On the importance of the $\varepsilon$-regularization of the distribution-dependent Mumford-Shah model for hyperspectral image segmentation
Jan-Christopher Cohrs, Benjamin Berkels

TL;DR
This paper investigates the theoretical properties of a hyperspectral image segmentation model based on the Mumford-Shah functional, emphasizing the critical role of eigenvalue regularization for the model's well-posedness and practical applicability.
Contribution
It proves the existence of minimizers, analyzes the effects of regularization via $ ext{ extepsilon}$-regularization, and highlights the importance of eigenvalue regularization in the distribution-dependent Mumford-Shah model.
Findings
Existence of minimizers is proven for the regularized model.
$ ext{ extGamma}$-convergence is shown as the regularization parameter tends to zero.
Without regularization, the $ ext{ extGamma}$-limit may lack minimizers.
Abstract
Recently, the distribution-dependent Mumford-Shah model for hyperspectral image segmentation was introduced. It approximates an image based on first and second order statistics using a data term, that is built of a Mahalanobis distance plus a covariance regularization, and the total variation as spatial regularization. Moreover, to achieve feasibility, the appearing matrices are restricted to symmetric positive definite ones with eigenvalues exceeding a certain threshold. This threshold is chosen in advance as a data-independent parameter. In this article, we study theoretical properties of the model. In particular, we prove the existence of minimizers of the functional and show its -convergence when the threshold regularizing the eigenvalues of the matrices tends to zero. It turns out that in the -limit we lose the guaranteed existence of minimizers; and we give an…
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