نتایج جستجو برای: curvelet transform

تعداد نتایج: 115190  

Journal: :Arab Journal of Mathematical Sciences 2014

2011
D. Manimegalai Yeqiu Li Jianming Lu Isabel Rodrigues Joao Sanches Jianwei Ma Arnaud De Decker John Aldo Lee Preeti D. Swami Jun Xu Lei Yang Dapeng Wu Richard E. Woods

The images usually bring different kinds of noise in the process of receiving, coding and transmission. In this paper the Curvelet transform is used for de-noising of image. Two digital implementations of the Curvelet transform (a multiscale transform) viz the Unequally Spaced Fast Fourier Transform (USFFT) and the Wrapping Algorithm are used to de-noise images degraded by different types of no...

Journal: :JSEA 2010
Jindong Xu Huimin Pang Jianping Zhao

A digital image watermarking algorithm based on fast curvelet transform is proposed. Firstly, the carrier image is decomposed by fast curvelet transform, and, the watermarking image is scrambled by Arnold transform. Secondly, the binary watermarking image is embedded into the medium frequency coefficients according to the human visual characteristics and curvelet coefficients. Experiment result...

2009
D. L. Donoho J.-L. Starck F. Murtagh

We present in this paper a new method for con­ trast enhancement based on the curvelet transform. The curvelet transform represents edges better than wavelets, and is therefore well-suited for multiscale edge enhancement. We compare this approach with enhancement based on the wavelet transform, and the Multiscale Retinex. In a range of examples, we use edge de­ tection and segmentation, among o...

Journal: :SIAM J. Math. Analysis 2014
Haizhao Yang Lexing Ying

This paper introduces the synchrosqueezed curvelet transform as an optimal tool for two-dimensional mode decomposition of wavefronts or banded wave-like components. The synchrosqueezed curvelet transform consists of a generalized curvelet transform with application dependent geometric scaling parameters, and a synchrosqueezing technique for a sharpened phase space representation. In the case of...

2009
Md. Monirul Islam Dengsheng Zhang Guojun Lu

Region based image retrieval has received significant attention from recent researches because it can provide local description of images, object based query, and semantic learning. In this paper, we apply curvelet transform to region based retrieval of color images. The curvelet transform has shown promising result in image de-noising, character recognition, and texture image retrieval. Howeve...

Journal: :IEEE transactions on image processing : a publication of the IEEE Signal Processing Society 2003
Jean-Luc Starck Fionn Murtagh Emmanuel J. Candès David L. Donoho

We present in this paper a new method for contrast enhancement based on the curvelet transform. The curvelet transform represents edges better than wavelets, and is therefore well-suited for multiscale edge enhancement. We compare this approach with enhancement based on the wavelet transform, and the Multiscale Retinex. In a range of examples, we use edge detection and segmentation, among other...

Journal: :Journal of Multimedia 2009
Guangming Zhang Zhiming Cui Fanzhang Li Jian Wu

The curvelet transform as a multiscale transform has directional parameters occurs at all scales, locations, and orientations. It is superior to wavelet transform in image processing domain. This paper analyzes the characters of DSA medical image, and proposes a novel approach for DSA medical image fusion, which is using curvelet information entropy and dynamic fuzzy logic. Firstly, the image w...

Journal: :CoRR 2013
A. Djimeli Daniel Tchiotsop René Tchinda

This paper focuses on improved edge model based on Curvelet coefficients analysis. Curvelet transform is a powerful tool for multiresolution representation of object with anisotropic edge. Curvelet coefficients contributions have been analyzed using Scale Invariant Feature Transform (SIFT), commonly used to study local structure in images. The permutation of Curvelet coefficients from original ...

2014
Jie Sun Zhe-Ming Lu Lijian Zhou L. J. Zhou

The iris texture curve features play an important role in iris recognition. Although better performance in terms of recognition effectiveness can be attained using the recognition approach based on the wavelet transform, the iris curve singularity cannot be sparsely represented by wavelet coefficients. In view of the better approximation accuracy and sparse representation ability of the Curvele...

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