Downscaling cokriging for image sharpening
نویسندگان
چکیده
The main aim of this paper is to show the utility of cokriging for image fusion (i.e. increasing the spatial resolution of satellite sensor images). It is assumed that co-registered images with different spatial and spectral resolutions of the same scene are available and the task is to generate new remote sensing images at the finer spatial resolution for the spectral bands available only at the coarser spatial resolution. The main advantages of cokriging are that it takes into account the correlation and cross-correlation of images, it accounts for the different supports (i.e. pixel sizes), it can take into account explicitly the point spread function of the sensor and has the property of prediction coherence. In addition, ancillary images (topographic maps, thematic maps, etc.) as well as sparse experimental data could be included in the process. The main drawback of cokriging in the previous context is that it requires several covariances and cross-covariances some of which are not accessible empirically (i.e. from the pixel values of the images). The solution adopted in this paper was to use linear systems theory to obtain the required covariances from the ones that were estimated empirically. Cokriging was compared with a benchmark image fusion approach (the high pass filter method) to assess performance against a standard. In fact, cokriging may be seen as a generalization of the high pass filter method where the low pass filter and high pass filter are estimated by fitting parameters to data. The present paper discusses the downscaling cokriging method, shows its implementation and illustrates the process in the case of sharpening several remotely sensed images. The desired target image was known so that the performance of the method could be evaluated realistically. Different statistics were used to show that the cokriged predictions were more precise than the HPF predictions. Downscaling cokriging is a new method of great potential in remote sensing that should be incorporated to the toolkit of the remote sensing researcher. © 2006 Elsevier Inc. All rights reserved.
منابع مشابه
Downscaling land surface temperatures with multi-spectral and multi-resolution images
Land surface temperature (LST) plays an important role in many fields. However, the limited spatial resolution of current thermal sensors impedes the utilization of LSTs. Based on a theoretical framework of thermal sharpening, this report presents an Enhanced Generalized Theoretical Framework (EGTF) to downscale LSTs using multi-spectral (MS) and multi-resolution images. MS proxy-sharpening and...
متن کاملPerformance Evaluation of Downscaling Sentinel-2 Imagery for Land Use and Land Cover Classification by Spectral-Spatial Features
Land Use and Land Cover (LULC) classification is vital for environmental and ecological applications. Sentinel-2 is a new generation land monitoring satellite with the advantages of novel spectral capabilities, wide coverage and fine spatial and temporal resolutions. The effects of different spatial resolution unification schemes and methods on LULC classification have been scarcely investigate...
متن کاملImproving the Downscaling of Diurnal Land Surface Temperatures Using the Annual Cycle Parameters as Disaggregation Kernels
The downscaling of geostationary diurnal thermal data can ease the lack of land surface temperature (LST) datasets that combine high spatial and temporal resolution. However, the downscaling of diurnal LST data is more demanding than single scenes. This is because the spatiotemporal interrelationships of the original LST data have to be preserved and accurately reproduced by the downscaled LST ...
متن کاملDemonstration of a geostatistical approach to physically consistent downscaling of climate modeling simulations
[1] A downscaling approach based on multiple-point geostatistics (MPS) is presented. The key concept underlying MPS is to sample spatial patterns from within training images, which can then be used in characterizing the relationship between different variables across multiple scales. The approach is used here to downscale climate variables including skin surface temperature (TSK), soil moisture...
متن کامل