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Image Denoising in Mixed Poisson–Gaussian Noise

机译:泊松-高斯混合噪声中的图像去噪

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摘要

We propose a general methodology (PURE-LET) to design and optimize a wide class of transform-domain thresholding algorithms for denoising images corrupted by mixed Poisson–Gaussian noise. We express the denoising process as a linear expansion of thresholds (LET) that we optimize by relying on a purely data-adaptive unbiased estimate of the mean-squared error (MSE), derived in a non-Bayesian framework (PURE: Poisson–Gaussian unbiased risk estimate). We provide a practical approximation of this theoretical MSE estimate for the tractable optimization of arbitrary transform-domain thresholding. We then propose a pointwise estimator for undecimated filterbank transforms, which consists of subband-adaptive thresholding functions with signal-dependent thresholds that are globally optimized in the image domain. We finally demonstrate the potential of the proposed approach through extensive comparisons with state-of-the-art techniques that are specifically tailored to the estimation of Poisson intensities. We also present denoising results obtained on real images of low-count fluorescence microscopy.
机译:我们提出了一种通用方法(PURE-LET)来设计和优化一类广泛的变换域阈值算法,以对受混合泊松-高斯噪声破坏的图像进行降噪。我们将去噪过程表示为阈值的线性扩展(LET),我们通过依靠非贝叶斯框架(PURE:泊松–高斯模型)得出的纯数据自适应均方误差(MSE)的纯数据无偏估计来进行优化。无偏风险估计)。我们为任意变换域阈值的易处理性优化提供了该理论MSE估计的实用近似值。然后,我们为未抽取的滤波器组变换提出一个逐点估计器,该估计器由子带自适应阈值函数组成,该函数具有在图像域中全局优化的信号相关阈值。最后,通过与专门针对泊松强度估计量身定制的最新技术的广泛比较,我们证明了该方法的潜力。我们还介绍了在低计数荧光显微镜的真实图像上获得的去噪结果。

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