Author:
Boccuto Antonio,Gerace Ivan,Giorgetti Valentina,Martinelli Francesca,Tonazzini Anna
Abstract
AbstractThis paper proposes an edge-preserving regularization technique to solve the color image demosaicing problem in the realistic case of noisy data. We enforce intra-channel local smoothness of the intensity (low-frequency components) and inter-channel local similarity of the depth of object borders and textures (high-frequency components). Discontinuities of both the low-frequency and high-frequency components are accounted for implicitly, i.e., through suitable functions of the proper derivatives. For the treatment of even the finest image details, derivatives of first, second, and third orders are considered. The solution to the demosaicing problem is defined as the minimizer of an energy function, accounting for all these constraints plus a data fidelity term. This non-convex energy is minimized via an iterative deterministic algorithm, applied to a family of approximating functions, each implicitly referring to geometrically consistent image edges. Our method is general because it does not refer to any specific color filter array. However, to allow quantitative comparisons with other published results, we tested it in the case of the Bayer CFA and on the Kodak 24-image dataset, the McMaster (IMAX) 18-image dataset, the Microsoft Demosaicing Canon 57-image dataset, and the Microsoft Demosaicing Panasonic 500-image dataset. The comparisons with some of the most recent demosaicing algorithms show the good performance of our method in both the noiseless and noisy cases.
Funder
Università degli Studi di Perugia
Publisher
Springer Science and Business Media LLC
Reference76 articles.
1. Aelterman, J., Goossens, B., De Vylder, J., Pizurica, A., Philips, W.: Computationally Efficient Locally Adaptive Demosaicing of Color Filter Array Images Using the Dual-Tree Complex Wavelet Packet Transform. PLoS ONE 8(5), 1–18 (2013)
2. Baek, M., Jeong, J.: Demosaicing algorithm using high-order interpolation with sobel operators. In: Proceedings of the World Congress on Engineering, WCE 2014, Lecture Notes in Engineering and Computer Science 1, pp. 521-524 (2014)
3. Bai, C., Li, J., Lin, Z., Yu, J., Chen, Y.-W.: Penrose demosaicking. IEEE Trans. Image Process. 24, 1672–1684 (2015)
4. Bayer, B. E.: Color imaging array. U.S. Patent. 3 971 065 (1976)
5. Beck, A.: Introduction to nonlinear optimization - Theory, Algorithms, and Applications with MATLAB. SIAM Mathematical Optimization, Philadelphia, PA, USA (2014)