ProQuest
Abstract/Details

Applications of fractals to image data compression

Wilton, Andrew Philip.   Aston University (United Kingdom) ProQuest Dissertations Publishing,  1996. C519664.

Abstract (summary)

Digital image processing is exploited in many diverse applications but the size of digital images places excessive demands on current storage and transmission technology. Image data compression is required to permit further use of digital image processing. Conventional image compression techniques based on statistical analysis have reached a saturation level so it is necessary to explore more radical methods. This thesis is concerned with novel methods, based on the use of fractals, for achieving significant compression of image data within reasonable processing time without introducing excessive distortion.

Images are modelled as fractal data and this model is exploited directly by compression schemes. The validity of this is demonstrated by showing that the fractal complexity measure of fractal dimension is an excellent predictor of image compressibility. A method of fractal waveform coding is developed which has low computational demands and performs better than conventional waveform coding methods such as PCM and DPCM.

Fractal techniques based on the use of space-filling curves are developed as a mechanism for hierarchical application of conventional techniques. Two particular applications are highlighted: the re-ordering of data during image scanning and the mapping of multi-dimensional data to one dimension. It is shown that there are many possible space-filling curves which may be used to scan images and that selection of an optimum curve leads to significantly improved data compression. The multi-dimensional mapping property of space-filling curves is used to speed up substantially the lookup process in vector quantisation.

Iterated function systems are compared with vector quantisers and the computational complexity of iterated function system encoding is also reduced by using the efficient matching algorithms identified for vector quantisers.

Indexing (details)


Subject
Computer science
Classification
0984: Computer science
Identifier / keyword
Applied sciences; image compression
Title
Applications of fractals to image data compression
Author
Wilton, Andrew Philip
Number of pages
1
Degree date
1996
School code
0734
Source
DAI-C 57/04, Dissertation Abstracts International
Place of publication
Ann Arbor
Country of publication
United States
University/institution
Aston University (United Kingdom)
University location
England
Degree
Ph.D.
Source type
Dissertation or Thesis
Language
English
Document type
Dissertation/Thesis
Dissertation/thesis number
C519664
ProQuest document ID
304336659
Copyright
Database copyright ProQuest LLC; ProQuest does not claim copyright in the individual underlying works.
Document URL
https://www.proquest.com/pqdtft/docview/304336659