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Image Enhancement in the Spatial Domain

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Spatial domain refers to the aggregated of pixels composing ... Nonoverlapping region. 53. Local Equalization. 54. Enhancement Using Arithmetic/Logic Operations ... – PowerPoint PPT presentation

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Title: Image Enhancement in the Spatial Domain


1
Chapter 3
  • Image Enhancement in the Spatial Domain

2
Background
  • Spatial domain refers to the aggregated of pixels
    composing an image.
  • Spatial domain methods are procedures that
    operate directly on these pixels.
  • Spatial domain processes will be denoted by the
    expression

g(x,y)T f(x,y)
where f(x,y) is the input image, g(x,y) is the
processed image, and T is an operator of f
3
Some Basic Gray Level Transformations
  • Discussing gray-level transformation functions.
    The value of pixels, before and after processing
    are related by an expression of the form

s T(r)
Where r is values of pixel before process
s is values of pixel after process
T is a transformation that maps a pixel value r
into a pixel value s.
4
Gray Level Transformations
  • Image Negatives
  • Log Transformations
  • Exponential Transformations
  • Power-Law Transformations

5
Image Negatives
  • The negative of an image with gray L levels is
    given by the expression

s L 1 r
Where r is value of input pixel, and
s is value of processed pixel
6
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7
Log Transformations
  • The general form of the log transformation shown
    in

s c log(1r)
Where c is constant, and it is assumed that r?0
8
C 1.0
C 0.8
9
Exponential Transformations
  • The general form of the log transformation shown
    in

s c exp(r)
Where c is constant, and it is assumed that r?0
10
C 1.0
C 0.8
11
Power-Law Transformations
  • Power-law transformations have the basic form
  • Sometime above Equation is written as

Where c and ? are positive constant.
12
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13
Piecewise-Linear Transformation Functions
  • Translate Mapping
  • Contrast stretching
  • Gray-level slicing
  • Bit-plane slicing

14
Translate Mapping
15
Contrast stretching
  • One of the simplest piecewise linear functions is
    a contrast-stretching transformation.
  • The idea behind contrast stretching is to
    increase the dynamic range of the gray levels in
    the image being processed.

16
Contrast stretching
17
Contrast stretching
18
Gray-level slicing
  • Highlighting a specific range of gray levels in
    an image often is desired.
  • There are several ways of doing level slicing,
    but most of them are variations of two basic
    themes.
  • One approach is to display a high value for all
    gray levels in the range of interest and a low
    value for all other gray levels.

19
Gray-level slicing
255
255
0
0
20
Bit-plane slicing
  • Instead of highlighting gray-level ranges,
    highlighting the contribution made to total image
    appearance by specific bits might be desired.
  • Suppose that each pixel in an image is
    represented b y 8 bits. Imagine that the image is
    composed of eight 1-bit planes, ranging from
    bit-plane 0, the least significant bit to
    bit-plane 7, the most significant bit.

21
Bit-plane 0 (least significant)
1
1
0
0
1
1
0
10110011
1
Bit-plane 7 (most significant)
22
Bit-plane slicing
Original Image
Bit-plane 7
Bit-plane 6
Bit-plane 4
Bit-plane 1
23
Histogram Processing
  • The histogram of a digital image with gray levels
    in the range 0,L-1 is a discrete function

Where rk is the kth gray level and nk
is the number of pixels in the image having gray
level rk
24
HISTOGRAM
pixels
130
36
36
22
level
0
1
2
3
Image 16x14 224 pixels
25
Role of Histogram Processing
  • The role of histogram processing in image
    enhancement example
  • Dark image
  • Light image
  • Low contrast
  • High contrast

26
Histogram Processing
  • Histogram Equalization
  • Histogram Matching(Specification)
  • Local Enhancement

27
Initial part of discussion
  • Let r represent the gray levels of the image to
    be enhanced.
  • Normally, we have used pixel values in the
    interval 0,L-1, but now we assume that r has
    been normalized to the interval 0,1, with r0
    representing black and r1 representing white.

28
Histogram Equalization
  • We focus attention on transformations of the form

That produce a level s for every pixel value r in
the original image.
And we assume that the transformation function
T(r) satisfies the following conditions (a) T(r)
is single-valued and monotonically increasing in
the interval 0 r 1 and (b) 0 T(r) 1 for
0 r 1
29
Reason of Condition
  • The requirement in (a) that T9r) be single valued
    is needed to guarantee that the inverse
    transformation will exist, and the monotonicity
    condition preserves the increasing order from
    black to white in the output image.
  • Condition (b) guarantees that the output gray
    levels will be in the same range as the input
    levels.

