Publication | Closed Access
Robust change detection in dense urban areas via SVM classifier
14
Citations
7
References
2009
Year
Unknown Venue
Remote Sensing ImagesMotion DetectionImage ClassificationMachine VisionImage AnalysisData ScienceFeature DetectionPattern RecognitionMachine LearningBiometricsEngineeringShift DetectionRemote SensingChange DetectionUrban PlanningComputer ScienceSvm ClassifierComputer Vision
This paper introduces a novel unified framework for change detection in remote sensing images, which compute one local dHOG feature from two images and make classification based on SVM classifier. Compared to the traditional methods, this approach takes advantage of the robustness of the dHOG feature. The inaccuracy and ambiguity with the definition of change can be eliminated by SVM classifier by training with an expert labeled dataset. In order to tackle the projective deformation problem which usually produce substantive false alarms, a novel matching algorithm is introduced by solving a discrete optimization problem. Experiments demonstrate the advantages and effectiveness of the proposed method.
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