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A modified curvelet-like transform with application to image denoising

机译:改进的Curvelet样变换及其在图像去噪中的应用

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According to the essential ideas behind the curvelet transform, we recognize that the noise averaging property of the projection-slice theorem plays an important role in curvelet denoising as well as ridgelet coefficients thresholding. Based on this idea, a simplified curvelet-like transform is presented in this paper. Instead of using the original block size 2/sup -j/2/ for subband [2/sup J/, 2/sup f+1/], it takes the full size of the image as the block side-length in every subband. Its denoising threshold for ridgelet coefficients of each subband is also adapted to the corresponding scale to avoid gray level increase and detail degradation. As a result, this modified implementation provides high speed processing. Furthermore, experiments with noisy images and poor quality X-ray pictures demonstrate that the suggested method works well when the noise deviation is estimated correctly.
机译:根据Curvelet变换背后的基本思想,我们认识到投影切片定理的噪声平均特性在Curvelet去噪以及脊波系数阈值化中起着重要作用。基于此思想,本文提出了一种简化的曲线样变换。对于子带[2 / sup J /,2 / sup f + 1 /],不使用原始块大小2 / sup -j / 2 /,而是将图像的完整大小作为每个子带中的块边长。其每个子带的脊波系数的去噪阈值也适合于相应的比例,以避免灰度级增加和细节劣化。结果,该修改的实现提供了高速处理。此外,对噪声图像和质量差的X射线图像进行的实验表明,当正确估计噪声偏差时,建议的方法效果很好。

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