Title of article :
Minimax partial distortion competitive learning for optimal codebook design
Author/Authors :
Ce Zhu، نويسنده , , Lai-Man Po، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1998
Abstract :
The design of the optimal codebook for a given
codebook size and input source is a challenging puzzle that remains
to be solved. The key problem in optimal codebook design
is how to construct a set of codevectors efficiently to minimize
the average distortion. A minimax criterion of minimizing the
maximum partial distortion is introduced in this paper. Based
on the partial distortion theorem, it is shown that minimizing
the maximum partial distortion and minimizing the average
distortion will asymptotically have the same optimal solution
corresponding to equal and minimal partial distortion. Motivated
by the result, we incorporate the alternative minimax criterion
into the on-line learning mechanism, and develop a new algorithm
called minimax partial distortion competitive learning (MMPDCL)
for optimal codebook design. A computation acceleration scheme
for the MMPDCL algorithm is implemented using the partial
distance search technique, thus significantly increasing its computational
efficiency. Extensive experiments have demonstrated that
compared with some well-known codebook design algorithms, the
MMPDCL algorithm consistently produces the best codebooks
with the smallest average distortions. As the codebook size increases,
the performance gain becomes more significant using
the MMPDCL algorithm. The robustness and computational
efficiency of this new algorithm further highlight its advantages.
Keywords :
Codebook design , Competitive learning , vectorquantization.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING