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An augmented Lagrangian method for image reconstruction with multiple features

机译:具有多个特征的图像增强拉格朗日方法

摘要

We present an Augmented Lagrangian Method (ALM) for solving image reconstruction problems with a cost function consisting of multiple regularization functions with a data fidelity constraint. The presented technique is used to solve inverse problems related to image reconstruction, including compressed sensing formulations. Our contributions include an improvement for reducing the number of computations required by an existing ALM method, an approach for obtaining the proximal mapping associated with p-norm based regularizers, and lastly a particular ALM for the constrained image reconstruction problem with a hybrid cost function including a weighted sum of the p-norm and the total variation of the image. We present examples from Synthetic Aperture Radar imaging and Computed Tomography.
机译:我们提出了一种增强的拉格朗日方法(ALM),用于解决图像重建问题,其代价函数包括具有数据保真度约束的多个正则化函数。所提出的技术用于解决与图像重建有关的逆问题,包括压缩传感公式。我们的贡献包括:为减少现有ALM方法所需的计算量而进行的改进;一种用于获取与基于p范数的正则化器相关联的近端映射的方法;最后是一种针对具有混合成本函数的约束图像重构问题的特定ALM,包括p范数与图像总变化的加权和。我们提供了合成孔径雷达成像和计算机断层扫描的示例。

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