A comparative study on mammographic image denoising technique using wavelet, curvelet and contourlet transforms

E. Malar, A. Kandaswamy, S. S. Kirthana, D. Nivedhitha
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引用次数: 11

Abstract

This article focuses on comparing the discriminating power of the various multi-resolution based thresholding techniques - wavelet, curvelet, and contourlet for image denoising. Using multiresolution techniques, mammogram images are decomposed into different resolution levels, which are sensitive to different frequency bands. We implement the proposed algorithm on the mammogram images embedded in Random, Salt and Pepper, Poisson, Speckle and Gaussian noises. Curvelet transform employed in the proposed scheme provides sparse decomposition as compared to the wavelet and contourlet transform methods. The curvelet transform has a strong directional character which combines multiscale analysis and ideas of geometry to achieve the optimal rate of convergence by simple thresholding. The proposed algorithm succeeded in providing improved denoising performance to recover the shape of edges and important detailed components. Empirical results proved that the curvelet-based thresholding can obtain a better image estimate than the wavelet- based and contourlet-based restoration methods.
小波变换、曲线变换和轮廓波变换乳腺x线图像去噪技术的比较研究
本文重点比较了各种基于多分辨率阈值技术的判别能力-小波,曲线和轮廓波图像去噪。利用多分辨率技术,将乳房x线图像分解为不同的分辨率水平,这些分辨率水平对不同的频段敏感。我们在随机噪声、椒盐噪声、泊松噪声、斑点噪声和高斯噪声的乳房x光图像上实现了该算法。与小波变换和轮廓波变换方法相比,该方法采用曲线变换进行稀疏分解。曲线变换具有很强的方向性,它结合了多尺度分析和几何思想,通过简单的阈值分割实现了最优的收敛速度。该算法成功地提供了改进的去噪性能,以恢复边缘形状和重要的细节成分。实验结果表明,基于曲线的阈值分割比基于小波和轮廓波的恢复方法能获得更好的图像估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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