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Journal ArticleDOI

New tight frames of curvelets and optimal representations of objects with piecewise C2 singularities

TLDR
This paper introduces new tight frames of curvelets to address the problem of finding optimally sparse representations of objects with discontinuities along piecewise C2 edges.
Abstract
This paper introduces new tight frames of curvelets to address the problem of finding optimally sparse representations of objects with discontinuities along piecewise C 2 edges. Conceptually, the curvelet transform is a multiscale pyramid with many directions and positions at each length scale, and needle-shaped elements at fine scales. These elements have many useful geometric multiscale features that set them apart from classical multiscale representations such as wavelets. For instance, curvelets obey a parabolic scaling relation which says that at scale 2 -j , each element has an envelope that is aligned along a ridge of length 2 -j/2 and width 2 -j . We prove that curvelets provide an essentially optimal representation of typical objects f that are C 2 except for discontinuities along piecewise C 2 curves. Such representations are nearly as sparse as if f were not singular and turn out to be far more sparse than the wavelet decomposition of the object. For instance, the n-term partial reconstruction f C n obtained by selecting the n largest terms in the curvelet series obeys ∥f - f C n ∥ 2 L2 ≤ C . n -2 . (log n) 3 , n → ∞. This rate of convergence holds uniformly over a class of functions that are C 2 except for discontinuities along piecewise C 2 curves and is essentially optimal. In comparison, the squared error of n-term wavelet approximations only converges as n -1 as n → ∞, which is considerably worse than the optimal behavior.

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Citations
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Journal ArticleDOI

Optimally Sparse Representations of 3D Data with $C^2$ Surface Singularities Using Parseval Frames of Shearlets

TL;DR: It is proved that this 3D shearlet construction provides essentially optimal sparse representations for functions on $\mathbb{R}^3$ which are $C-regular away from discontinuities along $C^2$ surfaces, and it is shown that this asymptotic behavior significantly outperforms wavelet and Fourier series approximations.
Proceedings ArticleDOI

Vehicle Recognition Using Curvelet Transform and SVM

TL;DR: The results of this test show, the right recognition rate of vehicle's model in this recognition system, at the time of using total scales information numbers 3&4 curvelet coefficients matrix is about 99%.
Journal ArticleDOI

Deep Neural Network Approximation Theory

TL;DR: In this paper, it was shown that deep networks are Kolmogorov-optimal approximants for unit balls in Besov spaces and modulation spaces, and that for sufficiently smooth functions finite-width deep networks require strictly smaller connectivity than finite-depth wide networks.
Journal ArticleDOI

Two Novel Bayesian Multiscale Approaches for Speckle Suppression in SAR Images

TL;DR: Two new Bayesian speckle-suppression approaches are proposed and it is demonstrated that the 2D-GARCH model can capture the characteristics of curvelet coefficients, such as heavy tailed marginal distribution, and the dependences among them, which results in better characterization of SAR image subbands and improved restoration in noisy environments.
Journal ArticleDOI

Data-Driven Multi-scale Non-local Wavelet Frame Construction and Image Recovery

TL;DR: A scheme for constructing a non-local wavelet frame or wavelet tight frame that is adaptive to the input image and which exploits both the sparse prior of local variations of image intensity and the global self-recursion of image structures in spatial domain and across scales is developed.
References
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Journal ArticleDOI

De-noising by soft-thresholding

TL;DR: The authors prove two results about this type of estimator that are unprecedented in several ways: with high probability f/spl circ/*/sub n/ is at least as smooth as f, in any of a wide variety of smoothness measures.
Journal ArticleDOI

The curvelet transform for image denoising

TL;DR: In this paper, the authors describe approximate digital implementations of two new mathematical transforms, namely, the ridgelet transform and the curvelet transform, which offer exact reconstruction, stability against perturbations, ease of implementation, and low computational complexity.
Journal ArticleDOI

High performance scalable image compression with EBCOT

TL;DR: A new image compression algorithm is proposed, based on independent embedded block coding with optimized truncation of the embedded bit-streams (EBCOT), capable of modeling the spatially varying visual masking phenomenon.
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Painless nonorthogonal expansions

TL;DR: In a Hilbert space H, discrete families of vectors {hj} with the property that f = ∑j〈hj ǫ à à hj à f à for every f in H are considered.
Journal ArticleDOI

Shiftable multiscale transforms

TL;DR: Two examples of jointly shiftable transforms that are simultaneously shiftable in more than one domain are explored and the usefulness of these image representations for scale-space analysis, stereo disparity measurement, and image enhancement is demonstrated.