Medical Image Compression by Using Vector Quantization Neural Network (VQNN)

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Date

2006

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Publisher

ACAD Sciences Czech Republic, Inst Computer Science

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Abstract

This paper presents a lossy compression scheme for biomedical images by using a new method. Image data compression using Vector Quantization (VQ) has received a lot of attention because of its simplicity and adaptability. VQ requires the input image to be processed as vectors or blocks of image pixels. The Finite-state vector quantization (FSVQ) is known to give better performance than the memory less vector quantization (VQ). This paper presents a novel combining technique for image compression based on the Hierarchical Finite State Vector Quantization (HFSVQ) and the neural network. The algorithm performs nonlinear restoration of diffraction-limited images concurrently with quantization. The neural network is trained on image pairs consisting of a lossless compression named hierarchical vector quantization. Simulations results are presented that demonstrate improvements in visual quality and peak signal-to-noise ratio of the restored images.

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Keywords

Medical Image, Vector Quantization, Artificial Neural Networks, Lossy Compression

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Source

4th International Multiconference on Computer Science and Information Technology -- APR 05-06, 2006 -- Appl Sci Univ, Amman, JORDAN

Volume

16

Issue

4

Start Page

341

End Page

348
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