Publication | Closed Access
Road condition assessment by OBIA and feature selection techniques using very high-resolution WorldView-2 imagery
26
Citations
59
References
2016
Year
EngineeringFeature DetectionRoad ConditionsLand CoverRoad AsphaltSocial SciencesImage ClassificationImage AnalysisData SciencePattern RecognitionEdge DetectionSatellite ImagingHigh-resolution Worldview-2 ImageryMachine VisionSurveyingGeographyLand Cover MapComputer VisionFeature Selection TechniquesObia AttributesRemote SensingTexture AnalysisRoad Condition AssessmentPattern Recognition Application
Accurate information on the conditions of road asphalt is necessary for economic development and transportation management. In this study, object-based image analysis (OBIA) rule-sets are proposed based on feature selection technique to extract road asphalt conditions (good and poor) using WorldView-2 (WV-2) satellite data. Different feature selection techniques, including support vector machine (SVM), random forest (RF) and chi-square (CHI) are evaluated to indicate the most effective algorithm to identify the best set of OBIA attributes (spatial, spectral, textural and colour). The chi-square algorithm outperformed SVM and RF techniques. The classification result based on CHI algorithm achieved an overall accuracy of 83.19% for the training image (first site). Furthermore, the proposed model was used to examine its performance in different areas; and it achieved accuracy levels of 83.44, 87.80 and 80.26% for the different selected areas. Therefore, the selected method can be potentially useful for detecting road conditions based on WV-2 images.
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