Title: Quadtrees, Octrees and their Applications in Digital Image Processing
1Quadtrees, Octrees and their Applications in
Digital Image Processing
2Hierarchical Data Structures for Computer Vision
and Image Processing
Definition of pyramids Explanation of Quadtrees
and Octrees Techniques used for
generation Applications
3What is a pyramid?
A(0)
A(1)
2 1 2 1
A(2)
2 2 2 2
4Example of a four layer pyramid
2 0 2 0
2 1 2 1
2 2 2 2
5Example of a four layer pyramid
Layer 3
2 3 2 3
6How partitioning is done?
1 partitioned to 2 2 4
7How pyramid is build?
- From top to bottom
- From bottom to top
- Always recursively
- Good exercise in recursion and arrays
- Treat image as a Boolean or discrete function,
what is the counterpart of these type of
recursions?
8Another Way of Partitioning
For simplicity, dimension 2
Partitioning at any level i from i-1 can be done
by defining a two-dimensional array A(i) for the
i-th level
9The partitioning Algorithm
Cell (j,k) at level i-1
10The partitioning Algorithm
11Pyramids versus trees
Pyramids are interlinked (for instance by
indices) sequences of arrays with hierarchy.
Similarly we can create trees to define this
hierarchy
Trees can be more convenient for processing
12Types of pyramids quadtree and octree
13Recursive Tree Decomposition
Think how to write this software in Lisp
14Construction of the quadtree
15Advantages of the quadtree
Trees can be well manipulated in software, for
instance in Lisp
16Disadvantages of the quadtree
17Structure of an Octree
18Structure of an Octree
19Advantages of the Octrees
20Applications of these data structures
- The quadtree, octree and binary tree
decomposition methods are widely used in two and
three dimension image processing and computer
graphics - Some of the application areas involve
- the image data structure,
- region representation,
- picture segmentation,
- component labeling,
- image smoothing,
- image enhancement,
- data compression
21Applications of these data structures
- Pattern recognition
- Shape analysis
- Image segmentation
- Region matching
- Images can be represented with pyramids and
thus, both local and global feature extraction is
possible
22Application to pattern recognition
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27Tree Decomposition in Pattern Classification
Tree decomposition can be used not only in image
space but in transform space or feature space
28Tree Decomposition in Pattern Classification
29Tree Decomposition in Pattern Classification
30Application to Edge Detection
- The edge detection task can be accomplished by
applying a point-neighborhood operator or the
edge detector to every point of a large matrix - The algorithm for this works as follows
- An edge detector is applied at each point in the
starting level - At each point, if the value exceeds a threshold,
the operation is applied to the descendants of
the point in the next finer level.
31Application to Feature Detection
Pyramides are used for feature detection
Pyramides limit scope of the search
Pyramides are used for feature extraction
32Application to Feature Detection
The disadvantage of this method is that the
reduction of resolution will affect the visual
appearance of edges and small objects
- In particular, at a coarser level of resolution
- edges tend to get smeared and
- region separation may disappear
33Extracting compact objects
- Many image analysis tasks require the
extraction of compact objects from a background,
where - the shapes of the desired objects are not
known, - except for the fact that they are compact
- Image segmentation using pyramids can be applied
to extract such objects. - Spot detectors are applied to image at each
level of the pyramid - this is equivalent to applying spot detectors of
many sizes to full-resolution image
34Extracting compact objects
35Extracting compact objects
- Three sets of information are represented in the
pyramid structure - 1. Gray level
- 2. Edge magnitude and direction
- 3. Surroundedness
- The interaction between the different types of
information at each level of the pyramid leads to
the final segmentation
36Using Quadtrees to Smooth Images
- Digital images usually contain noise of various
kinds. - Most image processing tasks are simplified if
noise removed - A general approach to noise removal is to smooth
the image - Smoothing done by replacing each pixel value by
a new value which is a function of the values in
some neighborhood of the pixel.
37Using Quadtrees to Smooth Images
38Using Quadtrees to Smooth Images
39Using Quadtrees to Smooth Images
40Using Quadtrees to Smooth Images
Using Quadtrees to Smooth Images
41Using Quadtrees to Smooth Images
Using Quadtrees to Smooth Images
Method 2
1. Constructs a quadtree from an image 2.
Replaces each pixel by the gray level of the leaf
to which each corresponds
42Hierarchical Coding of Binary Images
Hierarchical Coding to segment a picture into
the largest possible uniform areas and to
transmit a hierarchical representation of these
areas.
Quadtrees can be used for coding
Pictures with large uniform areas can be highly
compressed
43Hierarchical Coding of Binary Images
The transmission result can be recreated by the
receiver as soon as sufficient information about
transmitted picture has been gathered
44Quadtree Compression
45G goto ground
Wwhite Bblack
w
w
Second level
46Hierarchical Coding of Binary Images
47Hierarchical Coding of Binary Images
- A bit assignment can be selected for the symbols
- The coding can also be extended to three
dimensions with the use of octrees
48Problems to solve
- Use pyramide for edge detection
- Treat a large (12 variables) Karnaugh Map as an
image. What is the counterpart of Shannon
Decomposition in terms of binary trees? - Generalize to 4-valued logic and show link to
quadtrees - Generalize to 8-valued logic and show link to
octrees - Disscuss general links between discrete
functions, images and compression methods.
49Problems to solve
- Use octree to represent the space for robot
manipulator - Use this space description to plan precise
assembling operations.
50References
51References
52References
53References