Title :
A Kohonen-based structured codebook design for image compression
Author :
Hsien-Chung Wei ; Yung-Ching Chang ; Jia-Shang Wang
Author_Institution :
Inst. of Comput. Sci., Nat. Tsing Hua Univ., Hsinchu, Taiwan
Abstract :
The Kohonen neural network (KNN), creates a vector quantizer by adjusting the weights from input nodes to output nodes. Using this model, we obtain a codebook and also the neighborhood relations between the codewords of this codebook. Based on these neighborhood relations, we can create a structured codebook to improve the search time and/or bit rates. However, there is an intrinsic problem of applying the KNN directly. When the codebook size increasing, the coding performance is not good uniformly. To overcome this bad situation, we propose a modified version of the KNN, called the hierarchical KNN (HKNN). Using this method, the image "lenna" (of size 512/spl times/512) can be coded at 0.5 bpp with PSNR 32.197 dB. Besides, we also present an adaptive VQ scheme, adaptive HKNN, for image sequence coding. According to our experimental results, the improvement of adaptive HKNN can be up to 2.5 dB with 0.16 bpp transmission overhead for the image sequence "claire".<>
Keywords :
image coding; image sequences; self-organising feature maps; vector quantisation; Kohonen neural network; adaptive HKNN; adaptive VQ; bit rate; codebook size; codewords; coding performanc; experimental results; hierarchical KNN; image compression; image sequence coding; input nodes; neighborhood relations; output nodes; search time; self-organizing feature map; structured codebook design; transmission overhead; vector quantizer; Bit rate; Clustering algorithms; Computer science; Decoding; Image coding; Image reconstruction; Image sequences; Iterative algorithms; Neural networks; Pattern matching;
Conference_Titel :
TENCON '93. Proceedings. Computer, Communication, Control and Power Engineering.1993 IEEE Region 10 Conference on
Conference_Location :
Beijing, China
Print_ISBN :
0-7803-1233-3
DOI :
10.1109/TENCON.1993.328014