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A Multilevel Shrinkage Approach for Curvelet Denoising

机译:曲线去噪的多级收缩方法

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This paper suggests an image restoration technique when the image is corrupted by additive white Gaussian noise. Based on the fact that the discrete curvelet transform is redundant, it proposes a scale adaptive threshold design for curvelet denoising where at each scale of curvelet transform a different threshold is applied to the transform coefficients to restore a noise free image. The strategy is to generate a set of thresholds corresponding to the various subbands of the transform whereas the traditional soft/hard thresholding applies the same threshold to each scale of transform coefficients. It is demonstrated numerically that this scheme obtains comparable performance to the state-of-the-art denoising approaches for a wide range of noise levels. Due to the adaptive support, the edges are clean and the restored images are visually pleasant.
机译:本文建议图像恢复技术当图像被添加白色高斯噪声损坏时。基于离散曲线变换是冗余的事实,提出了一种用于曲线的刻度自适应阈值设计,其中在每个刻度的Curvelet变换时,将不同的阈值应用于变换系数以恢复无噪声图像。该策略是生成与变换的各种子带对应的一组阈值,而传统的软/硬阈值处理适用于每个等级的变换系数的阈值。在数字上,该方案对广泛噪声水平的最先进的去噪方法获得了可比性的性能。由于自适应支撑,边缘清洁,并且恢复的图像视觉上令人愉悦。

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