Technical Report No. 73, January 1996 - Abstract
Dietmar Saupe:
Fractal image compression via nearest neighbor search
In fractal image compression the encoding step is computationally expensive. A large number of sequential searches through a list of domains (portions of the image) are carried out while trying to find best matches for other image portions called ranges. Our theory developed here shows that this basic procedure of fractal image compression is equivalent to multi-dimensional nearest neighbor search in a space of feature vectors. This result is useful for accelerating the encoding procedure in fractal image compression. The traditional sequential search takes linear time whereas the nearest neighbor search can be organized to require only logarithmictime. The fast search has been integrated into an existing state-of-the-art classification method thereby accelerating the searches carried out in the individual domain classes. In this case we record acceleration factors up to about 50 depending on image and domain pool size with negligible or minor degradation in both imagequality and compression ratio. Furthermore, as compared to plain classification our method is demonstrated to be able to search through larger portions of the domain pool without increasing the computation time. In this way both image quality and compression ratio can be improved at reduced computation time. We also consider the application of a unitary transformation of the feature vectors which results in a reduction of the dimensionality of the search space. New results from numerical simulations are reported. Also we provide a brief overview of related work and other complexity reduction methods. This paper is an extended version of Technical Report No.67.
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