DocumentCode
2399841
Title
Adaptive image quantization based on learning classifier systems
Author
Lin, Jianhua
Author_Institution
Div. of Comput. Sci., Eastern Connecticut State Univ., Willimantic, CT, USA
fYear
1995
fDate
28-30 Mar 1995
Firstpage
477
Abstract
Summary form only given. The performance of a quantizer depends primarily on the selection of a codebook. Most of the quantization techniques used in the past are based on a static codebook which stays unchanged for the entire input. As already demonstrated successfully in lossless data compression, adaptation can be very beneficial in the compression of typically changing input data. Adaptive quantization has been difficult to accomplish because of its lossy nature. We present a model for distribution-free adaptive image quantization based on learning classifier systems which have been used successfully in machine learning. A basic learning classifier system is a special type of message-processing, rule-based system that produces output according to its input environment. Probabilistic learning mechanisms are used to dynamically direct the behavior of the system to adapt to its environment. The adaptiveness of a learning classifier system seems very appropriate for the quantization problem. A learning classifier system based adaptive quantizer consists of the input data, a codebook, and the output. When an input can not be matched, a new codebook entry is constructed to match the input. Such an algorithm allows us not only to deal with the changing environment, but also to control the quality of the quantized output. The adaptive quantizers presented can be applied to both scalar quantization and vector quantization. Experimental results for each case in image quantization are very promising
Keywords
adaptive signal processing; image classification; image coding; knowledge based systems; learning (artificial intelligence); learning systems; vector quantisation; adaptive image quantization; codebook; distribution-free adaptive image quantization; experimental results; input data; learning classifier systems; lossless data compression; machine learning; message-processing rule-based system; probabilistic learning mechanisms; quantization techniques; quantized output quality control; scalar quantization; vector quantization; Adaptive systems; Computed tomography; Computer science; Data compression; Electronic mail; Image coding; Knowledge based systems; Learning systems; Machine learning; Quantization;
fLanguage
English
Publisher
ieee
Conference_Titel
Data Compression Conference, 1995. DCC '95. Proceedings
Conference_Location
Snowbird, UT
ISSN
1068-0314
Print_ISBN
0-8186-7012-6
Type
conf
DOI
10.1109/DCC.1995.515587
Filename
515587
Link To Document