DocumentCode
1471528
Title
A cellular neural network for clustering-based adaptive quantization in subband video compression
Author
Chen, Chang Wen ; Chen, Lulin ; Luo, Jiebo
Author_Institution
Dept. of Electr. Eng., Rochester Univ., NY, USA
Volume
6
Issue
6
fYear
1996
fDate
12/1/1996 12:00:00 AM
Firstpage
688
Lastpage
692
Abstract
This paper presents a novel cellular connectionist model for the implementation of a clustering-based adaptive quantization in video coding applications. The adaptive quantization has been designed for a wavelet-based video coding system with a desired scene adaptive and signal adaptive quantization. Since the adaptive quantization is accomplished through a maximum a posteriori probability (MAP) estimation-based clustering process, its massive computation of neighborhood constraints makes it difficult for a software-based real-time implementation of video coding applications. The proposed cellular connectionist model aims at designing an architecture for the real-time implementation of the clustering-based adaptive quantization. With a cellular neural network architecture mapping onto the image domain, the powerful Gibbs spatial constraints are realized through interactions among neurons connected with their neighbors. In addition, the computation of coefficient distribution is designed as an external input to each component of a neuron or processing element (PE). We prove that the proposed cellular neural network does converge to the desired steady state with the proposed, update scheme. This model also provides a general architecture for image processing tasks with Gibbs spatial constraint-based computations
Keywords
adaptive signal processing; cellular neural nets; convergence of numerical methods; data compression; maximum likelihood estimation; neural net architecture; quantisation (signal); transform coding; video coding; wavelet transforms; Gibbs spatial constraint; MAP estimation; cellular neural network architecture; clustering based adaptive quantization; coefficient distribution; convergence; image processing; maximum a posteriori probability estimation; neighborhood constraints; neuron; processing element; real-time implementation; scene adaptive quantization; signal adaptive quantization; subband video compression; update scheme; video coding applications; wavelet based video coding system; Adaptive systems; Application software; Cellular neural networks; Computer architecture; Layout; Neurons; Power system modeling; Quantization; Signal design; Video coding;
fLanguage
English
Journal_Title
Circuits and Systems for Video Technology, IEEE Transactions on
Publisher
ieee
ISSN
1051-8215
Type
jour
DOI
10.1109/76.544741
Filename
544741
Link To Document