A Novel Competitive Learning Technique for the Design of Variable-Rate Vector Quantizers with Reproduction Vector Training in the Wavelet Domain
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概要
- 論文の詳細を見る
This paper presents a novel competitive learning algorithm for the design of variable-rate vector quantizers(VQs). The algorithm, termed variable-rate competitive learning(VRCL) algorithm, designs a VQ having minimum average distortion subject to a rate constraint. The VRCL performs the weight vector training in the wavelet domain so that required training time is short. In addition, the algorithm enjoys a better rate-distortion performance than that of other existing VQ design algorithms and competitive learning algorithms. The learning algorithm is also more insensitive to the selection of initial codewords as compared with existing design algorithms. Therefore, the VRCL algorithm can be an effective alternative to the existing variable-rate VQ design algorithms for the applications of signal compression.
- 社団法人電子情報通信学会の論文
- 2000-09-25
著者
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Hwang Wen-jyi
Department Of Electrical Engineering Chung Yuan Christian University
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Liao Shih-chiang
Department Of Electrical Engineering Chung Yuan Christian University
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LEOU Maw-Rong
Department of Electrical Engineering, Chung Yuan Christian University
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OU Chienmin
Department of Electrical Engineering, Chung Yuan Christian University
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Ou Chienmin
Department Of Electrical Engineering Chung Yuan Christian University
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Leou Maw-rong
Department Of Electrical Engineering Chung Yuan Christian University
関連論文
- A Novel Variable-Rate Classified Vector Quantizer Design Algorithm for Image Coding
- A Fuzzy Entropy-Constrained Vector Quantizer Design Algorithm and Its Applications to Image Coding
- A Novel Competitive Learning Technique for the Design of Variable-Rate Vector Quantizers with Reproduction Vector Training in the Wavelet Domain