Title of article :
Smooth side-match classified vector quantizer with variable block size
Author/Authors :
Shiueng Bien Yang، نويسنده , , Lin-Yu Tseng، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2001
Abstract :
Although the side-match vector quantizer (SMVQ)
reduces the bit rate, the image coding quality by SMVQ generally
degenerates as the gray level transition across the boundaries of the
neighboring blocks is increasing or decreasing. This study presents
a smooth side-match method to select a state codebook according to
the smoothness of the gray levels between neighboring blocks. This
method achieves a higher PSNR and better visual perception than
SMVQ does for the same bit rate. Moreover, to design codebooks,
a genetic clustering algorithm that automatically finds the appropriate
number of clusters is proposed. The proposed smooth sidematch
classified vector quantizer(SSM-CVQ)is thus a combination
of three techniques: the classified vector quantization, the variable
block size segmentation and the smooth side-match method. Experimental
results indicate that SSM-CVQ has a higher PSNR and a
lower bit rate than other methods. Furthermore, the Lena image
can be coded by SSM-CVQ with 0.172 bpp and 32.49 dB in PSNR.
Keywords :
smooth side-match classified vector quantizer. , Genetic clustering algorithm , Image coding
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING