DocumentCode :
1478229
Title :
Variable-length constrained-storage tree-structured vector quantization
Author :
Bayazit, Ulug ; Pearlman, William A.
Author_Institution :
Toshiba American Electron. Component Inc., San Jose, CA, USA
Volume :
8
Issue :
3
fYear :
1999
fDate :
3/1/1999 12:00:00 AM
Firstpage :
321
Lastpage :
331
Abstract :
Constrained storage vector quantization, (CSVQ), introduced by Chan and Gersho (1990, 1991) allows for the stagewise design of balanced tree-structured residual vector quantization codebooks with low encoding and storage complexities. On the other hand, it has been established by Makhoul et al. (1985), Riskin et al. (1991), and by Mahesh et al. (see IEEE Trans. Inform. Theory, vol.41, p.917-30, 1995) that variable-length tree-structured vector quantizer (VLTSVQ) yields better coding performance than a balanced tree-structured vector quantizer and may even outperform a full-search vector quantizer due to the nonuniform distribution of rate among the subsets of its input space. The variable-length constrained storage tree-structured vector quantization (VLCS-TSVQ) algorithm presented in this paper utilizes the codebook sharing by multiple vector sources concept as in CSVQ to greedily grow an unbalanced tree structured residual vector quantizer with constrained storage. It is demonstrated by simulations on test sets from various synthetic one dimensional (1-D) sources and real-world images that the performance of VLCS-TSVQ, whose codebook storage complexity varies linearly with rate, can come very close to the performance of greedy growth VLTSVQ of Riskin et al. and Mahesh et al. The dramatically reduced size of the overall codebook allows the transmission of the code vector probabilities as side information for source adaptive entropy coding
Keywords :
adaptive codes; entropy codes; image coding; source coding; trees (mathematics); variable length codes; vector quantisation; VLCS-TSVQ algorithm; balanced tree-structured residual VQ codebooks; balanced tree-structured vector quantizer; code vector probabilities; codebook sharing; codebook storage complexity; coding performance; constrained storage vector quantization; full-search vector quantizer; greedy growth VLTSVQ; image coding; input space; low encoding complexity; multiple vector sources; nonuniform rate distribution; real-world images; side information; simulations; source adaptive entropy coding; synthetic 1D sources; test sets; variable-length tree-structured VQ; Algorithm design and analysis; Decoding; Encoding; Entropy coding; Image coding; Image storage; Modeling; Probability; Testing; Vector quantization;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/83.748888
Filename :
748888
Link To Document :
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