Here we perform a more thorough comparison of RECON and SPIHT, based on an
objective coder selection procedure . Tests here reported were
performed on the dataset of 100 standard
grayscale test images.
Given a test image
, let
be the set of decoded images at very low bit rates
using SPIHT;
be the set of decoded images at the same bit rates
using RECON. The compound gain
may then be applied to quantify the visual distinctness by means of
the difference between the original image
and decoded images at very low bit rates
:
Once distortion functions
have been calculated following above equation , we make use of an objective
criterion for coder selection based on the overall difference between the
two functions
and
, which can be measured by a Kolmogorov-Smirnov (K-S) test to a certain
required level of significance.
Definition: Coder Selection Procedure. In the language of statistical
hypothesis testing, the coding scheme RECON is significantly better than
SPIHT for test image
if the following two conditions are true:
Condition 1 takes into account that optimal coder tends to produce
the lowest value of
across bit rates, and disproving the null hypothesis in condition 2
in effect proves data sets
and
are from different distributions. If both conditions hold, it allows
us to assess the fact that dataset
is significantly better than dataset
.
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Tables I and II summarize the results of this experiment on the test images of the dataset in : twenty-five out of hundred test images (25 %) have passed conditions (1) and (2) in the coder selection procedure, and hence, RECON is significantly better than SPIHT with high confidence level for twenty-five per cent of the dataset of test images. Whereas SPIHT is better than RECON for one per cent of images.
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