Multiscale image fusion using complex extensions of EMD
Empirical mode decomposition (EMD) is a fully data driven technique for decomposing
signals into their natural scale components. However the problem of uniqueness, caused by
the empirical nature of the algorithm and its sensitivity to changes in parameters, makes it
difficult to perform fusion of data from multiple and heterogeneous sources. A solution to this
problem is proposed using recent complex extensions of EMD which guarantees the same
number of decomposition levels, that is the uniqueness of the scales. The methodology is …
signals into their natural scale components. However the problem of uniqueness, caused by
the empirical nature of the algorithm and its sensitivity to changes in parameters, makes it
difficult to perform fusion of data from multiple and heterogeneous sources. A solution to this
problem is proposed using recent complex extensions of EMD which guarantees the same
number of decomposition levels, that is the uniqueness of the scales. The methodology is …
Empirical mode decomposition (EMD) is a fully data driven technique for decomposing signals into their natural scale components. However the problem of uniqueness, caused by the empirical nature of the algorithm and its sensitivity to changes in parameters, makes it difficult to perform fusion of data from multiple and heterogeneous sources. A solution to this problem is proposed using recent complex extensions of EMD which guarantees the same number of decomposition levels, that is the uniqueness of the scales. The methodology is used to address multifocus image fusion, whereby two or more partially defocused images are combined in automatic fashion so as to create an all in focus image.
ieeexplore.ieee.org
以上显示的是最相近的搜索结果。 查看全部搜索结果