DocumentCode
1214605
Title
Bayes risk weighted vector quantization with posterior estimation for image compression and classification
Author
Perlmutter, Keren O. ; Perlmutter, Sharon M. ; Gray, Robert M. ; Olshen, Richard A. ; Oehler, Karen L.
Author_Institution
Dept. of Electr. Eng., Stanford Univ., CA, USA
Volume
5
Issue
2
fYear
1996
fDate
2/1/1996 12:00:00 AM
Firstpage
347
Lastpage
360
Abstract
Classification and compression play important roles in communicating digital information. Their combination is useful in many applications, including the detection of abnormalities in compressed medical images. In view of the similarities of compression and low-level classification, it is not surprising that there are many similar methods for their design. Because some of these methods are useful for designing vector quantizers, it seems natural that vector quantization (VQ) is explored for the combined goal. We investigate several VQ-based algorithms that seek to minimize both the distortion of compressed images and errors in classifying their pixel blocks. These algorithms are investigated with both full search and tree-structured codes. We emphasize a nonparametric technique that minimizes both error measures simultaneously by incorporating a Bayes risk component into the distortion measure used for the design and encoding. We introduce a tree-structured posterior estimator to produce the class posterior probabilities required for the Bayes risk computation in this design. For two different image sources, we demonstrate that this system provides superior classification while maintaining compression close or superior to that of several other VQ-based designs, including Kohonen´s (1992) “learning vector quantizer” and a sequential quantizer/classifier design
Keywords
Bayes methods; estimation theory; image classification; image coding; medical image processing; tree searching; vector quantisation; Bayes risk weighted vector quantization; VQ based algorithms; compressed medical images; distortion measure; error measures; full search codes; image classification; image compression; image sources; learning vector quantizer; low level classification; posterior estimation; sequential quantizer/classifier; tree structured codes; tree structured posterior estimator; vector quantizers; Biomedical imaging; Design methodology; Distortion measurement; Helium; Humans; Image coding; Image storage; Laboratories; Pixel; Vector quantization;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/83.480770
Filename
480770
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