Publication | Closed Access
Rail Surface Defect Recognition Method Based on AdaBoost Multi-classifier Combination
17
Citations
11
References
2019
Year
Unknown Venue
Combined ClassifierEngineeringRail Surface DefectsPattern RecognitionAdaboost Multi-classifier CombinationStructural Health MonitoringClassifier SystemAutomated InspectionRail Surface
Rail surface defects have the characteristics of various types and complex morphological characteristics. It is difficult to obtain accurate classification results only by using a single classification method. Therefore, this paper presents a rail surface defect recognition method based on AdaBoost multi-classifier combination. Firstly, defect attributes are described by extracting geometric shape and gray level features of defect area, and Relief algorithm is used to select defect features and filter out features unrelated to classification. Then by using AdaBoost multi-classifier combination method and taking CART decision tree as a weak classification algorithm to design a combined classifier, rail surface defects classification is realized. The results show that this method can effectively identify three common types of defects: rail surface peeling block, tread crack and fish scale peeling crack.
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