Current image acquisition devices require tremendous amounts of storage for saving the data returned. This paper overcomes the latter drawback through proposing a colour
reduction technique which first subdivides the image into patches, and then makes use of
fuzzy c-means and fuzzy-logic-based inference systems, in order to cluster and reduce the
number of the unique colours present in each patch, iteratively. The colours available in
each patch are quantised, and the emergence of false edges is checked for, by means of
the Sobel edge detection algorithm, so as to minimise the contour effect. At the compression stage, a methodology taking advantage of block-based singular value decomposition
and wavelet difference reduction is adopted. Considering 35000 sample images from various databases, the proposed method outperforms centre cut, moment-preserving threshold,
inter-colour correlation, generic K-means and quantisation by dimensionality reduction.
Funding
This work has been partially supported by Estonian Research Council Grant PUT638,
the Estonian Research Council Grant (PUT638), The Scientific and Technological Research Council of Turkey (TUBITAK) 1001 Project (116E097), and the Estonian Centre of Excellence in IT (EXCITE)
funded by the European Regional Development Fund
History
School
Loughborough University London
Published in
Multimedia Tools and Applications
Volume
77
Pages
30939 - 30968
Citation
LUIS, I. ... et al., 2018. Optimal image compression via block-based adaptive colour reduction with minimal contour effect. Multimedia Tools and Applications, 77(23), pp. 30939 - 30968.
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