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An Intelligent Method Based Medical Image Compression
Author(s) -
Jibanananda Mishra,
Soumya Parida,
Mihir Narayan Mohanty,
Ranjan Kumar Jena
Publication year - 2013
Publication title -
international journal of computer and communication technology
Language(s) - English
Resource type - Journals
eISSN - 2231-0371
pISSN - 0975-7449
DOI - 10.47893/ijcct.2013.1161
Subject(s) - computer science , vector quantization , image compression , data compression , artificial intelligence , computer vision , quantization (signal processing) , texture compression , fractal transform , digital image , robustness (evolution) , data mining , image processing , image (mathematics) , biochemistry , chemistry , gene
Compression methods are important in many medical applications to ensure fast interactivity through large sets of images (e.g. volumetric data sets, image databases), for searching context dependant images and for quantitative analysis of measured data. Medical data are increasingly represented in digital form. The limitations in transmission bandwidth and storage space on one side and the growing size of image datasets on the other side has necessitated the need for efficient methods and tools for implementation. Many techniques for achieving data compression have been introduced. Wavelet transform techniques currently provide the most promising approach to high-quality image compression, which is essential for Teleradiology. This paper presents an approach of intelligent method to design a vector quantizer for image compression. The image is compressed without any loss of information. It also provides a comparative study in the view of simplicity, storage space, robustness and transfer time of various vector quantization methods. The proposed approach presents an efficient method of vector quantization for image compression and application of SOFM.

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