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Two-stage Local Polynomial Regression Method for Image Heteroscedastic Noise Removal

机译:两阶段局部多项式回归方法,用于图像异源型噪声去除

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In this paper, we introduce the extension of local polynomial fitting to the linear heteroscedastic regression model and its applications in digital image heteroscedastic noise removal. For better image noise removal with heteroscedastic energy, firstly, the local polynomial regression is applied to estimate heteroscedastic function, then the coefficients of regression model are obtained by using generalized least squares method. Due to non-parametric technique of local polynomial estimation, we do not need to know the heteroscedastic noise function. Therefore, we improve the estimation precision, when the heteroscedastic noise function is unknown. Numerical simulations results show that the proposed method can improve the image quality of heteroscedastic noise energy.
机译:本文介绍了局部多项式拟合到线性异源回归模型的延伸及其在数字图像异源噪声噪声中的应用。对于具有异源能量的更好的图像噪声去除,首先,将局部多项式回归应用于估计异源型功能,然后通过使用广义最小二乘法获得回归模型的系数。由于局部多项式估计的非参数化技术,我们不需要知道异源型噪声功能。因此,当异源型噪声功能未知时,我们提高估计精度。数值模拟结果表明,该方法可以提高异源噪声能量的图像质量。

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