Title of article :
Texture- and Multiple-Template-Based Algorithm for Lossless Compression of Error-Diffused Images
Author/Authors :
Huang، نويسنده , , Y. H.، نويسنده , , Chung، نويسنده , , K. L.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
Recently, several efficient context-based arithmetic
coding algorithms have been developed successfully for lossless
compression of error-diffused images. In this paper, we first
present a novel block- and texture-based approach to train the
multiple-template according to the most representative texture
features. Based on the trained multiple template, we next present
an efficient texture- and multiple-template-based (TM-based)
algorithm for lossless compression of error-diffused images. In
our proposed TM-based algorithm, the input image is divided into
many blocks and for each block, the best template is adaptively
selected from the multiple-template based on the texture feature
of that block. Under 20 testing error-diffused images and the
personal computer with Intel Celeron 2.8-GHz CPU, experimental
results demonstrate that with a little encoding time degradation,
0.365 s (0.901 s) on average, the compression improvement ratio
of our proposed TM-based algorithm over the joint bilevel image
group (JBIG) standard [over the previous block arithmetic coding
for image compression (BACIC) algorithm proposed by Reavy
and Boncelet is 24%] (19.4%). Under the same condition, the
compression improvement ratio of our proposed algorithm over
the previous algorithm by Lee and Park is 17.6% and still only
has a little encoding time degradation (0.775 s on average). In addition,
the encoding time required in the previous free tree-based
algorithm is 109.131 s on average while our proposed algorithm
takes 0.995 s; the average compression ratio of our proposed
TM-based algorithm, 1.60, is quite competitive to that of the free
tree-based algorithm, 1.62.
Keywords :
Context , Arithmetic coding , error-diffused images , Lossless Compression , multiple-template , texture.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING