Title :
Capsule Endoscopy Image Coding Using Wavelet-Based Adaptive Vector Quantization without Codebook Training
Author :
Miaou, Shaou-Gang ; Chen, Shih-Tse ; Ke, Fu-Sheng
Author_Institution :
Chung Yuan Christian University
Abstract :
The amount of image data generated by capsule endoscopy is so large that data compression is desirable. In our compression scheme, a codebook (CB) replenishment mechanism is incorporated in a wavelet-based adaptive vector quantizer (VQ). The progressive SPIHT coding is used to meet the quality demand from a user. Furthermore, in our VQ implementation, a modeling, rather than a training, technique is proposed to generate an initial CB, where a pseudo-noise sequence is used to create such a CB at both the encoder and the decoder. Experimental results show that the proposed CB modeling method produces comparable performance to the one using CB training.
Keywords :
capsule endoscopy images; codebook modeling; compression; pseudo-noise sequence; Biomedical telemetry; Data compression; Discrete wavelet transforms; Endoscopes; Image coding; Image generation; Iterative decoding; PSNR; TV; Vector quantization; capsule endoscopy images; codebook modeling; compression; pseudo-noise sequence;
Conference_Titel :
Information Technology and Applications, 2005. ICITA 2005. Third International Conference on
Print_ISBN :
0-7695-2316-1
DOI :
10.1109/ICITA.2005.93