Numerical implementation of the ambrosio-tortorelli functional using discrete calculus and application to image restoration and inpainting

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Abstract

The Mumford-Shah (MS) functional is one of the most influential variational model in image segmentation, restoration, and cartooning. Difficult to solve, the Ambrosio-Tortorelli (AT) functional is of particular interest, because minimizers of AT can be shown to converge to a minimizer of MS. This paper takes an interest in a new method for numerically solving the AT model [11]. This method formulates the AT functional in a discrete calculus setting, and by this way is able to capture the set of discontinuities as a one-dimensional set. It is also shown that this model is competitive with total variation restoration methods. We present here the discrete AT models in details, and compare its merit with recent convex relaxations of AT and MS functionals. We also examine the potential of this model for inpainting, and describe its implementation in the DGtal library, an open-source project.

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APA

Foare, M., Lachaud, J. O., & Talbot, H. (2017). Numerical implementation of the ambrosio-tortorelli functional using discrete calculus and application to image restoration and inpainting. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 10214 LNCS, pp. 91–103). Springer Verlag. https://doi.org/10.1007/978-3-319-56414-2_7

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