Author :
Nobuhara, Hajime ; Pedrycz, Witold ; Hirota, Kaoru
Abstract :
A fast solving method of the solution for max continuous t-norm composite fuzzy relational equation of the type G(i, j)=(RT□Ai)T□Bj , i=1, 2, ..., I, j=1, 2, ..., J, where Ai∈F(X)X={x1, x2, ..., xM }, Bj∈F(Y) Y={y1, y2, ..., yN}, R∈F(X×Y), and □: max continuous t-norm composition, is proposed. It decreases the computation time IJMN(L+T+P) to JM(I+N)(L+P), where L, T, and P denote the computation time of min, t-norm, and relative pseudocomplement operations, respectively, by simplifying the conventional reconstruction equation based on the properties of t-norm and relative pseudocomplement. The method is applied to a lossy image compression and reconstruction problem, where it is confirmed that the computation time of the reconstructed image is decreased to 1/335.6 the compression rate being 0.0351, and it achieves almost equivalent performance for the conventional lossy image compression methods based on discrete cosine transform and vector quantization
Keywords :
data compression; fuzzy set theory; image reconstruction; vector quantisation; discrete cosine transform; fast solving method; fuzzy relational equation; image reconstruction; lossy image compression; t-norm composition; vector quantization; Discrete cosine transforms; Equations; Fuzzy sets; Gray-scale; Image coding; Image reconstruction; Inverse problems; Performance loss; Pixel; Vector quantization;