Classified Vector Quantization for Image Compression Using Direction Classification
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概要
- 論文の詳細を見る
In this paper, a classified vector quantization (CVQ) method using a novel direction based classifier is proposed. The new classifier uses a distortion measure related to the angle between vectors to determine the similarity of vectors. The distortion measure is simple and adequate to classify various edge types other than single and straight line types, which limit the size of image block to a rather small size. Simulation results show that the proposed technique can achieve better perceptual quality and edge integrity at a larger block size, as compared to other CVQs. It is shown when the vector dimension is changed from 16(4×4) to 64(8×8), the average bit rate can be reduced from 0.684 bpp to 0.191, whereas the PSNR degradation is only about 1.2 dB.
- 社団法人電子情報通信学会の論文
- 1999-03-25
著者
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Wang Chou-chen
Department Of Electrical Engineering National Cheng Kung University
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CHEN Chin-Hsing
Department of Management Information Systems, Central Taiwan University of Sciences and Technology
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Chen Chin-hsing
Department Of Electrical Engineering National Cheng Kung University
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