DocumentCode
1137403
Title
A prediction-based neural network scheme for lossless data compression
Author
Logeswaran, Rajasvaran
Author_Institution
Fac. of Eng., Multimedia Univ., Cyberjaya, Malaysia
Volume
32
Issue
4
fYear
2002
Firstpage
358
Lastpage
365
Abstract
This paper proposes a modified block-adaptive prediction-based neural network scheme for lossless data compression. A variety of neural network models from a selection of different network types, including feedforward, recurrent, and radial basis configurations are implemented with the scheme. The scheme is further expanded with combinations of popular lossless encoding algorithms. Simulation results are presented, taking characteristic features of the models, transmission issues, and practical considerations into account to determine optimized configuration, suitable training strategies, and implementation schemes. Estimations are used for comparisons of these characteristics with the existing schemes. It is also shown that the adaptations of the improvised scheme increases performance of even the classical predictors evaluated. In addition, the results obtained support that the total processing time of the two-stage scheme can, in certain cases, be faster than just using lossless encoders. Findings of the paper may be beneficial for future work, such as, in the hardware implementations of dedicated neural chips for lossless compression.
Keywords
data compression; encoding; neural chips; neural nets; characteristic features; dedicated neural chips; lossless data compression; lossless encoding algorithms; prediction-based neural network; simulation results; Artificial neural networks; Data compression; Feedforward neural networks; Finite impulse response filter; Hardware; Image coding; Neural networks; Propagation losses; Recurrent neural networks; Redundancy;
fLanguage
English
Journal_Title
Systems, Man, and Cybernetics, Part C: Applications and Reviews, IEEE Transactions on
Publisher
ieee
ISSN
1094-6977
Type
jour
DOI
10.1109/TSMCC.2002.806744
Filename
1176885
Link To Document