Publication | Open Access
Object-Based Superresolution Land-Cover Mapping From Remotely Sensed Imagery
44
Citations
54
References
2017
Year
EngineeringLand CoverEarth ScienceSocial SciencesImage ClassificationImage AnalysisPattern RecognitionMixed ObjectsCartographyMachine VisionSynthetic Aperture RadarObject DetectionGeographyDeep LearningLand Cover MapComputer VisionObject RecognitionRemote SensingMixed Pixel ProblemCover MappingSuperresolution Mapping
Superresolution mapping (SRM) is a widely used technique to address the mixed pixel problem in pixel-based classification. Advanced object-based classification will face a similar mixed phenomenon-a mixed object that contains different land-cover classes. Currently, most SRM approaches focus on estimating the spatial location of classes within mixed pixels in pixel-based classification. Little if any consideration has been given to predicting where classes spatially distribute within mixed objects. This paper, therefore, proposes a new object-based SRM strategy (OSRM) to deal with mixed objects in object-based classification. First, it uses the deconvolution technique to estimate the semivariograms at target subpixel scale from the class proportions of irregular objects. Then, an area-to-point kriging method is applied to predict the soft class values of subpixels within each object according to the estimated semivariograms and the class proportions of objects. Finally, a linear optimization model at object level is built to determine the optimal class labels of subpixels within each object. Two synthetic images and a real remote sensing image were used to evaluate the performance of OSRM. The experimental results demonstrated that OSRM generated more land-cover details within mixed objects than did the traditional object-based hard classification and performed better than an existing pixel-based SRM method. Hence, OSRM provides a valuable solution to mixed objects in object-based classification.
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