Image Coding Using an Improved Feature Map Finite-State Vector Quantization(Regular Section)
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概要
- 論文の詳細を見る
Finite-state vector quantization (FSVQ) is a well-known block encoding technique for digital image compression at low bit rate application. In this paper, an improved feature map finite-state vector quantization (IFMFSVQ) algorithm using three-sided side-match prediction is proposed for image coding. The new three-sided side-match improves the prediction quality of input blocks. Precoded blocks are used to alleviate the error propagation of side-match. An edge threshold is used to classify the blocks into nonedge or edge blocks to improve bit rate performance. Furthermore, an adaptive method is also obtained. Experimental results reveal that the new IFMFSVQ reduces bit rate significantly maintaining the same subjective quality, as compared to the basic FMFSVQ method.
- 社団法人電子情報通信学会の論文
- 2002-11-01
著者
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Rahim Newaz
The Graduate School Of Science And Technology Chiba University
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YAHAGI Takashi
the Graduate School of Science and Technology, Chiba University
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Yahagi Takashi
The Graduate School Of Science And Technology Chiba University
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