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Granulometry (morphology)

In mathematical morphology, granulometry is an approach to compute a size distribution of grains in binary images, using a series of morphological opening operations. It was introduced by Georges Matheron in the 1960s, and is the basis for the characterization of the concept of size in mathematical morphology.

Granulometry
Basic concepts
Particle size, Grain size, Size distribution, Morphology
Methods and techniques
Mesh scale, Optical granulometry, Sieve analysis, Soil gradation

Related concepts
Granulation, Granular material, Mineral dust, Pattern recognition, Dynamic light scattering

Granulometry generated by a structuring element edit

Let B be a structuring element in a Euclidean space or grid E, and consider the family  ,  , given by:

 ,

where   denotes morphological dilation. By convention,   is the set containing only the origin of E, and  .

Let X be a set (i.e., a binary image in mathematical morphology), and consider the series of sets  ,  , given by:

 ,

where   denotes the morphological opening.

The granulometry function   is the cardinality (i.e., area or volume, in continuous Euclidean space, or number of elements, in grids) of the image  :

 .

The pattern spectrum or size distribution of X is the collection of sets  ,  , given by:

 .

The parameter k is referred to as size, and the component k of the pattern spectrum   provides a rough estimate for the amount of grains of size k in the image X. Peaks of   indicate relatively large quantities of grains of the corresponding sizes.

Sieving axioms edit

The above common method is a particular case of the more general approach derived by Georges Matheron. The French mathematician was inspired by sieving as a means of characterizing size. In sieving, a granular sample is worked through a series of sieves with decreasing hole sizes. As a consequence, the different grains in the sample are separated according to their sizes.

The operation of passing a sample through a sieve of certain hole size "k" can be mathematically described as an operator   that returns the subset of elements in X with sizes that are smaller or equal to k. This family of operators satisfies the following properties:

  1. Anti-extensivity: Each sieve reduces the amount of grains, i.e.,  ,
  2. Increasingness: The result of sieving a subset of a sample is a subset of the sieving of that sample, i.e.,  ,
  3. "Stability": The result of passing through two sieves is determined by the sieve with the smallest hole size. I.e.,  .

A granulometry-generating family of operators should satisfy the above three axioms.

In the above case (granulometry generated by a structuring element),  .

Another example of granulometry-generating family is when  , where   is a set of linear structuring elements with different directions.

See also edit

References edit

  • Random Sets and Integral Geometry, by Georges Matheron, Wiley 1975, ISBN 0-471-57621-2.
  • Image Analysis and Mathematical Morphology by Jean Serra, ISBN 0-12-637240-3 (1982)
  • Image Segmentation By Local Morphological Granulometries, Dougherty, ER, Kraus, EJ, and Pelz, JB., Geoscience and Remote Sensing Symposium, 1989. IGARSS'89, doi:10.1109/IGARSS.1989.576052 (1989)
  • An Introduction to Morphological Image Processing by Edward R. Dougherty, ISBN 0-8194-0845-X (1992)
  • Morphological Image Analysis; Principles and Applications by Pierre Soille, ISBN 3-540-65671-5 (1999)

granulometry, morphology, mathematical, morphology, granulometry, approach, compute, size, distribution, grains, binary, images, using, series, morphological, opening, operations, introduced, georges, matheron, 1960s, basis, characterization, concept, size, ma. In mathematical morphology granulometry is an approach to compute a size distribution of grains in binary images using a series of morphological opening operations It was introduced by Georges Matheron in the 1960s and is the basis for the characterization of the concept of size in mathematical morphology GranulometryBasic conceptsParticle size Grain size Size distribution MorphologyMethods and techniquesMesh scale Optical granulometry Sieve analysis Soil gradationRelated conceptsGranulation Granular material Mineral dust Pattern recognition Dynamic light scatteringvte Contents 1 Granulometry generated by a structuring element 2 Sieving axioms 3 See also 4 ReferencesGranulometry generated by a structuring element editLet B be a structuring element in a Euclidean space or grid E and consider the family B k displaystyle B k nbsp k 0 1 displaystyle k 0 1 ldots nbsp given by B k B B k times displaystyle B k underbrace B oplus ldots oplus B k mbox times nbsp where displaystyle oplus nbsp denotes morphological dilation By convention B 0 displaystyle B 0 nbsp is the set containing only the origin of E and B 1 B displaystyle B 1 B nbsp Let X be a set i e a binary image in mathematical morphology and consider the series of sets g k X displaystyle gamma k X nbsp k 0 1 displaystyle k 0 1 ldots nbsp given by g k X X B k displaystyle gamma k X X circ B k nbsp where displaystyle circ nbsp denotes the morphological opening The granulometry function G k X displaystyle G k X nbsp is the cardinality i e area or volume in continuous Euclidean space or number of elements in grids of the image g k X displaystyle gamma k X nbsp G k X g k X displaystyle G k X gamma k X nbsp The pattern spectrum or size distribution of X is the collection of sets P S k X displaystyle PS k X nbsp k 0 1 displaystyle k 0 1 ldots nbsp given by P S k X G k X G k 1 X displaystyle PS k X G k X G k 1 X nbsp The parameter k is referred to as size and the component k of the pattern spectrum P S k X displaystyle PS k X nbsp provides a rough estimate for the amount of grains of size k in the image X Peaks of P S k X displaystyle PS k X nbsp indicate relatively large quantities of grains of the corresponding sizes Sieving axioms editThe above common method is a particular case of the more general approach derived by Georges Matheron The French mathematician was inspired by sieving as a means of characterizing size In sieving a granular sample is worked through a series of sieves with decreasing hole sizes As a consequence the different grains in the sample are separated according to their sizes The operation of passing a sample through a sieve of certain hole size k can be mathematically described as an operator PS k X displaystyle Psi k X nbsp that returns the subset of elements in X with sizes that are smaller or equal to k This family of operators satisfies the following properties Anti extensivity Each sieve reduces the amount of grains i e PS k X X displaystyle Psi k X subseteq X nbsp Increasingness The result of sieving a subset of a sample is a subset of the sieving of that sample i e X Y PS k X PS k Y displaystyle X subseteq Y Rightarrow Psi k X subseteq Psi k Y nbsp Stability The result of passing through two sieves is determined by the sieve with the smallest hole size I e PS k PS m X PS m PS k X PS min k m X displaystyle Psi k Psi m X Psi m Psi k X Psi min k m X nbsp A granulometry generating family of operators should satisfy the above three axioms In the above case granulometry generated by a structuring element PS k X g k X X B k displaystyle Psi k X gamma k X X circ B k nbsp Another example of granulometry generating family is when PS k X i 1 N X B i k displaystyle Psi k X bigcup i 1 N X circ B i k nbsp where B i displaystyle B i nbsp is a set of linear structuring elements with different directions See also editParticle size distribution Grain size Optical granulometryReferences editRandom Sets and Integral Geometry by Georges Matheron Wiley 1975 ISBN 0 471 57621 2 Image Analysis and Mathematical Morphology by Jean Serra ISBN 0 12 637240 3 1982 Image Segmentation By Local Morphological Granulometries Dougherty ER Kraus EJ and Pelz JB Geoscience and Remote Sensing Symposium 1989 IGARSS 89 doi 10 1109 IGARSS 1989 576052 1989 An Introduction to Morphological Image Processing by Edward R Dougherty ISBN 0 8194 0845 X 1992 Morphological Image Analysis Principles and Applications by Pierre Soille ISBN 3 540 65671 5 1999 Retrieved from https en wikipedia org w index php title Granulometry morphology amp oldid 1164208926, wikipedia, wiki, book, books, library,

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