Classification-Based compression of Multispectral Images


Autoria(s): Zubova, Yulia
Data(s)

23/01/2008

23/01/2008

2004

Resumo

The purpose of this thesis is to present a new approach to the lossy compression of multispectral images. Proposed algorithm is based on combination of quantization and clustering. Clustering was investigated for compression of the spatial dimension and the vector quantization was applied for spectral dimension compression. Presenting algo¬rithms proposes to compress multispectral images in two stages. During the first stage we define the classes' etalons, another words to each uniform areas are located inside the image the number of class is given. And if there are the pixels are not yet assigned to some of the clusters then it doing during the second; pass and assign to the closest eta¬lons. Finally a compressed image is represented with a flat index image pointing to a codebook with etalons. The decompression stage is instant too. The proposed method described in this paper has been tested on different satellite multispectral images from different resources. The numerical results and illustrative examples of the method are represented too.

Identificador

http://www.doria.fi/handle/10024/34802

Idioma(s)

en

Palavras-Chave #Lossy compression #multispectral images #remote sensing #and image quality
Tipo

Master's thesis