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Automatic Road Defect Detection by Textural Pattern Recognition Based on AdaBoost
Abstract: The state of roads is continuously degrading due to meteorological conditions, ground movements, and traffic, leading to the formation of defects, such as grabbing, holes, and cracks. In this article, a method to automatically distinguish images of road surfaces with defects from road surfaces without defects is presented. This method, based on supervised learning, is generic and may be applied to all type of defects present in those images. They typically present strong textural information with patterns that show fluctuations at small scales and some uniformity at larger scales. The textural information is described by applying a large set of linear and nonlinear filters. To select the most pertinent ones for the current application, a supervised learning based on AdaBoost is performed. The whole process is tested both on a textural recognition task based on the VisTex image database and on road images collected by a dedicated road imaging system. A comparison with a recent cracks detection algorithm from Oliveira and Correia demonstrates the proposed method's efficiency.
Automatic Road Defect Detection by Textural Pattern Recognition Based on AdaBoost
Abstract: The state of roads is continuously degrading due to meteorological conditions, ground movements, and traffic, leading to the formation of defects, such as grabbing, holes, and cracks. In this article, a method to automatically distinguish images of road surfaces with defects from road surfaces without defects is presented. This method, based on supervised learning, is generic and may be applied to all type of defects present in those images. They typically present strong textural information with patterns that show fluctuations at small scales and some uniformity at larger scales. The textural information is described by applying a large set of linear and nonlinear filters. To select the most pertinent ones for the current application, a supervised learning based on AdaBoost is performed. The whole process is tested both on a textural recognition task based on the VisTex image database and on road images collected by a dedicated road imaging system. A comparison with a recent cracks detection algorithm from Oliveira and Correia demonstrates the proposed method's efficiency.
Automatic Road Defect Detection by Textural Pattern Recognition Based on AdaBoost
Cord, Aurélien (Autor:in) / Chambon, Sylvie (Autor:in)
Computer‐Aided Civil and Infrastructure Engineering ; 27 ; 244-259
01.04.2012
16 pages
Aufsatz (Zeitschrift)
Elektronische Ressource
Englisch
Automatic Road Defect Detection by Textural Pattern Recognition Based on AdaBoost
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