Research of the efficiency of algorithms of image compression based on the generalized haar wavelet transforms
A.M. Belov

Samara State Aerospace University,

Image Processing Systems Institute оf the RAS

Full text of article: Russian language.

Abstract:
The paper presents experimental results of the efficiency of image compression algorithms based on generalized Haar wavelet transforms, from the point of view of qualitative compression parameters, adaptive wavelet basis selection and the visual quality of the reconstructed images.

Key words:
digital image, compression of digital images, Haar wavelet basis, wavelet transforms, artifact, generalized Haar wavelet basis inseparable two-dimensional wavelet transforms.

Citation: Belov AM. Study of the efficiency of image compression algorithms based on generalized Haar wavelet transforms [In Russian]. Computer Optics 2008; 32(1): 74-77.

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