Journal Article10.1117/1.2885243
Morphological shape decomposition interframe interpolation method
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TL;DR: The morphological shape decomposition role to serve as an efficient image decomposition tool is extended to interpolation of images by means of generalized morphologicalshape decomposition.
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Abstract: One of the main image representations in mathematical
morphology is the shape decomposition representation, useful for
image compression and pattern recognition. The morphological
shape decomposition representation can be generalized to extend
the scope of its algebraic characteristics as much as possible. With
these generalizations, the morphological shape decomposition
(MSD) role to serve as an efficient image decomposition tool is extended
to interpolation of images. We address the binary and grayscale
interframe interpolation by means of generalized morphological
shape decomposition. Computer simulations illustrate the
results.
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