In this paper, we study multi-dimensional image recovery. Recently, transform-based tensor nuclear norm minimization methods are considered to capture low-rank tensor structures to recover third-order tensors in multi-dimensional image processing applications. The main characteristic of such methods is to perform the linear transform along the third mode of third-order tensors, and then compute tensor nuclear norm minimization on the transformed tensor so that the underlying low-rank tensors can be recovered. The main aim of this paper is to propose a nonlinear multilayer neural network to learn a nonlinear transform via the observed tensor data under self-supervision. The proposed network makes use of low-rank representation of transformed tensors and data-fitting between the observed tensor and the reconstructed tensor to construct the nonlinear transformation. Extensive experimental results on tensor completion, background subtraction, robust tensor completion, and snapshot compressive imaging are presented to demonstrate that the performance of the proposed method is better than that of state-of-the-art methods.
翻译:在本文中,我们研究多维图像恢复。 最近,我们考虑采用基于变压的高压核规范最小化方法来捕捉在多维图像处理应用程序中回收第三阶高压的低压结构,这些方法的主要特征是沿第三阶高压第三模式进行线性变异,然后在变压高压上进行高压核规范最小化计算,这样可以收回底部低压高压。本文的主要目的是提出一个非线性多层神经网络,通过自上视所观测到的高压数据学习非线性变异。 拟议的网络使用低位变压高压和在所观测到的高压和重新改造的高压之间进行数据配置,以构建非线性变异。 介绍了关于数完成、背景减法、强的抗拉完成和快速压缩成像的广泛实验结果,以证明拟议方法的性能优于最先进的方法。