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Chapter 9 Morphological image processing

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Title: Chapter 9 Morphological image processing


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Chapter 9 Morphological image processing
  • 9.1 Preliminary
  • Basic concepts from set theory
  • Union
  • Intersection
  • Complement
  • Difference
  • Logic operations
  • And
  • Or
  • Exor
  • 9.2 dilation and erosion

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  • 9.2.1 Dialtion
  • Bridging gaps
  • resulted directly in a binary image (the approach
    over the low pass filtering)
  • 9.2.2 Erosion
  • the erosion of A by is defined as
  • is the set of all points z such that B,
    translated by z, is contained in A
  • dilation and erosion are duals of each other with
    respect to set complement and reflection
  • 9.3 Opening and closing
  • opening
  • smoothes the contour of an object, break narrow
    isthmuses and eliminates thin protrusions
  • the closing of set A by structuring B, denoted
    A?B, is defined as A ?B (A?B) ? B

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Chapter 9 Morphological Image Processing
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  • the boundary of A?B is established by the points
    in B that reach the farest into the boundary of A
    as B is rolled around the inside if this boundary
  • Is obtained by taking the union of all translates
    of B that fit into A
  • closing
  • fuses narrow breaks and long thin gulfs,
    eliminates small hole, and fill gaps in the
    contour
  • geometric interpretatin roll B on the outside of
    the boundary
  • opening and closing are duals of each other with
    respect to set complementation and reflection
  • the opeing operation satisfies the three
    following properties
  • the closing operation satisfies the three
    following properties
  • 9.4 The Hit-or Miss transform
  • a basic tool for shape detection
  • Fig. 9.12 is the local background W-X
  • if B denotes the set composed of X and its
    background, the match of B in A, denoted as

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  • 9.5 Some basic morphological algorithms
  • 9.5.1 Boundary extraction
  • the boundary of a set can be obtained by first
    eroding A by B B(A)A-(A(-)B)
  • 9.5.2 Region filling
  • begin with a point inside the boundary,
  • fill the entire region with 1s
  • where X0p, and B is the symmetric structuring
    element.
  • The set union of Xk and A contains the filled set
    and its boundary
  • 9.5.3 Extraction of connected components
  • 9.5.4 Convex hull
  • 9.5.5 Thinning
  • 9.5.6 Thickening

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9.6 Extension to Gray-scale Images
  • Develop algorithms for boundary extraction via a
    morphological operation
  • 9.6.1 Dilation
  • Gray-scale dilation of f by b denoted f b is
    defined as
  • If all the values of the SE are positive, the
    output image tends to be brighter
  • Dark details either are reduced or eliminated,
    depending on how their values nd shapes related
    to the SE
  • For function of on variable Eq. reduces to the
    expression
  • 9.6.2Erosion
  • Gray-scale erosion of f by b denoted f b is
    defined as
  • For function of on variable Eq. reduces to the
    expression
  • Gray-scale dilation and erosion are dual with
    respect to function

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  • General effect of erosion
  • (1) if the elements of the SE are positive
  • (2) The effect of bright details in the input
    image are smaller in area thane the SE is reduced
  • 9.6.3 Opening and closing
  • The gray-scale opening satisfies the following
    properties
  • Remove small light details, while leaving the
    overall gray levels and larger right features
  • The gray-scale closing satisfies the following
    properties
  • Remove dark details from an image while leaving
    bright features relatively undisturbed

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  • 9.6.4 Some applications of gray-scale morphology
  • Morphological smoothing
  • Perform a opening followed by a closing
  • Remove or attenuate both bright and dark
    artifacts or noise
  • Morphological gradient
  • Use a dilation and a erosion to compute the
    morphological gradient
  • Highlight sharp transition in the input image
  • Use symmetrical structuring elements tends to
    depend less on edge directionality

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Chapter 9 Morphological Image Processing
  • Top-hat transformation
  • The operation is denoted as
  • Use a cylindrical or parallelepiped structuring
    element with a flat-top
  • Is useful for enhancing detail in the presence of
    shading
  • Texture segmentation
  • Close the input image by successively larger
    structuring elements
  • When the size of the structuring element
    corresponds to that of the small blobleaving
    only the larger blobs and the light background
    on the left
  • A single opening is performed with a structuring
    element that is large in relation to the
    separation between the large blobsremoves the
    light patches between blobs
  • Granulometry
  • Determine the size of distribution of particles
    in an in an image

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  • Morphological operations
  • (1) Opening operation with structuring elements
    of increasing size
  • (2) The difference between the original and its
    opening is computed after each pass when a
    different structuring element is completed
  • (3) Normalize the differences and construct a
    histogram of a particle of similar size
  • (4) Measure a the relative number of such
    particles by computing the difference between the
    input and output images
  • Useful for describing regions with a predominant
    particle-like character
  • Ex 8, 14, 19,
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