Title :
A growing and splitting elastic network for vector quantization
Author_Institution :
International Computer Science Inst., Berkeley, CA, USA
Abstract :
A new vector quantization method is proposed which incrementally generates a suitable codebook. During the generation process, new vectors are inserted in areas of the input vector space where the quantization error is especially high. A one-dimensional topological neighborhood makes it possible to interpolate new vectors from existing ones. Vectors not contributing to error minimization are removed. After the desired number of vectors is reached, a stochastic approximation phase fine tunes the codebook. The final quality of the codebooks is exceptional. A comparison with two methods for vector quantization is performed by solving an image compression problem. The results indicate that the new method is clearly superior to both other approaches
Keywords :
image coding; neural nets; topology; vector quantisation; 1D topological neighbourhood; codebook; image coding; image compression; input vector space; neural nets; splitting elastic network; stochastic approximation; vector quantization; Bandwidth; Computer science; Data compression; HDTV; Image coding; Image reconstruction; Interpolation; Organizing; Stochastic processes; Vector quantization;
Conference_Titel :
Neural Networks for Processing [1993] III. Proceedings of the 1993 IEEE-SP Workshop
Conference_Location :
Linthicum Heights, MD
Print_ISBN :
0-7803-0928-6
DOI :
10.1109/NNSP.1993.471860