Abstract
Soft computing techniques have shown much potential in a variety of computer vision and image analysis tasks. In this paper, an overview of recent soft computing approaches to the colour quantisation problem is presented. Colour quantisation is a common image processing technique to reduce the number of distinct colours in an image. Those selected colours form a colour palette, while the resulting image quality is directly determined by the choice of colours in the palette. The use of generic optimisation techniques such as simulated annealing and soft computing-based clustering algorithms founded on fuzzy and rough set ideas to formulate colour quantisation algorithms is discussed. These methods are capable of deriving good colour palettes and are shown to outperform standard colour quantisation techniques in terms of image quality. Furthermore, a hybrid colour quantisation algorithm which combines a generic optimisation approach with a common clustering algorithm is shown to lead to improved image quality. Finally, it is demonstrated how optimisation-based colour quantisation can be employed in conjunction with a more appropriate measure for image quality.
Highlights
Colour quantisation is a common image processing technique that allows the representation of true colour images using only a small number of colours
3 Conclusions In this paper, we have given an overview of recent soft computing-based colour quantisation approaches and have shown that this family of algorithms work very well, resulting in quantised images with high image quality
We have discussed the use of optimisation algorithms such as simulated annealing and of soft computing-based clustering algorithms including fuzzy c-means, rough c-means, and combined fuzzy-rough
Summary
Colour quantisation is a common image processing technique that allows the representation of true colour images using only a small number of colours. In the image processing literature, many different algorithms have been introduced that aim to find a palette that allows for good image quality of the quantised image. A relatively simple approach is the popularity algorithm [2], which typically following a uniform quantisation to 5 bits per channel - selects the N colours that are represented most often to form the colour palette. We present several soft computing approaches to colour quantisation. Based clustering and a combined fuzzy-rough clustering approach, and their application to the colour quantisation problem, are discussed.
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