Vector quantization in DCT domain using fuzzy possibilistic c-means based on penalized and compensated constraints
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摘要
In this paper, fuzzy possibilistic c-means (FPCM) approach based on penalized and compensated constraints are proposed to vector quantization (VQ) in discrete cosine transform (DCT) for image compression. These approaches are named penalized fuzzy possibilistic c-means (PFPCM) and compensated fuzzy possibilistic c-means (CFPCM). The main purpose is to modify the FPCM strategy with penalized or compensated constraints so that the cluster centroids can be updated with penalized or compensated terms iteratively in order to find near-global solution in optimal problem. The information transformed by DCT was separated into DC and AC coefficients. Then, the AC coefficients are trained by using the proposed methods to generate better codebook based on VQ. The compression performances using the proposed approaches are compared with FPCM and conventional VQ method. From the experimental results, the promising performances can be obtained using the proposed approaches.
论文关键词:Discrete cosine transform,Fuzzy c-means,Fuzzy possibilistic c-means,Vector quantization
论文评审过程:Received 23 April 2001, Accepted 20 August 2001, Available online 21 November 2001.
论文官网地址:https://doi.org/10.1016/S0031-3203(01)00190-X