DocumentCode :
769170
Title :
Adaptive vector quantization for picture coding using neural networks
Author :
Lancini, R. ; Tubaro, S.
Author_Institution :
CEFRIEL, Milan, Italy
Volume :
43
Issue :
38020
fYear :
1995
Firstpage :
534
Lastpage :
544
Abstract :
The paper presents applications of neural network algorithms to the design of an adaptive vector quantizer. Vector quantization has been applied to the problem of displaying natural images with a reduced set of colors (colormap) and to the interframe coding of image sequences. The first step was to test classical Linde Buzo Gray (LGB), self organizing feature maps (SOFM) and Competitive Learning (CL) algorithms for the codebook design. The best results for the reconstructed quality image and the computational time are obtained using a CL algorithm with a new initialization strategy that solves the problem of underutilized nodes. An adaptive vector quantization algorithm is proposed and tested in a motion compensated image coder. The results of the simulations are very promising. In fact the coder performance, compared with that using a fixed VQ, is considerably improved and the subjective quality of the coded images is much better than that obtained using standard vector quantization, especially when rapid motion is present in the scene.<>
Keywords :
adaptive signal processing; computational complexity; image coding; image reconstruction; image sequences; self-organising feature maps; unsupervised learning; vector quantisation; SOFM; adaptive vector quantization; adaptive vector quantizer; codebook design; coder performance; colormap; competitive learning algorithms; computational time; image sequences; initialization strategy; interframe coding; motion compensated image coder; neural network algorithms; picture coding; reconstructed image quality; self organizing feature maps; simulations; subjective quality; Algorithm design and analysis; Automatic testing; Code standards; Computational modeling; Image coding; Image reconstruction; Image sequences; Neural networks; Self organizing feature maps; Vector quantization;
fLanguage :
English
Journal_Title :
Communications, IEEE Transactions on
Publisher :
ieee
ISSN :
0090-6778
Type :
jour
DOI :
10.1109/26.380072
Filename :
380072
Link To Document :
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