基于DCT变换和卡方分布近似的图像噪声水平精确估计

Lei Yang, Y. Wan
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引用次数: 1

摘要

准确的噪声级估计是许多图像去噪和计算机视觉任务中非常重要的一步。到目前为止,大多数方法的核心思想都是将无噪声图像部分与有噪声图像分离,然后利用噪声部分估计噪声水平。但是噪声部分通常仍然包含一些图像内容,这往往会导致估计结果偏倚,特别是在低噪声情况下。本文提出了一种新的噪声级估计方法。该方法首先使用DCT基对无噪声图像部分进行近似,然后使用?2分布对局部噪声方差进行近似。与噪声残差近似不能产生准确估计的传统观点相反,我们表明,由于DCT基础对自然图像内容的良好近似能力和统计推断中使用的?2分布近似,它可以获得比大多数先进的最先进方法更准确的图像噪声估计结果,特别是在低噪声水平下,这更有意义。实验结果证实了该方法的优越性。
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Accurate Image Noise Level Estimation through DCT Transformation and Approximation by Chi-Square Distribution
Accurate noise level estimation is a very important step for many image denoising and computer vision tasks. So far the key idea of most methods is to separate the noise-free image part from noisy images and then use the noise part to estimate noise level. But the noise part usually still contains some image content, which often causes biased estimation results, especially in the low noise situation. In this paper, we propose a novel noise level estimation method. This method first uses the DCT basis to approximate the noise-free image part, then uses the ?2 distribution to approximate the local noise variance. Contrary to the conventional idea that the noise residual approximation can not produce accurate estimates, we show that because of the good approximation capability of the DCT basis for natural image content and the ?2 distribution approximation used in the statistical inference, it is possible to achieve more accurate image noise estimation results than most sophisticated state-of-the-art methods especially at low noise level which is more meaningful. Experiments results confirm the advantages of the proposed approach.
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