are applied in order to extract the main characteristics for emphasizing the cracks (logarithmic transformation, bilateral filter, Canny algorithm, and a morphological filter). After image preprocessing, a decision tree heuristic algorithm is applied to finally classify the image. This work obtained an average of 88% of success detecting cracks and an 80% of success detecting the type of the crack. It could be implemented in a vehicle traveling as fast as 130 kmh or 81 mph.