Image Enhancement in the Spatial Domain - PowerPoint PPT Presentation

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Image Enhancement in the Spatial Domain

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Title: Image Enhancement in the Spatial Domain


1
Chapter 3
  • Image Enhancement in the Spatial Domain

2
Outline
  • Background
  • Basic Gray-level transformation
  • Histogram Processing
  • Arithmetic-Logic Operation
  • Basics of Spatial Filtering
  • Smoothing Spatial Filters
  • Sharpening Spatial Filters
  • Combining Spatial Enhancement Methods

3
Background
  • Image enhancement approaches fall into two broad
    categories spatial domain methods and frequency
    domain methods.
  • The term spatial domain refers to the image plane
    itself.
  • g(x,y) Tf(x,y) , T is an operator on f,
    defined over some neighborhood of f(x,y)

4
Size of Neighborhood
  • Point processing
  • Larger neighborhood mask (kernel, template,
    window) processing

5
Gray-level Transformation

Contrast stretching
thresholding
6
Basic Gray Level Transformation
  • Image negatives s L-1-r
  • Log transformation s clog(1r)
  • Power-law transformation scrg

7
Image Negatives
8
Log Transformation
9
Gamma Correction (I)
  • Cathode ray tube (CRT) devices have an
    intensity-to-voltage response that is a power
    function, with exponents varying from 1.8 to 2.5.

10
Gamma Correction (II)
11
Piece-wise Linear Transformation
  • Contrast stretching
  • Gray-level slicing(Figure 3.11)
  • Bit-plane slicing(Figures 3.13-14)

12
Gray-level Slicing

13
Bit-plane Slicing
14
Histogram Processing
  • The histogram of a digital image with gray-levels
    in the range 0,L-1 is a discrete function
    h(rk)nk where rk is the kth gray level and nk is
    the number of pixels in the image having gray
    level rk
  • Normalized histogram p(rk)nk/n.
  • Easy to compute, good for real-time image
    processing.

15
Four Basic Image Types

16
Histogram Equalization
  • s T(r)
  • What if we take the transformation T to be
  • It can be shown that ps(s)1
  • Discrete version

17
Histogram Matching

18
Local Enhancements
19
Histogram Statistics
  • N-th moment of r about its mean

20
Logic Operations

21
Arithmetic Operations
  • Image Subtraction
  • Image Averaging

22
Basics of Spatial Filtering
  • Mask, convolution kernels
  • Odd sizes

23
Smoothing Spatial Filters
  • Smoothing linear filters averaging filters,
    low-pass filters
  • Box filter
  • Weighted average
  • Order-statistics filters
  • Median-filter removing salt-and-pepper noise
  • Max filter
  • Min filter

24
Sharpening Spatial Filters
  • Foundation

25
The Laplacian
  • Development of the method

26
Image Enhancement

27
The Gradient

Simplification
28
Combining Spatial Enhancement Methods
  • (a) original (b) Laplacian, (c) ab, (d) Sobel of
    (a)

(a)
(b)
(c)
(d)
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