Publication | Open Access
Combining noise-adjusted principal components transform and median filter techniques for denoising modis temporal signatures
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Citations
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References
2012
Year
Earth ObservationEnvironmental MonitoringEngineeringChange DetectionEarth ScienceMedian Filter TechniquesImage AnalysisFiltering TechniqueData ScienceComputational ImagingPublic HealthStatisticsSatellite ImagingOrbital ImagesGeodesyMachine VisionSynthetic Aperture RadarModis Temporal SignaturesMultidimensional Signal ProcessingGeographySpatial FilteringFunctional Data AnalysisSignal ProcessingMedian FilterComputer VisionLand Cover MapRemote SensingVideo DenoisingImage DenoisingWhite Noise
Consistent multi-temporal images are necessary for accurate landscape change detection and temporal signatures analysis. Orbital images have a difficultyto maintain a temporal information precision due to several interferences that generate missing data. In this paper is developed a program in C++ languagefor denoising MODIS temporal signatures considering two-phase scheme for removing impulse and white noise. In the first phase, the median filter is used to identifyimpulse noise. In the second phase, the Noise-Adjusted Principal Components (NAPC) transform is applied to eliminate white noise. Because they are two complementarymethods, there is high performance in removing noise. The restored NDVI (Normalized Difference Vegetation Index) signatures showed a significant improvementproviding a time series dataset that can be used to identify and classify the vegetation physiognomic types.
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