Efficient Noise Level Estimation Using Orientational Gradient Statistics

Maryam Karimi, Mahsa Mozafari, K. Bashiri
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引用次数: 1

Abstract

noise level is an important parameter to improve the performance of many image processing applications. Natural scenes follow special statistics independent of the image contents. These statistical characteristics change under the effects of distortions. Therefore, they can help image processing algorithms to estimate the noise level of input images. We devised a noise level estimation method based on the statistics of orientational differences between image pixel values and those of their neighbors. The proposed approach outperforms the state-of-the-art especially for higher noise levels. This variance estimation approach is effective for both Gaussian and non-Gaussian additive noises. In addition to the high accuracy, because of not using any normalization or image transformation, the proposed method is quite fast and completely useful for real-time applications.
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基于方向梯度统计的高效噪声级估计
噪声水平是提高许多图像处理应用性能的一个重要参数。自然场景遵循独立于图像内容的特殊统计。这些统计特征在扭曲的影响下发生变化。因此,它们可以帮助图像处理算法估计输入图像的噪声水平。我们设计了一种基于图像像素值与相邻像素值方向差异统计的噪声级估计方法。建议的方法优于最先进的技术,特别是在较高的噪音水平。这种方差估计方法对高斯和非高斯加性噪声都有效。该方法不仅精度高,而且由于不使用任何归一化和图像变换,因此速度非常快,完全适用于实时应用。
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