We propose a new constrained optimization approach to hyperspectral (HS)
image restoration. Most existing methods restore a desirable HS image by
solving some optimization problem, which consists of a regularization term(s)
and a data-fidelity term(s). The methods have to handle a regularization
term(s) and a data-fidelity term(s) simultaneously in one objective function,
and so we need to carefully control the hyperparameter(s) that balances these
terms. However, the setting of such hyperparameters is often a troublesome task
because their suitable values depend strongly on the regularization terms
adopted and the noise intensities on a given observation. Our proposed method
is formulated as a convex optimization problem, where we utilize a novel hybrid
regularization technique named Hybrid Spatio-Spectral Total Variation (HSSTV)
and incorporate data-fidelity as hard constraints. HSSTV has a strong ability
of noise and artifact removal while avoiding oversmoothing and spectral
distortion, without combining other regularizations such as low-rank
modeling-based ones. In addition, the constraint-type data-fidelity enables us
to translate the hyperparameters that balance between regularization and
data-fidelity to the upper bounds of the degree of data-fidelity that can be
set in a much easier manner. We also develop an efficient algorithm based on
the alternating direction method of multipliers (ADMM) to efficiently solve the
optimization problem. Through comprehensive experiments, we illustrate the
advantages of the proposed method over various HS image restoration methods
including state-of-the-art ones.Comment: 20 pages, 4 tables, 10 figures, submitted to MDPI Remote Sensin