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Blind noisy deblurring via hyper laplacian prior and spectral properties of convolution kernel

机译:通过卷积核的超拉普拉斯先验和频谱特性进行盲噪声去模糊

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Blind deblurring attempts to recover the latent sharp image from a blurred one. Such task is a well-known ill-posed inverse problem and is therefore usually solved as a posteriori probability estimation, incorporating prior information on natural images. In this paper, we propose a general blind noisy deblurring model based on hyper Laplacian (HL) in gradient domain and kernel spectra prior. This model includes the non-convex HL prior term, so we first separate variables and then utilize general soft threshold (GST) and closed-form threshold formulas (CFTF) to solve the proposed model, respectively. Simulation results verify the efficiency and feasibility of the proposed method. The proposed model can be used to solve other problems, such as machine learning and sparse coding.
机译:盲去模糊试图从模糊的图像中恢复潜在的清晰图像。这种任务是众所周知的不适定逆问题,因此通常作为后验概率估计解决,并结合了自然图像上的先验信息。在本文中,我们提出了一种基于超拉普拉斯算子(HL)的梯度域和核谱先验的通用盲噪声去模糊模型。该模型包括非凸HL先验项,因此我们首先分离变量,然后分别利用通用软阈值(GST)和闭式阈值公式(CFTF)来求解所提出的模型。仿真结果验证了该方法的有效性和可行性。提出的模型可用于解决其他问题,例如机器学习和稀疏编码。

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