Title :
Lossless image compression based on Kernel Least Mean Squares
Author :
Verhack, Ruben ; Lange, Lieven ; Lambert, Peter ; Van de Walle, Rik ; Sikora, Thomas
Author_Institution :
Multimedia Lab., Ghent Univ., Ghent, Belgium
fDate :
May 31 2015-June 3 2015
Abstract :
This paper introduces a novel approach for coding luminance images using kernel-based adaptive filtering and context-adaptive arithmetic coding. This approach tackles the problem that is present in current image and video coders; these coders depend on assumptions of the image and are constrained by the linearity of their predictors. The efficacy of the predictors determines the compression gain. The goal is to create a generic image coder that learns and adapts to the characteristics of the signals and handles nonlinearity in the prediction. Results show that pixel luminance prediction using the Kernel Least Mean Squares (KLMS) yields a significant gain compared to the standard Least Mean Squares algorithm. By coding the residual using a Context-Adaptive Arithmetic Coder (CAAC), the codec is able to outperform the current industry standards of lossless image coding. An average bitrate reduction of more than 2.5% is found for the used test set.
Keywords :
data compression; image coding; least mean squares methods; CAAC; KLMS; bitrate reduction; codec; context-adaptive arithmetic coding; kernel least mean squares; kernel-based adaptive filtering; lossless image compression; luminance image coding; pixel luminance prediction; predictors efficacy; video coding; Bandwidth; Encoding; Entropy; Image coding; Kernel; Least squares approximations; Prediction algorithms;
Conference_Titel :
Picture Coding Symposium (PCS), 2015
Conference_Location :
Cairns, QLD
DOI :
10.1109/PCS.2015.7170073