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Manifold Based Low-Rank Regularization for Image Restoration and Semi-Supervised Learning

机译:基于流形的低秩正则化用于图像恢复和半监督学习

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摘要

Low-rank structures play important roles in recent advances of many problems in image science and data science. As a natural extension of low-rank structures for data with nonlinear structures, the concept of the low-dimensional manifold structure has been considered in many data processing problems. Inspired by this concept, we consider a manifold based low-rank regularization as a linear approximation of manifold dimension. This regularization is less restricted than the global low-rank regularization, and thus enjoy more flexibility to handle data with nonlinear structures. As applications, we demonstrate the proposed regularization to classical inverse problems in image sciences and data sciences including image inpainting, image super-resolution, X-ray computer tomography image reconstruction and semi-supervised learning. We conduct intensive numerical experiments in several image restoration problems and a semi-supervised learning problem of classifying handwritten digits using the MINST data. Our numerical tests demonstrate the effectiveness of the proposed methods and illustrate that the new regularization methods produce outstanding results by comparing with many existing methods.
机译:低阶结构在图像科学和数据科学中许多问题的最新进展中起着重要作用。作为具有非线性结构的数据的低秩结构的自然扩展,在许多数据处理问题中已经考虑了低维流形结构的概念。受此概念的启发,我们将基于流形的低秩正则化视为流形尺寸的线性近似。与全局低秩正则化相比,此正则化的限制较少,因此具有更大的灵活性来处理具有非线性结构的数据。作为应用,我们演示了对图像科学和数据科学中的经典逆问题提出的正则化建议,包括图像修复,图像超分辨率,X射线计算机断层扫描图像重建和半监督学习。我们对一些图像恢复问题和使用MINST数据对手写数字进行分类的半监督学习问题进行了深入的数值实验。我们的数值测试证明了所提方法的有效性,并说明与许多现有方法相比,新的正则化方法产生了出色的结果。

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