1 January 1997 Discrete morphological size distributions and densities: estimation techniques and applications
Krishnamoorthy Sivakumar, John Ioannis Goutsias
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Abstract
Morphological size distributions and densities are frequently used as descriptors of granularity or texture within an image. They have been successfully employed in a number of image processing and analysis tasks, including shape analysis, multiscale shape representation, texture classification, and noise filtering. In most cases however it is not possible to analytically compute these quantities. In this paper, we study the problem of estimating the (discrete) morphological size distribution and density of random images, by means of empirical as well as Monte Carlo estimators. Theoretical and experimental results demonstrate clear superiority of the Monte Carlo estimation approach. Examples illustrate the usefulness of the proposed estimators in traditional image processing and analysis problems.
Krishnamoorthy Sivakumar and John Ioannis Goutsias "Discrete morphological size distributions and densities: estimation techniques and applications," Journal of Electronic Imaging 6(1), (1 January 1997). https://doi.org/10.1117/12.261931
Published: 1 January 1997
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Cited by 32 scholarly publications.
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KEYWORDS
Monte Carlo methods

Binary data

Image filtering

Signal to noise ratio

Image restoration

Image classification

Magnetorheological finishing

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