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首页> 外文期刊>Journal of electronic imaging >Spatially adaptive total generalized variation-regularized image deblurring with impulse noise
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Spatially adaptive total generalized variation-regularized image deblurring with impulse noise

机译:具有脉冲噪声的空间自适应总广义变化量正则化图像去模糊

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摘要

Image deblurring with impulse noise is a typical ill-conditioned problem that requires regularization techniques to guarantee stable and high-quality imaging. According to the statistical properties of impulse noise, an L1-norm data fidelity term and a total variation (TV) regularizer have been combined to contribute a popular regularization model. However, traditional TV-regularized variational models usually suffer from staircase-like artifacts in homogenous regions resulting in visual quality degradation. To eliminate undesirable artifacts, we propose a high-order variational model by replacing the TV with a detail-preserving total generalized variation (TGV) regularizer. To further enhance imaging performance, the spatially adaptive regularization parameters are automatically selected, based on local image features to promote the high-order TGV-regularized variational model. The resulting nonsmooth optimization problem is effectively handled using the alternating direction method of multipliers-based numerical method. The proposed variational model has the capacity to remove blurring and impulse noise effects while maintaining fine image details. Comprehensive experiments were conducted on both gray and color images to compare our proposed method with several state-of-the-art image restoration methods. Experimental results have demonstrated its superior performance in terms of quantitative and qualitative image quality evaluations. (C) 2018 SPIE and IS&T
机译:带有脉冲噪声的图像去模糊是一个典型的病态问题,需要使用正则化技术来保证稳定和高质量的成像。根据脉冲噪声的统计特性,L1范数数据保真度项和总变化量(TV)正则化器已组合在一起,为流行的正则化模型做出了贡献。但是,传统的电视规范化变种模型通常在同质区域中遭受阶梯状伪像的影响,从而导致视觉质量下降。为了消除不希望出现的伪影,我们提出了一种高阶变分模型,方法是将电视替换为保留细节的总广义变分(TGV)正则化器。为了进一步增强成像性能,将基于局部图像特征自动选择空间自适应正则化参数,以促进高阶TGV正规化的变分模型。使用基于乘数的数值方法的交替方向方法可以有效地解决由此产生的非平滑优化问题。所提出的变分模型具有消除模糊和脉冲噪声影响的能力,同时保持了精细的图像细节。在灰度和彩色图像上进行了全面的实验,以将我们提出的方法与几种最新的图像恢复方法进行比较。实验结果证明了其在定量和定性图像质量评估方面的优越性能。 (C)2018 SPIE和IS&T

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