30
Transformation function
Level s
skT(rk)
T(r)
Level r
rk
0
1
31
Note
  • The inverse transformation from s back to r is
    denoted

There are some cases that even if T(r) satisfies
conditions (a) and (b), it is possible that the
corresponding inverse T-1(s) may fail to be
single valued.
32
Fundamental of random variable
  • PDF (probability density function) is the
    probability of each element
  • CDF (cumulative distribution function) is
    summation of the probability of the element that
    value less than or equal this element

33
PDF
  • The PDF (probability density function) is denoted
    by p(x)
  • ???????? ????????????? ???????????????????????????
    ??????????? ???????????????

pdf
1/6
???????????
1
2
3
4
5
6
34
CDF
  • The CDF (cumulative density function) is denoted
    by P(x)
  • ???????? ????????????? ???????????????????????????
    ??????????? ???????????????

cdf
1
1/6
???????????
1
2
3
4
5
6
35
Relation between PDF and CDF
  • PDF can find from this equation
  • CDF can find from this equation

36
Idea of Histogram Equalization
  • The gray levels in an image may be viewed as
    random variables in the interval 0,1.

Let pr(r) denote the pdf of random variable r and
ps(s) denote the pdf of random variable s if
pr(r) and T(r) are known and T-1(s) satisfies
condition (a), the formula should be
37
Idea of Histogram Equalization
  • By Leibnizs rule that the derivative of a
    definite integral with respect to its upper limit
    is simply the integrand evaluated at that limit.

38
Idea of Histogram Equalization
  • Substituting into the first equaltion

39
Idea of Histogram Equalization
  • The probability of occurrence of gray level rk in
    an image is approximated by

40
Histogram Equalization
41
Example forHistogram Equalization
  • ????????????? ????????????? ??????????????????????
    ???????

????? ??????????? (nj)
0 30
1 50
2 100
3 1500
4 2300
5 4000
6 200
7 20
????
42
Example forHistogram Equalization
43
Example forHistogram Equalization
44
Example forHistogram Equalization(2)
????? (k) ???????????(nj)
0 30 30 0.0037 0.0256
1 50 80 0.0098 0.0683
2 100 180 0.0220 0.1537
3 1500 1680 0.2050 1.4241
4 2300 3980 0.4854 3.3976
5 4000 7980 0.9732 6.8122
6 200 8180 0.9976 6.9830
7 20 8200 1.0000 7.0000
45
Histogram Specification
  • can called Histogram Matching
  • Histogram equalization automatically determines a
    transformation function that seeks to produce an
    output image that has a uniform histogram.
  • In particular, it is useful sometimes to be able
    to specify the shape of the histogram that we
    wish the processed image to have.

46
MeaningHistogram Specification
  • In this notation, r and z denote the gray levels
    of the input and output (processed) images,
    respectively.
  • We can estimate pr(r) from the given image
  • While pz(z) is the specified probability density
    function that we wish the output image to have

47
MeaningHistogram Specification
  • Let s be a random variable with the property
  • Suppose that we define a random variable z with
    property
  • Then two equations imply G(z)T(r)

48
ProcedureHistogram Specification
  1. Use Eq.(1) to obtain the transformation function
    T(r)
  2. Use Eq.(2) to obtain the transformation function
    G(z)
  3. Obtain the inverse transformation function G-1
  4. Obtain the output image by applying Eq.(3) to all
    the pixels in the input image

49
Input Image
Specified histogram
50
Result form Histogram Specification
51
Local Enhancement
  • Normally, Transformation function based on the
    content of an entire image.
  • Some cases it is necessary to enhance details
    over small areas in an image.
  • The histogram processing techniques are easily
    adaptable to local enhancement.

52
Local Enhancement
Nonoverlapping region
Pixel-to-pixel translation
53
Local Equalization
54
Enhancement Using Arithmetic/Logic Operations
  • Are performed on a pixel-by-pixel basis between
    two or more images
  • Logic operations are concerned with the ability
    to implement the AND, OR, and NOT logic operators
    because these three operators are functionally
    complete.
  • Arithmetic operations are concerned about ,-,,
    / and so on (arithmetic operators)

55
Image Subtraction
  • The difference between two images f(x,y) and
    h(x,y) expressed as

g(x,y) f(x,y) h(x,y)
56
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57
Image Averaging
  • Consider a noisy image g(x,y) formed by the
    addition of noise to original image f(x,y)
  • The objective of this procedure is to reduce the
    noise content.

Where the assumption is that at every pair of
coordinates(x,y) the noise is uncorrelated and
has zero average value.
58
Image Averaging
  • Let there are K different noisy images
  • If an image is formed by averaging
    K different noisy images

59
Image Averaging (Gray Scale)
1 image
2 images
5 images
10 images
20 images
60
Image Averaging (Color Image)
(1)
(2)
(3)
Average image
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