Publication | Open Access
Spectral–Spatial-Aware Unsupervised Change Detection With Stochastic Distances and Support Vector Machines
45
Citations
31
References
2020
Year
Remote Sensing ImagesEngineeringMachine LearningShift DetectionChange DetectionChange AnalysisUnsupervised Machine LearningImage Sequence AnalysisImage ClassificationImage AnalysisConcept DriftData SciencePattern RecognitionSupport Vector MachinesMachine VisionGeographyComputer ScienceComputer VisionSpatial VerificationRemote SensingStochastic Distances
Change detection is a topic of great interest in remote sensing. A good similarity metric to compute the variations among the images is the key to high-quality change detection. However, most existing approaches rely on the fixed threshold values or the user-provided ground truth in order to be effective. The inability to deal with artificial objects such as clouds and shadows is a significant difficulty for many change-detection methods. We propose a new unsupervised change-detection framework to address those critical points. The notion of homogeneous regions is introduced together with a set of geometric operations and statistic-based criteria to characterize and distinguish formally the change and nonchange areas in a pair of remote sensing images. Moreover, a robust and statistically well-posed family of stochastic distances is also proposed, which allows comparing the probability distributions of different regions/objects in the images. These stochastic measures are then used to train a support-vector-machine-based approach in order to detect the change/nonchange areas. Three study cases using the images acquired with different sensors are given in order to compare the proposed method with other well-known unsupervised methods.
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