Title of article :
Locally adaptive perceptual image coding
Author/Authors :
Hontsch، نويسنده , , I.، نويسنده , , Karam، نويسنده , , L.J.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2000
Abstract :
Most existing efforts in image and video compression
have focused on developing methods to minimize not perceptual
but rather mathematically tractable, easy to measure, distortion
metrics. While nonperceptual distortion measures were found
to be reasonably reliable for higher bit rates (high-quality applications),
they do not correlate well with the perceived quality
at lower bit rates and they fail to guarantee preservation of
important perceptual qualities in the reconstructed images despite
the potential for a good signal-to-noise ratio (SNR). This paper
presents a perceptual-based image coder, which discriminates
between image components based on their perceptual relevance
for achieving increased performance in terms of quality and bit
rate. The new coder is based on a locally adaptive perceptual
quantization scheme for compressing the visual data. Our strategy
is to exploit human visual masking properties by deriving visual
masking thresholds in a locally adaptive fashion based on a
subband decomposition. The derived masking thresholds are used
in controlling the quantization stage by adapting the quantizer
reconstruction levels to the local amount of masking present at
the level of each subband transform coefficient. Compared to the
existing non locally adaptive perceptual quantization methods, the
new locally adaptive algorithm exhibits superior performance and
does not require additional side information. This is accomplished
by estimating the amount of available masking from the already
quantized data and linear prediction of the coefficient under
consideration. By virtue of the local adaptation, the proposed
quantization scheme is able to remove a large amount of perceptually
redundant information. Since the algorithm does not require
additional side information, it yields a low entropy representation
of the image and is well suited for perceptually lossless image
compression.
Keywords :
Contrast masking , Contrast sensitivity , perceptual image compression , locally adaptive , perceptualquantization. , human visualsystem
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING