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A cross-validatory statistical approach to scale selection for image denoising by nonlinear diffusion

机译:用于非线性扩散图像去噪的尺度选择的交叉验证统计方法

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Scale-spaces induced by diffusion processes play an important role in many computer vision tasks. Automatically selecting the most appropriate scale for a particular problem is a central issue for the practical applicability of such scale-space techniques. This paper concentrates on automatic scale selection when nonlinear diffusion scale-spaces are utilized for image denoising. The problem is studied in a statistical model selection framework and cross-validation techniques are utilized to address it in a principled way. The proposed novel algorithms do not require knowledge of the noise variance and have acceptable computational cost. Extensive experiments on natural images show that the proposed methodology leads to robust algorithms, which outperform existing techniques for a wide range of noise types and noise levels.
机译:由扩散过程引起的尺度空间在许多计算机视觉任务中起着重要作用。对于这样的尺度空间技术的实际适用性,针对特定问题自动选择最合适的尺度是一个中心问题。当非线性扩散比例空间用于图像去噪时,本文着重于自动比例选择。在统计模型选择框架中研究该问题,并使用交叉验证技术以有原则的方式解决该问题。所提出的新颖算法不需要了解噪声方差并且具有可接受的计算成本。在自然图像上进行的大量实验表明,所提出的方法可产生健壮的算法,该算法在各种噪声类型和噪声水平方面均优于现有技术。

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