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Image Denoising Using Trivariate Shrinkage Filter in the Wavelet Domain and Joint Bilateral Filter in the Spatial Domain

机译:在小波域中使用三元收缩滤波器和在空间域中使用联合双边滤波器进行图像去噪

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摘要

This correspondence proposes an efficient algorithm for removing Gaussian noise from corrupted image by incorporating a wavelet-based trivariate shrinkage filter with a spatial-based joint bilateral filter. In the wavelet domain, the wavelet coefficients are modeled as trivariate Gaussian distribution, taking into account the statistical dependencies among intrascale wavelet coefficients, and then a trivariate shrinkage filter is derived by using the maximum a posteriori (MAP) estimator. Although wavelet-based methods are efficient in image denoising, they are prone to producing salient artifacts such as low-frequency noise and edge ringing which relate to the structure of the underlying wavelet. On the other hand, most spatial-based algorithms output much higher quality denoising image with less artifacts. However, they are usually too computationally demanding. In order to reduce the computational cost, we develop an efficient joint bilateral filter by using the wavelet denoising result rather than directly processing the noisy image in the spatial domain. This filter could suppress the noise while preserve image details with small computational cost. Extension to color image denoising is also presented. We compare our denoising algorithm with other denoising techniques in terms of PSNR and visual quality. The experimental results indicate that our algorithm is competitive with other denoising techniques.
机译:该对应关系提出了一种有效的算法,该算法可通过将基于小波的三元收缩滤波器与基于空间的联合双边滤波器相结合来从损坏的图像中去除高斯噪声。在小波域中,考虑到尺度内小波系数之间的统计依赖性,将小波系数建模为三变量高斯分布,然后使用最大后验(MAP)估计量来推导三变量收缩滤波器。尽管基于小波的方法在图像去噪方面很有效,但它们易于产生与底层小波的结构有关的显着伪像,例如低频噪声和边缘振铃。另一方面,大多数基于空间的算法输出的伪影更少,质量更高。但是,它们通常对计算要求很高。为了降低计算成本,我们通过使用小波去噪结果而不是直接在空间域中处理噪声图像来开发有效的联合双边滤波器。该滤波器可以抑制噪声,同时以较小的计算量保留图像细节。还介绍了彩色图像去噪的扩展。我们将PSNR和视觉质量方面的去噪算法与其他去噪技术进行了比较。实验结果表明,我们的算法与其他降噪技术相比具有竞争力。

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