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for all sufficiently large, where is a minor of , and is the spectral radius of its argument.
The alternating minimization algorithm given in "A New Alternating Minimization Algorithm" can be extended to solve multichannel extension of ( ) when the underlying image has more than one channels and TV/L when the additive noise is impulsive.
Let be an -channel image, where, for each , represents the th channel. An observation of is modeled by ( ), in which case and have the same size and the number of channels as , and is a multichannel blurring operator of the form
where , each diagonal submatrix defines the blurring operator within the th channel, and each off-diagonal matrix , , defines how the th channel affects the th channel.
The multichannel extension of ( ) is
where is the identity matrix of order , and“ " is the Kronecker product. By introducing auxiliary variables , , ( ) is approximated by
For fixed , the minimizer function for is given by ( ) in which should be replaced by . On the other hand, for fixed , the minimization for is a least squares problem which is equivalent to the normal equations
where is a reordering of variables in a similar way as given in ( ). Under the periodic boundary condition, ( ) can be block diagonalized by FFTs and then solved by a low complexity Gaussian elimination method.
When the blurred image is corrupted by impulsive noise rather than Gaussian, we recover as the minimizer of a TV/L problem. For simplicity, we again assume is a single channel image and the extension to multichannel case can besimilarly done as in "Multichannel image deconvolution" . The TV/L problem is
Since the data-fidelity term is also not differentiable, in addition to , we introduce and add a quadratic penalty term. The approximation problem to ( ) is
where are penalty parameters. For fixed , the minimization for is the same as before, while the minimizer function for is given by the famous one-dimensional shrinkage:
On the other hand, for fixed and , the minimization for is a least squares problem which is equivalent to the normal equations
Similar to previous arguments, ( ) can be easily solved by FFTs.
In this section, we present the practical implementation and numerical results of the proposed algorithms. We used two images,Man (grayscale) and Lena (color) in our experiments, see . The two images are widely used in the field of image processing because they contain nice mixture of detail, flatregions, shading area and texture.
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