Title of article :
Fast-Searching Algorithm for Vector Quantization Using Projection and Triangular Inequality
Author/Authors :
J. Z. C. Lai and Y.-C. Liaw، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
In this paper, a new and fast-searching algorithm for
vector quantization is presented. Two inequalities, one used for
terminating the searching process and the other used to delete
impossible codewords, are presented to reduce the distortion
computations. Our algorithm makes use of a vector’s features
(mean value, edge strength, and texture strength) to reject many
unlikely codewords that cannot be rejected by other available
approaches. Experimental results show that our algorithm is
superior to other algorithms in terms of computing time and
the number of distortion calculations. Compared with available
approaches, our method can reduce the computing time and the
number of distortion computations significantly. Compared with
the best method of reducing distortion computation, our algorithm
can further reduce the number of distortion calculations by 29%
to 58.4%. Compared with the best encoding algorithm for vector
quantization, our approach also further reduces the computing
time by 8% to 47.7%.
Keywords :
Fast-search algorithm , Projection value , vectorquantization.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING