The curvelet transform for image denoising
Top Cited Papers
- 7 August 2002
- journal article
- Published by Institute of Electrical and Electronics Engineers (IEEE) in IEEE Transactions on Image Processing
- Vol. 11 (6) , 670-684
- https://doi.org/10.1109/tip.2002.1014998
Abstract
We describe approximate digital implementations of two new mathematical transforms, namely, the ridgelet transform and the curvelet transform. Our implementations offer exact reconstruction, stability against perturbations, ease of implementation, and low computational complexity. A central tool is Fourier-domain computation of an approximate digital Radon transform. We introduce a very simple interpolation in the Fourier space which takes Cartesian samples and yields samples on a rectopolar grid, which is a pseudo-polar sampling set based on a concentric squares geometry. Despite the crudeness of our interpolation, the visual performance is surprisingly good. Our ridgelet transform applies to the Radon transform a special overcomplete wavelet pyramid whose wavelets have compact support in the frequency domain. Our curvelet transform uses our ridgelet transform as a component step, and implements curvelet subbands using a filter bank of a/spl grave/ trous wavelet filters. Our philosophy throughout is that transforms should be overcomplete, rather than critically sampled. We apply these digital transforms to the denoising of some standard images embedded in white noise. In the tests reported here, simple thresholding of the curvelet coefficients is very competitive with "state of the art" techniques based on wavelets, including thresholding of decimated or undecimated wavelet transforms and also including tree-based Bayesian posterior mean methods. Moreover, the curvelet reconstructions exhibit higher perceptual quality than wavelet-based reconstructions, offering visually sharper images and, in particular, higher quality recovery of edges and of faint linear and curvilinear features. Existing theory for curvelet and ridgelet transforms suggests that these new approaches can outperform wavelet methods in certain image reconstruction problems. The empirical results reported here are in encouraging agreement.Keywords
This publication has 19 references indexed in Scilit:
- Digital curvelet transform: strategy, implementation, and experimentsPublished by SPIE-Intl Soc Optical Eng ,2000
- Orthonormal Ridgelets and Linear SingularitiesSIAM Journal on Mathematical Analysis, 2000
- Orthonormal finite ridgelet transform for image compressionPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2000
- Multiscale entropy filteringSignal Processing, 1999
- Wedgelets: nearly minimax estimation of edgesThe Annals of Statistics, 1999
- A new entropy measure based on the wavelet transform and noise modeling [image compression]IEEE Transactions on Circuits and Systems II: Analog and Digital Signal Processing, 1998
- Image Processing and Data AnalysisPublished by Cambridge University Press (CUP) ,1998
- Wavelet-based statistical signal processing using hidden Markov modelsIEEE Transactions on Signal Processing, 1998
- Wavelet Sampling and Localization Schemes for the Radon Transform in Two DimensionsSIAM Journal on Applied Mathematics, 1997
- Digital reconstruction of multidimensional signals from their projectionsProceedings of the IEEE, 1974