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Image De-noising by Bayesian Regression

机译:贝叶斯回归图像去噪

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摘要

We present a kernel based approach for image de-noising in the spatial domain. The crux of evaluation for the kernel weights is addressed by a Bayesian regression. This approach introduces an adaptive filter, well preserving edges and thin structures in the image. The hyper-parameters in the model as well as the predictive distribution functions are estimated through an efficient iterative scheme. We evaluate our method on common test images, contaminated by white Gaussian noise. Qualitative results show the capability of our method to smooth out the noise while preserving the edges and fine texture. Quantitative comparison with the celebrated total variation (TV) and several wavelet methods ranks our approach among state-of-the-art denoising algorithms. Further advantages of our method include the capability of direct and simple integration of the noise PDF into the de-noising framework. The suggested method is fully automatic and can equally be applied to other regression problems.
机译:我们提出了一种基于核的空间域图像降噪方法。贝叶斯回归解决了核心权重评估的关键。这种方法引入了自适应滤波器,可以很好地保留图像中的边缘和薄结构。通过有效的迭代方案来估计模型中的超参数以及预测分布函数。我们在常见的受白高斯噪声污染的测试图像上评估我们的方法。定性结果表明,我们的方法具有在保留边缘和精细纹理的同时消除噪声的能力。与著名的总变异(TV)和几种小波方法的定量比较使我们的方法跻身于最新的降噪算法之列。我们方法的其他优点包括将噪声PDF直接简单集成到降噪框架中的能力。所建议的方法是全自动的,并且可以等同地应用于其他回归问题。

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