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Graph approximation and generalized Tikhonov regularization for signal deblurring (2106.10453v1)

Published 19 Jun 2021 in math.NA and cs.NA

Abstract: Given a compact linear operator $\K$, the (pseudo) inverse $\K\dagger$ is usually substituted by a family of regularizing operators $\R_\alpha$ which depends on $\K$ itself. Naturally, in the actual computation we are forced to approximate the true continuous operator $\K$ with a discrete operator $\K{(n)}$ characterized by a finesses discretization parameter $n$, and obtaining then a discretized family of regularizing operators $\R_\alpha{(n)}$. In general, the numerical scheme applied to discretize $\K$ does not preserve, asymptotically, the full spectrum of $\K$. In the context of a generalized Tikhonov-type regularization, we show that a graph-based approximation scheme that guarantees, asymptotically, a zero maximum relative spectral error can significantly improve the approximated solutions given by $\R_\alpha{(n)}$. This approach is combined with a graph based regularization technique with respect to the penalty term.

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