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Edge-Preserving Image Regularization Based on Morphological Wavelets and Dyadic Trees

机译:基于形态学小波和二叉树的保边缘图像正则化

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Despite the tremendous success of wavelet-based image regularization, we still lack a comprehensive understanding of the exact factor that controls edge preservation and a principled method to determine the wavelet decomposition structure for dimensions greater than 1. We address these issues from a machine learning perspective by using tree classifiers to underpin a new image regularizer that measures the complexity of an image based on the complexity of the dyadic-tree representations of its sublevel sets. By penalizing unbalanced dyadic trees less, the regularizer preserves sharp edges. The main contribution of this paper is the connection of concepts from structured dyadic-tree complexity measures, wavelet shrinkage, morphological wavelets, and smoothness regularization in Besov space into a single coherent image regularization framework. Using the new regularizer, we also provide a theoretical basis for the data-driven selection of an optimal dyadic wavelet decomposition structure. As a specific application example, we give a practical regularized image denoising algorithm that uses this regularizer and the optimal dyadic wavelet decomposition structure.
机译:尽管基于小波的图像正则化取得了巨大的成功,但我们仍然缺乏对控制边缘保留的确切因素的全面理解,也没有一种确定尺寸大于1的小波分解结构的有原则的方法。我们从机器学习的角度解决这些问题通过使用树分类器来支持一个新的图像正则化器,该图像正则化器基于子级集的二叉树表示的复杂性来测量图像的复杂性。通过较少地惩罚不平衡的二叉树,正则化器保留了锐利的边缘。本文的主要贡献是将Besov空间中结构化二叉树复杂性度量,小波收缩,形态小波和平滑正则化的概念连接到单个相干图像正则化框架中。使用新的正则化器,我们还为最佳二进小波分解结构的数据驱动选择提供了理论基础。作为一个特定的应用示例,我们给出了一种实用的正则化图像去噪算法,该算法使用该正则化器和最佳二进小波分解结构。

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