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首页> 外文期刊>Journal of visual communication & image representation >Non-convex hybrid total variation for image denoising
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Non-convex hybrid total variation for image denoising

机译:用于图像去噪的非凸混合总变异

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摘要

Image restoration problems, such as image denoising, are important steps in various image processing method, such as image segmentation and object recognition. Due to the edge preserving property of the convex total variation (TV), variational model with TV is commonly used in image restoration. However, staircase artifacts are frequently observed in restored smoothed region. To remove the staircase artifacts in smoothed region, convex higher-order TV (HOTV) regularization methods are introduced. But the valuable edge information of the image is also attenuated. In this paper, we propose non-convex hybrid TV regularization method to significantly reduce staircase artifacts while well preserving the valuable edge information of the image. To efficiently find a solution of the variation model with the proposed regularizer, we use the iterative reweighted method with the augmented Lagrangian based algorithm. The proposed model shows the best performance in terms of the signal-to-noise ratio (SNR) and the structure similarity index measure (SSIM) with comparable computational complexity.
机译:诸如图像去噪之类的图像恢复问题是诸如图像分割和对象识别之类的各种图像处理方法中的重要步骤。由于凸总变化量(TV)的边缘保留特性,带有TV的变化模型通常用于图像恢复。然而,经常在恢复的平滑区域中观察到楼梯伪像。为了消除平滑区域中的阶梯伪像,引入了凸高阶电视(HOTV)正则化方法。但是图像的有价值的边缘信息也被衰减。在本文中,我们提出了非凸混合电视正则化方法,以在显着减少阶梯伪像的同时,很好地保留图像的宝贵边缘信息。为了使用提出的正则化器有效地找到变异模型的解,我们使用了基于增强拉格朗日算法的迭代重加权方法。所提出的模型在信噪比(SNR)和结构相似性指标度量(SSIM)方面显示了最佳性能,并且具有相当的计算复杂性。

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