Denoising Sphere-Valued Data by Relaxed Total Variation Regularization (2404.13181v1)
Abstract: Circle- and sphere-valued data play a significant role in inverse problems like magnetic resonance phase imaging and radar interferometry, in the analysis of directional information, and in color restoration tasks. In this paper, we aim to restore $(d-1)$-sphere-valued signals exploiting the classical anisotropic total variation on the surrounding $d$-dimensional Euclidean space. For this, we propose a novel variational formulation, whose data fidelity is based on inner products instead of the usually employed squared norms. Convexifying the resulting non-convex problem and using ADMM, we derive an efficient and fast numerical denoiser. In the special case of binary (0-sphere-valued) signals, the relaxation is provable tight, i.e. the relaxed solution can be used to construct a solution of the original non-convex problem. Moreover, the tightness can be numerically observed for barcode and QR code denoising as well as in higher dimensional experiments like the color restoration using hue and chromaticity and the recovery of SO(3)-valued signals.
- Orientation imaging: the emergence of a new microscopy. Metall. Mater. Trans. A, 24:819–831, 1993.
- A second order non-smooth variational model for restoring manifold-valued images. SIAM J. Sci. Comput., 38(1):567–597, 2016.
- Inferential statistics of electron backscatter diffraction data from within individual crystalline grains. J. Appl. Crystallogr., 43:1338–1355, 2010.
- Grain detection from 2d and 3d EBSD data—specification of the MTEX algorithm. Ultramicroscopy, 111(12):1720–1733, 2011.
- Convex analysis and monotone operator theory in Hilbert spaces. Springer, New York, 2011.
- arXiv:2307.10980, 2023.
- Restoration of manifold-valued images by half-quadratic minimization. Inverse Probl. Imaging, 10(2):281–304, 2016.
- Second order differences of cyclic data and applications in variational denoising. SIAM J. Imaging Sci., 7(4):2916–2953, jan 2014.
- Second order differences of cyclic data and applications in variational denoising. SIAM J. Imaging Sci., 7(4):2916–2953, 2014.
- G. E. Bredon. Topology and Geometry. Springer, New York, 1993.
- Synthetic aperture radar interferometry to measure earth’s surface topography and its deformation. Annu. Rev. Earth Planet Sci., 28(1):169–209, 2000.
- Anisotropic Total Variation Regularized L1superscript𝐿1{L}^{1}italic_L start_POSTSUPERSCRIPT 1 end_POSTSUPERSCRIPT-Approximation and Denoising/Deblurring of 2D Bar Codes. Inverse Probl. Imaging, 5(3):591–617, 2011.
- L. Condat. hal:00675043. 2012.
- L. Condat. A Direct Algorithm for 1D Total Variation Denoising. IEEE Signal Process. Lett., 20(11):1054–1057, 2013.
- L. Condat. Tikhonov regularization of circle-valued signals. IEEE Trans. Signal Process., 70:2775–2782, 2022.
- D. Cremers and E. Strekalovskiy. Total cyclic variation and generalizations. J. Math. Imaging Vis., 47(3):258–277, 2013.
- H. Federer. Curvature measures. Trans. Am. Math. Soc., 93(3):418–491, 1959.
- W. H. Fleming and R. Rishel. An integral formula for total gradient variation. Arch. Math., 11(1):218–222, 1960.
- P. Grohs and M. Sprecher. Total variation regularization on Riemannian manifolds by iteratively reweighted minimization. Inf. Inference, 5(4):353–378, 2016.
- arXiv:2308.00079, 2023.
- In Proceedings MLSP ’08, Cancun, Mexico, pages 239–243, New York, 2008. IEEE.
- A nonlocal denoising algorithm for manifold-valued images using second order statistics. SIAM J. Imaging Sci., 10(1):416–448, 2017.
- In Proceedings ICCV ’13, Sydney, Australia, pages 2944–2951, New York, 2013. IEEE.
- M. Nikolova and G. Steidl. Fast hue and range preserving histogram specification: theory and new algorithms for color image enhancement. IEEE Trans. Image Process., 23(9):4087–4100, 2014.
- Exemplar-based face colorization using image morphing. J. Imaging, 3(4):48, 2017.
- Image and video colorization using vector-valued reproducing kernel Hilbert spaces. J. Math. Imaging Vis., 37:49–65, 2010.
- Total variation regularization for manifold-valued data. SIAM J. Imaging Sci., 7(4):2226–2257, 2014.