Title :
Edge-directed prediction for lossless compression of natural images
Author :
Li, Xin ; Orchard, Michael T.
Author_Institution :
Sharp Labs. of America, Camas, WA, USA
fDate :
6/1/2001 12:00:00 AM
Abstract :
This paper sheds light on the least-square (LS)-based adaptive prediction schemes for lossless compression of natural images. Our analysis shows that the superiority of the LS-based adaptation is due to its edge-directed property, which enables the predictor to adapt reasonably well from smooth regions to edge areas. Recognizing that LS-based adaptation improves the prediction mainly around the edge areas, we propose a novel approach to reduce its computational complexity with negligible performance sacrifice. The lossless image coder built upon the new prediction scheme has achieved noticeably better performance than the state-of-the-art coder CALIC with moderately increased computational complexity
Keywords :
adaptive signal processing; computational complexity; data compression; image coding; least squares approximations; prediction theory; CALIC; LS-based adaptation; computational complexity reduction; edge areas; edge-directed prediction; least-square-based adaptive prediction; lossless image coder; lossless image compression; natural images; smooth regions; Code standards; Computational complexity; Decorrelation; Detectors; Gaussian processes; Image coding; Image edge detection; Performance loss; Statistics; Transform coding;
Journal_Title :
Image Processing, IEEE Transactions on