Publication | Closed Access
Autocorrelation and regularization in digital images. I. Basic theory
195
Citations
16
References
1988
Year
Image FormationMachine VisionImage AnalysisScene AnalysisAutocovariance FunctionUnderlying Scene CovarianceImage-based ModelingEngineeringScene UnderstandingRemote SensingDigital Image CorrelationInverse ProblemsComputational ImagingStructure From MotionSpatial FilteringSpatial StructureBasic TheoryComputer Vision
Spatial structure occurs in remotely sensed images when the imaged scenes contain discrete objects that are identifiable in that their spectral properties are more homogeneous within than between them and other scene elements. The spatial structure introduced is manifest in statistical measures such as the autocovariance function and variogram associated with the scene, and it is possible to formulate these measures explicitly for scenes composed of simple objects of regular shapes. Digital images result from sensing scenes by an instrument with an associated point spread function (PSF). Since there is averaging over the PSF, the effect, termed regularization, induced in the image data by the instrument will influence the observable autocovariance and variogram functions of the image data. It is shown how the autocovariance or variogram of an image is a composition of the underlying scene covariance convolved with an overlap function, which is itself a convolution of the PSF. The functional form of this relationship provides an analytic basis for scene inference and eventual inversion of scene model parameters from image data.< <ETX xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">></ETX>
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