Non-linear image representation for efficient perceptual coding
J Malo, E P Simoncelli, I Epifanio, and R Navarro,
Published in:
IEEE Transactions on Image Processing,
15(1):68-80, January 2006.
© IEEE Signal Processing Society.
Image compression systems commonly operate by transforming the input
signal into a new representation whose elements are then
independently quantized.
The success of such a system depends on two
properties of the representation. First, the coding
rate is minimized only if the elements of the representation are
statistically independent. Second, the perceived coding
distortion is minimized only if the errors in a reconstructed image
arising from quantization of the different elements of the
representation are perceptually independent. We argue that
linear transforms cannot achieve either of these goals, and propose
an adaptive non-linear image representation
that greatly reduces
both the statistical and the perceptual redundancy amongst
representation elements. We develop an efficient method of inverting
this representation, and we demonstrate through simulations that
this dual reduction in dependency can greatly improve the visual
quality of compressed images.
Download:
Reprint (pdf)
| Online Publications